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Article

Development of Green Supermarket Evaluation Model Based on Green Process and Green Output—Case of Bangkok City

by
Ittipat Vipusanapat
1,
Chavalit Ratanatamskul
1,2,3,* and
Achara Chandrachai
4
1
Technopreneurship and Innovation Management Program, Graduate School, Chulalongkorn University, Bangkok 10330, Thailand
2
Department of Environmental Engineering, Chulalongkorn University, Bangkok 10330, Thailand
3
Research Unit on Innovative Waste Treatment and Water Reuse, Faculty of Engineering, Chulalongkorn University, Bangkok 10330, Thailand
4
Chulalongkorn Business School, Chulalongkorn University, Bangkok 10330, Thailand
*
Author to whom correspondence should be addressed.
Sustainability 2022, 14(17), 10745; https://0-doi-org.brum.beds.ac.uk/10.3390/su141710745
Submission received: 30 May 2022 / Revised: 13 August 2022 / Accepted: 17 August 2022 / Published: 29 August 2022
(This article belongs to the Special Issue Sustainable Cities and Infrastructures)

Abstract

:
The study aimed to develop a green supermarket evaluation model based on a green process and green output to provide empirical evidence on the model’s relationship with the green process, green output, and green supermarket. To this end, the study combined data from a survey of one store manager, one facility manager, and three assistant store managers from each of the 190 supermarket branches in Bangkok, Thailand with data from an in-depth interview of a sample group of green supermarket management specialists. The green supermarket evaluation model is divided into three levels, two elements (green process and green output), nine major indicators for green supermarket evaluation, and one hundred one sub-indicators for green supermarket evaluation, according to the findings. The five major indicators of the green process are green procurement, green storage, green service, green transportation and green environmental and energy management system, while the four major indicators of green output are social performance, environmental performance, economic performance, and organization image performance. In addition, the sub-indicator details were also identified for this evaluation model.

1. Introduction

Nowadays, many organizations are moving towards green business practice as a key strategy that has the potential to deliver better performance compared to the conventional business models in this age of sustainability [1]. The new business direction aims to establish an eco-friendly stance, demonstrate cost-effective resource use and environmental protection, and generate a positive image for enterprises in the community and in the eyes of the public [2]. It can be stated that green business plays a significant role since it is a sustainable development approach in the economy that aims to create a balance between humans and the environment. At present, many organizations, in both public and private sectors, are placing a greater focus on addressing problems to restore the environment to a higher level. Likewise, organizations in the supermarket business sector will need to adjust their business operations as the increased importance of the environment to consumers has created a trend of environmental conservation [3]. Although the green operations of supermarkets today are focused primarily on environmental action, problems still remain in terms of air pollution, wasted energy, and food waste [4,5]. As a result of these impacts, supermarket retailers have been required to adjust to the setting of the circular economy and green supply chain management, which includes implementing environmentally friendly measures into the supply chain, supply selection, supply chain management, and the final delivery to the customer process [6].
The Thai economy, similar to that of other developing countries, has transformed from an agriculture-based to an industry-based model over the last century. This condition contributes to the food supply chain and consumer behavior as a result of the urbanization process [7]. Aside from these direct economic contributions, the retail sector is important in defining consumer behavior and supporting productivity, growth, and development throughout the country [8]. Commodity consumption has risen as the economy has continued to grow, especially in the modern retail industry, which has grown steadily from the 1990s to the 2010s. This is evident in the fact that the proportion of modern retail and wholesale enterprises has increased from 25% of the wholesale retail market in 2001 to 61% in 2014 [9].
Although supermarkets drive the economy on a national and global scale, their business operations have an impact on environmental issues such as energy usage and air pollution. The electrical energy consumption is also a problem since each supermarket has a very high level of power consumption. The supermarket industry accounts for approximately 3–4% of all the electrical energy consumed by businesses nationwide [10]. The food waste (FW) problem that exists with large supermarkets is due to errors in the storage of fresh food, such as failure to control the shelf-life of food products, inefficient storage spoilage, excessive supply as compared to product demand, and food waste from the food court [11]. Supermarkets are known to waste approximately 10% of their food along the supply chain [12]. Consumption of environmental-friendly products is becoming popular while corporate social responsibility is also increasingly important in the business world [13]. Companies have been put under pressure as a result of these phenomena, which force them to incorporate more ecologically friendly practices and become more involved in their communities. Some businesses may do so in order to comply with legal requirements in order to protect their reputation, as well as to improve resource management and supply chain management efficiency [14]. However, the relationship between environmental sustainability and economic efficiency is generally doubtful. This implies that there is still a limited incentive for businesses to “go green” [15]. This is especially true in the modern retail industry, which consumes massive amounts of resources and has a wide range of environmental impacts throughout the company supply chain. The importation and management of these resources could produce a lot of supply chain waste, especially food waste. As a result, there is a growing interest in determining the extent of the need for supermarkets to reduce their waste production and energy consumption [4]. At present, one urgent issue is the question of how to develop the overall green supermarket indicator to evaluate performance in various dimensions. Therefore, the following research question is addressed in this study: “What is the appropriate green indicator for supermarkets to evaluate their supply chain management (SCM) performance in various dimensions?”.
Depending on the socioeconomic context, the development of green supermarket indicators based on the green business idea may differ. These indicators, on the other hand, are commonly based on three essential concepts: reduce, recycle, and replenish [16]. The recommended green supermarket metric in Thailand is the Green Building Standard, which consists of eight parameters that encompass the building’s energy usage and environmental sustainability scores in terms of operation and maintenance [17]. Another popular green supermarket metric is the “UK Supermarkets Scorecard,” which uses software to assess the social and environmental responsibility of UK supermarkets.
In addition, green indicators have been developed from various perspectives; for example, the major engagements in sustainable procurement are the green and social equity procurement indicators (energy conservation, recyclability, water pollution, air quality, greenhouse gas emissions, reduced packaging, volatile organic compounds, and biodiversity) [18]. Meanwhile, the green business model indicator consists of awareness, organization culture, innovation, technology, and learning, which are the drivers of stakeholder engagement that are considered one of the key elements helping to facilitate an increased uptake of green business [1]. It should be noted that these above-mentioned green indicators still do not cover all aspects of SCM evaluation. The SCM indicators, in particular, are critical to the performance measurement of green supermarket management. As is well known, SCM practices have the potential to improve not only environmental protection, but also the company’s efficiency. This will assist in offsetting operating costs, improving operational efficiency, and increasing competitive advantages [19].
However, there is currently no direct way to evaluate green supermarkets under the SCM perspective, which cannot cover all four aspects of sustainability evaluation, namely social, environmental, economic, and organization image. Therefore, a green supermarket evaluation system with appropriate indicators and evaluation criteria must be considered in order to motivate supermarkets to become green supermarkets. At present, there are no clear guidelines or directions for evaluating green supermarkets. For this reason, the purpose of this research is to study the factors affecting green supermarkets as well as to develop a green supermarket evaluation model with appropriate major indicators and sub-indicators. Due to the combination of multi-level indicators, at both major and sub levels, the metric model can cover all aspects of green supermarket evaluation. Hence, closing the research gaps in the evaluation can be obtained when it is applied as a metric model in business organizations. This work provides practical value by highlighting the development of a green supermarket evaluation model that encompasses multi-level indicators throughout the supply chain in green supermarket management. Additionally, this work also reveals the need to review strategies or practices for driving a green supermarket evaluation model for real-world applications.

2. Materials and Methods

2.1. Theoretical Framework

This evaluation model aims to determine and provide an appropriate value based on set criteria. For the green supermarket evaluation, this refers to a process that includes collecting and analyzing information to generate data to be used as a reference for decision-making in the development of green operations, compared with the criteria that have been established to judge the green value for evaluation at various levels. The evaluation is a role that comes from the nature of the information needed to make decisions in assessing the value of the factor to be measured. It can be characterized as a formative role and a summative role. The acquisition of the aforementioned information will require an evaluation in which the presentation of information during the operation must also assess the progress of the operation with a formative evaluation. The formative evaluation is important for judging the progress value of operations that are information-based for decision-making or the approach to operational adaptation because the information presented after the end of the operation uses a summative evaluation [20]. From the valuation theory, the ultimate aim of the evaluation is the acquisition of information to measure the value of the appraisal. The value is a feature that depends on various factors that can change according to the situation; hence it is difficult to define the absolute value [21].
The value of the factor to be measured can be observed from the indicators through empirical data that is compared with the metric. This can determine the value of the factor to be measured. Values can be classified into two categories: intrinsic and extrinsic. Intrinsic value is the internal hidden value in the factor to be measured. For the extrinsic value, it is the external value of the factor to be measured, which depends on various factors within the established scope that can be clearly evaluated [22]. In addition, the intrinsic and extrinsic values are interrelated only when various factors are taken into account and cannot be independent of each other. The extrinsic values are a subset of intrinsic values and the decisions about extrinsic values contribute to the intrinsic value.

2.2. Research Design

This study relied on primary data and used a mixed methodology approach (qualitative and quantitative research) as shown in Figure 1. In the first stage, questionnaires were used to conduct quantitative research for the development of major indicators for green supermarket evaluation. In the second phase, an in-depth interview approach was used to conduct qualitative research for the development of sub-indicators for green supermarket evaluation. In the third phase, a focus group interview was used to conduct qualitative research for the development of sub-indicator details. The researcher’s personal mathematics skills were used to complete the final stage of the mathematical model analysis for the development of the green supermarket evaluation model. The approach to the quantitative research is based on structural equation modeling (SEM) and multiple regression analysis (MRA). The major indicators for green supermarket evaluation are the factors influencing a green supermarket that were obtained from the preceding literature analysis and can be defined as a conceptual framework, as illustrated in Figure 2.
The major indicators for green supermarket evaluation include five sub-factors of the green process (GPRO): green procurement (GPUR), green storage (GSTO), green service (GSER), green transportation (GTRA) and green environmental and energy management system (GEES), as well as four sub-factors of green output (GOUT): social performance (SOCP), environmental performance (ENVP), economic performance (ECOP), and organization image performance (OIMP). The research hypothesis can be defined using the research conceptual framework as follows:
Hypothesis 1 (H1).
Green process (GPRO) is a factor affecting the green output (GOUT).
Hypothesis 2 (H2).
Green output (GOUT) is a factor affecting green supermarkets (GSPM).
Green procurement (GPUR) is the procurement of a product or service that has less of an environmental footprint than normal procurement, whereby the entire life cycle of the product and service would be taken into consideration, starting from the procurement of raw materials to the waste disposal at the end of the usable period, and including cooperation with the supplier in finding a suitable replacement for hazardous materials, or more eco-friendly substitutes [23]. Green storage (GSTO) is storage that focuses on minimizing impacts on society and the environment, without negatively affecting profit and corporate image. Green service is a customer service process that covers from storage to the end of the process, and which has no impact on the environment, profit, or corporate image, while impressing the customers with high-quality standards [24]. Green transportation (GTRA) is a transportation process that uses technology, packaging, and methodology that does not have a negative impact on the environment, including during the delivery of products and services to the customer, and reverse logistics to suppliers [23]. Green environmental and energy management system (GEES) is a management process that includes environmental management system, which is a work process that enables supermarkets to reduce their environmental impacts from activities in order to increase operating efficiency [24], and energy management system, which is an information management system to support works related to energy management and cost, energy measurement, energy efficiency and energy consumption control [25].
Social performance (SOCP) is the impact on society arising out of the work process from the start all the ways through to delivery to the customer [23], such as, social value generation, the risk to the ecological system, emission of greenhouse gases, generation of waste, and generation of air pollution. Environmental performance (ENVP) is the impact on the environment due to the work process from the start all the way through to delivery to the customer, such as, all waste generation and resources consumption [23], including the consumption of energy, materials, area, and water [26]. Economic performance (ECOP) is efficiency that shows the ability of a producer to select the least number of inputs and achieve the lowest cost [27] from the systematic and efficient use of resources [28]. Organization image performance (OIMP) is the performance arising out of social and environmental campaigns, along with green supply chain management and allowing consumer engagement in environment conservation [29].
According to the research conceptual framework, the green supermarket is the supermarket’s intrinsic value, while the green output is the supermarket’s extrinsic value, and the green process is the extrinsic value of the green output. Green procurement, green storage, green service, green transportation and green environmental and energy management system (GEES) were among the variables included in the domain of the green process. The variables considered in the realm of green output were environmental performance, economic performance, and organization image performance.

2.3. Data Collection

The quantitative research was conducted through a structured questionnaire sent to one store manager, one facility manager, and three assistant store managers from each of the 190 supermarket branches in Bangkok and Metropolitan, Thailand. A total of 274 respondents completed the questionnaire. The aim of the questionnaire was to study the factors influencing green supermarkets and to develop the factors and major indicators to be used for green supermarket evaluation. The respondents were asked to react to each of the issues specified in the questionnaire by recording their responses on a five-point Likert scale.
The qualitative research for the development of the sub-indicators for the green supermarket evaluation was conducted by in-depth interviews with each key informant in order to develop the draft sub-indicators for the green supermarket evaluation from the major indicators. The major indicators of the green process are green procurement, green storage, green service, green transportation and green environmental and energy management system, while the four major indicators of green output are social performance, environmental performance, economic performance, and organization image performance. The key informants included a group of nine persons, consisting of three supermarket store managers, three top supermarket management personnel, and three specialists on environmental policy and green building support from Thai government agencies. In addition, a focus group interview with five specialists on green business standard settings from Thai government agencies was also conducted as part of qualitative research methodology for the development of sub-indicator details. Furthermore, all study instruments were evaluated for content validity and reliability by five experts: a social and environmental expert, an economic expert, an organization image expert, a statistics and research expert, and a qualified person with measurement and evaluation knowledge.

2.4. Data Analytics

The data for the quantitative research were all inspected and analyzed in the following order: (1) a reliability study was performed to determine the reliability of the research equipment and data; (2) descriptive statistical analysis of the responders’ data was performed; (3) descriptive statistical analysis of the model’s variables was performed to determine the arithmetic mean, standard deviation, skewness, and kurtosis; (4) correlation analysis was performed on all factors in the model to investigate the link between each pair of factors; (5) SEM was used to test hypothesis 1; and (6) MRA was used to test hypothesis 2. An in-depth interview with each key informant was conducted to study the draft sub-indicators in order to develop the sub-indicators for green supermarket evaluation from the major indicators for the qualitative data analysis. A focus group with five specialists on establishing green business standards from Thai government agencies conducted the qualitative data analysis for the development of the sub-indicator details. In addition, the mathematical model analysis for the development of the green supermarket evaluation model was performed through the researcher’s own arithmetic knowledge.

3. Results and Discussion

3.1. Development of Major Indicators for Green Supermarket

3.1.1. Analysis of H1

Reliability Analysis

As shown in Table 1, the observed exogenous variables (green process) and the observed endogenous variables (green output) were measured on a 5-point Likert scale. All multi-item scales included in the questionnaires have Cronbach’s Alpha values above 0.6, which is in the acceptable range of internal consistency between the items against each variable [30].

Descriptive Statistical Analysis

As shown in Table 2, most respondents were male (79.56%) and had working experience in management for 11–15 years (14.96%). As can be seen in Table 3, the value of various sub-factor is transformed from the mean of each individual observed variable value. The sub-factors of the green process with the highest to the lowest mean are green environmental and energy management system ( x ¯ = 4.484; SD = 0.574), green procurement ( x ¯ = 4.453; SD = 0.619), green service ( x ¯ = 4.419; SD = 0.609), green storage ( x ¯ = 4.400; SD = 0.628) and green transportation ( x ¯ = 4.394; SD = 0.632). The sub-factors of green output with the highest to the lowest mean are social performance ( x ¯ = 4.529; SD = 0.653), environmental performance ( x ¯ = 4.526; SD = 0.653), organization image performance ( x ¯ = 4.482; SD = 0.670) and economic performance ( x ¯ = 4.391; SD = 0.764), respectively. Additionally, all sub-factors had the normal distribution characteristics (−2 > SK < 2; −3 > KS < 3).

Correlation Analysis

Table 4 illustrates the results of the Pearson correlation coefficient analysis among five sub-factors of the green process: green procurement (GPUR), green storage (GSTO), green service (GSER), green transportation (GTRA), and green environmental and energy management system (GEES). It was found that the correlation between the sub-factors with a statistically significant difference from zero (p < 0.01) shows correlation coefficient values among the sub-factors in the range of 0.816 to 0.860.
Table 4 shows the results of the Pearson correlation coefficient analysis among four sub-factors of green output: social performance (SOCP), environmental performance (ENVP), economic performance (ECOP), and organization image performance (OIMP). The correlation between the sub-factors with a statistically significant difference from zero (p < 0.01) shows the correlation coefficient value among the sub-factors are in the range of 0.557 to 0.772.

Analysis of Major Indicators for Green Supermarket Evaluation

From the conceptual framework, the sub-factors of green process and green output are the green evaluation criteria for green supermarket evaluation. The SEM is used to prove that such sub-factors of the green process and green output can be used as green evaluation criteria (the SEM is used to prove whether these factors can be good representatives to measure the green supermarket or not).
As can be seen in Figure 3 and Table 5, the relative Chi-square (CMIN/df) equals 1.666 (CMIN/df < 3) at 16 degrees of freedom (df), and the root mean square error of approximation (RMSEA) equals 0.049 (RMSEA < 0.05), which corresponds to the comparative fit index of 0.995 (CFI > 0.9), and the goodness of fit index of 0.974 (GFI > 0.95). Therefore, the results have indicated that the model has high consistency with empirical data. Considering the component weight and influence, all variables (major indicators) were statistically significant at the 0.001 level (p < 0.001), and therefore hypothesis H1 is accepted.

3.1.2. Analysis of H2

As shown in Table 6, the MRA was performed to test hypothesis H2 (green output affects green supermarket), and it can be defined for sub-hypothesis 1 as follows:
H0: β1 = β2 = β3 = β4 = 0: X1, X2, X3 and X4 have no influence on Y1
Hsub1: β1 or/and β2 or/and β3 or/and β4 ≠ 0: X1 or/and X2 or/and X3 or/and X4 have influence on Y1
When
  • X1 is social performance.
  • X2 is environmental performance.
  • X3 is economic performance.
  • X4 is organization image performance.
  • Y1 is green supermarket.
Table 6 shows the statistical significance with a p-value < 0.01, therefore the H0 is rejected and the Hsub1 is accepted. This means that X1 or/and X2 or/and X3 or/and X4 have influence on Y1 (or at least one independent variable has influence on green supermarkets). Therefore, four sub-hypotheses can be defined as follows:
Sub hypothesis 2
H0: β1 = 0: X1 has no influence on Y1
Hsub2: β1 ≠ 0: X1 has influence on Y1
Sub hypothesis 3
H0: β2 = 0: X2 has no influence on Y1
Hsub3: β2 ≠ 0: X2 has influence on Y1
Sub hypothesis 4
H0: β3 = 0: X3 has no influence on Y1
Hsub4: β3 ≠ 0: X3 has influence on Y1
Sub hypothesis 5
H0: β4 = 0: X4 has no influence on Y1
Hsub5: β4 ≠ 0: X4 has influence on Y1
From Table 7, the coefficient analysis shows the statistical significance with the p-value < 0.01. Therefore, H0 is rejected, and Hsub2, Hsub3, Hsub4, and Hsub5, are accepted. This means that X1, X2, X3, and X4 have an influence of 94.1% (R2) on Y1. Hence, all the independent variables that influence green supermarkets are social performance, environmental performance, economic performance, and organization image performance. The remaining 5.9% were due to other factors that were not studied in this research. Therefore, the green output is the extrinsic value of a green supermarket that can be measured by the intrinsic value of a green supermarket. In addition, the five sub-factors of the green process are green procurement (GPUR), green storage (GSTO), green service (GSER), green transportation (GTRA) and green environmental and energy management system (GEES), while the four sub-factors of green output are social performance (SOCP), environmental performance (ENVP), economic performance (ECOP), and organization image performance (OIMP), which are considered major indicators for green supermarket evaluation.

3.2. Development of the Draft Sub-Indicators for Green Supermarket Evaluation

3.2.1. Draft Sub-Indicators of Green Procurement

The findings from the in-depth interviews about the sub-indicators of green procurement that are important for green supermarket evaluation, as well as the frequency and percentage of the selected draft sub-indicators are shown in Table 8 (the frequency is between 3 and 8 or from 33.33% to 88.89%). Then the draft sub-indicators of green procurement with a score greater than 2 points (or ≥22.22%) were selected for consideration as draft sub-indicators for green supermarket evaluation.

3.2.2. Draft Sub-Indicators of Green Storage

The findings from the in-depth interviews about the draft sub-indicators of green storage that are important for green supermarket evaluation, as well as the frequency and percentage of the selected draft sub-indicators are shown in Table 8 (the frequency is between 2 and 6 or from 22.22% to 66.67%). Then the draft sub-indicators of green storage with a score equal to or greater than 2 points (or ≥22.22%) were selected for consideration as draft sub-indicators for green supermarket evaluation.

3.2.3. Draft Sub-Indicators of Green Service

The findings from the in-depth interviews about the draft sub-indicators of green service that are important for green supermarket evaluation, as well as the frequency and percentage of the selected draft sub-indicators are shown in Table 8 (the frequency is between 3 and 6 or from 33.33% to 66.67%). Then the draft sub-indicators of green service with a score greater than 2 points (or ≥22.22%) were selected for consideration as draft sub-indicators for green supermarket evaluation.

3.2.4. Draft Sub-Indicators of Green Transportation

The findings from the in-depth interviews about the draft sub-indicators of green transportation that are important for green supermarket evaluation, as well as the frequency and percentage of selected draft sub-indicators are shown in Table 8 (the frequency is between 3 and 6 or from 33.33% to 66.67%). Then the draft sub-indicators of green transportation with a score greater than 2 points (or ≥22.22%) were selected for consideration as draft sub-indicators for green supermarket evaluation.

3.2.5. Draft Sub-Indicators of Green Environmental and Energy Management System

The findings from the in-depth interviews about the draft sub-indicators of green environmental and energy management systems that are important for green supermarket evaluation, as well as the frequency and percentage of selected draft sub-indicators are shown in Table 8 (the frequency equals 9 points (or ≥100%) were selected for consideration as draft sub-indicators for green supermarket evaluation.

3.2.6. Draft Sub-Indicators of Social Performance

The findings from the in-depth interviews about the draft sub-indicators of social performance that are important for green supermarket evaluation, as well as the frequency and percentage of selected draft sub-indicators are shown in Table 9 (the frequency is between 2 and 6 or from 22.22% to 66.67%). Then the draft sub-indicators of social performance with a score equal to or greater than 2 points (or ≥22.22%) were selected for consideration as draft sub-indicators for green supermarket evaluation.

3.2.7. Draft Sub-Indicators of Environmental Performance

The findings from the in-depth interviews about the draft sub-indicators of environmental performance that are important for green supermarket evaluation, as well as the frequency and percentage of selected draft sub-indicators are shown in Table 9 (the frequency is between 4 and 7 or from 44.44% to 77.78%). Then the draft sub-indicators of environmental performance with a score greater than 2 points (or ≥22.22%) were selected for consideration as draft sub-indicators for green supermarket evaluation.

3.2.8. Draft Sub-Indicators of Economic Performance

The findings from the in-depth interviews about the draft sub-indicators of economic performance that are important for green supermarket evaluation, as well as the frequency and percentage of selected draft sub-indicators are shown in Table 9 (the frequency is between 2 and 7 or from 22.22% to 77.78%). Then the draft sub-indicators of economic performance with a score equal to or greater than 2 points (or ≥22.22%) were selected for consideration as draft sub-indicators for green supermarket evaluation.

3.2.9. Draft Sub-Indicators of Organization Image Performance

The findings from the in-depth interviews about the draft sub-indicators of organization image performance that are important for green supermarket evaluation, as well as the frequency and percentage of selected draft sub-indicators are shown in Table 9 (the frequency is between 4 and 7 or from 44.44% to 77.78%). Then the draft sub-indicators of organization image performance with a score greater than 2 points (or ≥22.22%) were selected for consideration as draft sub-indicators for green supermarket evaluation.
From the findings of the in-depth interview about the draft sub-indicators, we found that some indicators had a score of only 2 points; however, the draft sub-indicators were deemed acceptable because the key informants’ s opinions were consistent among two or more persons, which is typical for non-simultaneous interview.

3.3. Development of Sub-Indicator Detail

After the draft sub-indicators had been defined, the draft sub-indicators were interpolated by five experts from the government agencies that set up the green business standards. In addition, the sub-indicator details were also identified by these five experts from the government agencies. The sub-indicators that were renamed are GPD4, GPD6, and GPD7. GPD4 was renamed as “The ratio of product with green packaging”, GPD6 was renamed as “The ratio of the number of customers waiting in the payment queue for more than 1 min”, and GPD7 was renamed as “the number of non green packaging bags received by customer”. The type of sub-indicator measure consisted of nominal scale (Yes/No), count scale, and ratio scale. The sub-indicator score is between one and three and it is mostly a monthly evaluation (the first 3 business days of every month period for evaluating the results of the previous month). The sub-indicator detail is illustrated in Table 10.

3.4. Development of Green Supermarket Evaluation Model

Definition of Key Parameters Used in the Proposed Evaluation Model:
GIThe green degree of the first level (or composite indicator)
GIIThe green degree of the second level
GIIIThe green degree of the third level
GPURiThe set of sub-indicators for green procurement
GSTOiThe set of sub-indicators for green storage
GSERiThe set of sub-indicators for green service
GTRAi
GEESi
The set of sub-indicators for green transportation
The set of sub-indicators for green environmental and energy management system
SOCPiThe set of sub-indicators for social performance
ENVPiThe set of sub-indicators for environmental performance
ECOPiThe set of sub-indicators economic performance
OIMPiThe set of sub-indicators organization image
GGPROThe green degree of green process
GGPURThe green degree of green procurement
GGSTOThe green degree of green storage
GGSERThe green degree of green service
GGTRA
GGEES
The green degree of green transportation
The green degree of green environmental and energy management system
GSOCPThe green degree of social performance
GENVPThe green degree of environmental performance
GECOPThe green degree of economic performance
GOIMPThe green degree of organization image performance
GGPURThe green degree of the set of sub-indicators for green procurement
GGSTOiThe green degree of the set of sub-indicators for green storage
GGSERiThe green degree of the set of sub-indicators for green service
GGTRAi
GGEESi
The green degree of the set of sub-indicators for green transportation
The green degree of the set of sub-indicators for green environmental and energy management system
GSOCPiThe green degree of the set of sub-indicators for social performance
GENVPiThe green degree of the set of sub-indicators for environmental performance
GECOPiThe green degree of the set of sub-indicators for economic performance
GOIMPiThe green degree of the set of sub-indicators for organization image performance
β of GPURIndirect influence of green procurement on the green process
β of GSTOIndirect influence of green storage on the green process
β of GSERIndirect influence of green service on the green process
β of GTRA
β of GEES
Indirect influence of green transportation on the green process
Indirect influence of green environmental and energy management system on the green process
β of GPROIndirect influence of green process on the green supermarket
β of SOCPDirect influence of social performance on the green supermarket
β of ENVPDirect influence of environmental performance on the green supermarket
β of ECOPDirect influence of economic performance on the green supermarket
β of OIMPDirect influence of organization image performance on the green supermarket

3.4.1. Determine the Green Supermarket Evaluation Model

From the SEM model (see Figure 3) and the development of sub-indicators in Section 3.2, the green supermarket evaluation is divided into three levels, two factors, nine major indicators (nine sub-factors), and a total of one hundred one sub-indicators. The main sub-indicators are green procurement, green storage, green service, and green transportation in order to evaluate the green degree of green supermarket, which refers to the determination method of the evaluation model on the hierarchy of the green degree of the green supply chain [31]. In this work, the green degree can be divided into every aspect of the indicator from the hierarchical step model as follows:
  • GI = {green degree of green supermarket as 0–1 or 0–100%} 0.941 × GOUT = GII
  • GII = {GGPRO, GSOCP, GENVP, GECOP, GOIMP}
  • GII = {GGPUR, GGSTO, GGSER, GGTRA, GGEES, GSOCP, GENVP, GECOP, GOIMP}
  • GIII = {GGPUR1, …, GGPUR17; GGSTO1, …, GGSTO9; GGSER1, …, GGSER17;
  • GGTRA1, …, GGTRA9; GGEES1, …, GGEES20; GSOCP1, …, GSOCP13; GSOCP1,…, GSOCP4;
  • GECOP1, …, GECOP10; GOIMP1, …, GOIMP4;}
Therefore:
  • Green supermarket (GI) = GII = GIII

3.4.2. Mathematical Model for Green Supermarket Evaluation

From the SEM model and hierarchical model, the evaluation model for the green degree of green supermarket (as 0–1 or 0–100%) can be developed as follows;
Green supermarket (GI) = GII
GII = GGPRO + GSOCP + GENVP + GECOP + GOIMP
When:
G GPRO = β   of   GPRO Sum   of   β 1 = 0.903   4.093 = 0.222
G SOCP = β   of   SOCP Sum   of   β 1 = 0.827   4.093 = 0.202
G ENVP = β   of   ENVP Sum   of   β 1 = 0.814   4.093 = 0.198
G ECOP = β   of   ENVP Sum   of   β 1 = 0.708 4.093 = 0.173
G OIMP = β   of   ENVP Sum   of   β 1 = 0.841 4.093 = 0.205
And when (see Table 5):
Sum of β1 = β of GPRO + β of SOCP + β of ENVP + β of ECOP + β of OIMP
Sum of β1 = 0.903 + 0.827 + 0.814 + 0.708 + 0.841 = 4.093
GII = (GGPUR + GGSTO + GGSER + GGTRA+ GGEES) + GSOCP + GENVP + GECOP + GOIMP
When:
GGPRO = GGPUR + GGSTO + GGSER + GGTRA+ GGEES
G GPUR = β   of   GPUR Sum   of   β 2   ×   G GPRO = 0.918   4.599   ×   0.222 = 0.044
G GSTO = β   of   GSTO Sum   of   β 2   ×   G GPRO = 0.907   4.599   ×   0.222 = 0.044
G GSER = β   of   GSER Sum   of   β 2   ×   G GPRO = 0.911   4.599   ×   0.222 = 0.044
G GTRA = β   of   GTRA Sum   of   β 2   ×   G GPRO = 0.932 4.599   ×   0.222 = 0.045
G GEES = β   of   GGES Sum   of   β 2   ×   G GPRO = 0.931 4.599   ×   0.222 = 0.045
And when (see Table 5):
Sum of β2 = β of GPUR + β of GSTO + β of GSER + β of GTRA+ β of GEES
Sum of β2 = 0.918 + 0.907 + 0.911 + 0.932 + 0.931 = 4.599
GII I = GII
G III = 1 17 G GPURi + 1 9 G GSTOi + 1 17 G GSERi + 1 9 G GTRAi + 1 20 G GEESi + 1 10 G SOCPi + 1 4 G ENVPi + 1 13 G ECOPi + 1 4 G OIMPi
According to the above Equation (5), the green degree of sub-indicators (see Table 11) of various major indicators can be described as follows:
(1)
The green degree of sub-indicators of green procurement:
G GPURi = G GPUR ×   Score   of   GPUR i 1 17 GPUR i
(2)
The green degree of sub-indicators of green storage:
G GSTOi =   G GSTO ×   Score   of   GSTO i 1 9 GSTO i
(3)
The green degree of sub-indicators of green service:
G GSERi = G GSER ×   Score   of   GSER i 1 17 GSER i
(4)
The green degree of sub-indicators of green transportation:
G GTRAi = G GTRA ×   Score   of   GTRA i 1 9 GTRA i
(5)
The green degree of sub-indicators of green environmental and energy management system:
G GEESi   = G GEES ×   Score   of   GEES i 1 20 GEES i
(6)
The green degree of sub-indicators of social performance:
G SOCPi = G EFSO ×   Score   of   SOCP i 1 10 SOCP i
(7)
The green degree of sub-indicators of environmental performance:
G ENVPi = G ENVP ×   Score   of   ENVP i 1 4 ENVP i
(8)
The green degree of sub-indicators of economic performance:
G ECOPi = G ECOP ×   Score   of   ECOP i 1 13 ECOP i
(9)
The green degree of sub-indicators of organization image performance:
G OIMPi = G OIMP ×   Score   of   OIMP i 1 4 OIMP i
Therefore:
Green   degree   of   green   supermarket   = 1 17 G GPURi + 1 9 G GSTOi + 1 17 G GSERi + + 1 9 G GTRAi   + 1 20 G GEESi + 1 10 G SOCPi + 1 4 G ENVPi + 1 13 G ECOPi + 1 4 G OIMPi
Example:
From Table 8 and Table 10, the GPUR1 and GPUR2 (the sub-indicators of green procurement) are selected as two cases in this green degree calculation.
GPUR1 means “There is an evaluation system for green product standards (green label, green livestock, etc.)”, which considers the type of measure to be “Yes/No”. If the criterion is “Yes”, then the score of the indicator equals “3”.
If GPUR1 is evaluated as “Yes” then the score of the indicator equals “3” and therefore the green degree (GGPUR1) of GPUR1 equals “0.00321951219512195” 0.044 × 3 41 , whereas if GPUR1 is evaluated as “No” then the score of the indicator equals “0” and therefore the green degree (GGPUR1) of GPUR1 equals “0” 0.044 × 0 41 .
GPUR2 means “The ratio of products that have green standards”, which considers the type of measure to be “Ratio”. If the criterion is “Ratio obtained”, then the score of the indicator equals “3”.
If GPUR2 is evaluated as “100%” then the score of the indicator equals “3”. Therefore, the green degree (GGPUR2) of GPUR2 equals “0.00321951219512195” 0.044 × 3 × 100 % 41 . Alternately, if GPUR2 is evaluated as “50%”, then the score of the indicator equals “1.5”, and therefore the green degree (GGPUR1) of GPUR2 equals “0.0016097560975609756098” 0.056 × 3 × 50 % 41 .

4. Discussion

A green supermarket evaluation model based on green process and green output is proposed in this research. The developed model encompasses multi-level indicators in green supermarket management throughout the supply chain. According to the SEM model, the green indicators for green supermarket evaluation are divided into two categories with nine major-indicators. The major-indicators of the green process consist of green procurement, green storage, green service, green transportation and green energy and environmental management system, while the major-indicators of green output consist of social performance, environmental performance, economic performance, and organization image performance. In addition, the major-indicator weight indicates that social performance is the most important, followed in order by organization image performance, environmental performance, economic performance, green procurement, green storage, green transportation, and green service. Earlier research on the incorporation of social responsibility concepts into business activities has demonstrated that it could have a significant impact on a company’s finances [32]. Furthermore, environmental management performance indicators are an important consideration. Previous research demonstrated that organizations which adopt proactive environmental management strategies could develop distinctive skills and competencies that enhance their business competitiveness [33]. For this research, the results also found that the proposed green supermarket evaluation model is divided into one hundred one sub-indicators, comprised of seventeen sub-indicators of green procurement, nine sub-indicators of green storage, seventeen sub-indicators of green service, nine sub-indicators of green transportation, twenty sub-indicators of green environmental and energy management system, ten sub-indicators of social performance, four sub-indicators of environmental performance, thirteen sub-indicators of economic performance, and four sub-indicators of organization image performance to evaluate the green degree of green supermarket.
For this study, the measure level for the green degree of green supermarket is calculated as a ratio scale, and the green degree of green supermarket as 0–1 or 0–100%. Another intriguing element is that the major green metrics, such as social performance, environmental performance, economic performance, and organization image performance, may all be evaluated by a single person for summative review in a green supermarket. Finally, the major indicators that cover the supply chain management (SCM) perspective, such as green procurement, green storage, green service, and green transportation, are reviewed for formative evaluation, making the green supermarket evaluation more appropriate and complete. The findings clearly reveal that social performance indicators have a significant influence on green supermarket perception. This is due to the higher efficiency provided by social and environmental initiatives combined with greener procedures, which have created opportunities for consumers to contribute to long-term environmental conservation [34]. According to other studies, positive impacts may be significant mainly in specific aspects of environmental performance or competitiveness [34,35]. According to some past research, non-economic considerations can drive voluntary contributions to corporate social and environmental responsibilities more strongly than economic incentives [35]. In addition, the details of the green procurement indicators (the ratio of products that have green standards, and the ratio of products that have green label standards) in this study are consistent with those from an earlier study about the similarities and differences of the features and the importance of a green office standard for sustainable environmental management [36]. This study also indicated that green procurement is an evaluation method on purchasing items. The certified green label products which can be recycled should be selected. The details of green service (green service affects environmental performance) in this study are consistent with those from an earlier study on performance implications and the role of environmental management systems [37]. The findings of this study indicate that green service is also positively related to environmental performance.
Finally, the findings of this present study serve as a basis for future development and improvement of an innovative green supermarket evaluation system for real-world application. Therefore, it is necessary to understand the concept of green indicators in various dimensions. Further research should therefore be conducted to enhance the existing knowledge about green input factors and green context factors through various case studies of green supermarket evaluation. This is a significant requirement in order to achieve the relevant sustainable development goal, especially for promoting green supermarkets in many countries throughout the world.

5. Conclusions

There is a significant practical application of the integration of valuation theory and the green supply chain theory to develop the outcomes of green indicators for green supermarket evaluation. The results also revealed that the green indicators for green supermarket evaluation are classified into three levels, two components, nine major indicators, and a total of one hundred one sub-indicators. The major-indicator weight indicated that social performance is the most important, followed in order by organization image performance, environmental performance, economic performance, green procurement, green storage, green transportation, green service, and green environmental and energy management system. Therefore, this developed evaluation model is promising as an effective tool to motivate green supermarket development in developing countries, including Thailand in the near future.

Author Contributions

Conceptualization: C.R. and A.C.; Methodology, I.V. and C.R.; Software and data analysis, I.V.; Writing: I.V. and C.R.; Review and editing: C.R.; Supervision: C.R. and A.C. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by Ratchadaphiseksomphot Endowment Fund for Research Unit, Chulalongkorn University.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Acknowledgments

This research work was supported by Ratchadaphiseksomphot Endowment Fund for Research Unit, Chulalongkorn University.

Conflicts of Interest

The authors declare no conflict of interest. The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript, or in the decision to publish the results.

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Figure 1. Research methodology in this study.
Figure 1. Research methodology in this study.
Sustainability 14 10745 g001
Figure 2. Conceptual framework.
Figure 2. Conceptual framework.
Sustainability 14 10745 g002
Figure 3. Standardized estimates model.
Figure 3. Standardized estimates model.
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Table 1. Internal consistency and reliability.
Table 1. Internal consistency and reliability.
FactorsSub-FactorsItemsn x ¯ * SD *Alpha
On a scale of one (1: least agree) to five (5: most agree), please select the number that best describes the level of your opinion,
the factors affecting a green supermarket from the following:
Green processGreen procurementGreen procurement affects social performance2744.500.6970.897
Green procurement affects environmental performance2744.500.697
Green procurement affects economic performance2744.360.768
Green procurement affects organization image performance2744.450.668
Green storageGreen storage affects social performance2744.430.7040.889
Green storage affects environmental performance2744.430.704
Green storage affects economic performance2744.280.800
Green storage affects organization image performance2744.460.685
Green serviceGreen service affects social performance2744.420.6870.881
Green service affects environmental performance2744.420.687
Green service affects economic performance2744.360.777
Green service affects organization image performance2744.480.680
Green transportationGreen transportation affects social performance2744.430.7090.891
Green transportation affects environmental performance2744.430.709
Green transportation affects economic performance2744.310.772
Green transportation affects organization image performance2744.410.772
Green environmental and energy management systemGreen environmental and energy management system affects social performance2744.480.6520.894
Green environmental and energy management system affects environmental performance2744.480.652
Green environmental and energy management system affects economic performance2744.330.732
Green environmental and energy management system affects organization image performance2744.500591
Green outputSocial performanceSocial performance affects green supermarket2744.530.6530.880
Environmental performanceEnvironmental performance affects green supermarket2744.530.653
Economic performanceEconomic performance affects green supermarket2744.390.764
Organization image PerformanceOrganization image performance affects green supermarket2744.480.670
Green supermarket-Green supermarket is a modern retail business of the supermarket type with social responsibility, environmental responsibility, economic responsibility and organization image responsibility, and doing various activities, the aim of which is to generate appropriate income in a manner that has the least impact on the environment2744.560.597N/A
* x : Mean value.
Table 2. Branch manager sample demographics.
Table 2. Branch manager sample demographics.
VariableAttributeBranch Manager
Number of PeoplePercentage (%)
Gender
Male21879.56
Female5620.44
Total274100.00
Work experience in
management
1–5 years82.92
6–10 years3211.68
11–15 years19370.44
16–20 years4114.96
Total274100.00
Table 3. Descriptive statistics for all parameters.
Table 3. Descriptive statistics for all parameters.
FactorSub-Factor (Major Indicator)n x ¯ SDSKKS
Green process (GPRO)Green procurement (GPUR)2744.4530.619−0.776−0.563
Green storage (GSTO)2744.4000.628−0.714−0.543
Green service (GSER)2744.4190.609−0.742−0.439
Green transportation (GTRA)2744.3940.632−0.646−0.743
Green environmental and energy management system (GEES)2744.4840.574−0.650−0.692
Green output (GOUT)Social performance (SOCP)2744.5290.653−1.065−0.021
Environmental performance (ENVP)2744.5260.653−1.050−0.048
Economic performance (ECOP)2744.3910.764−1.3912.770
Organization image performance (OIMP)2744.4820.670−0.928−0.307
x ¯ : mean, SD: standard deviation, SK: skewness, KS: kurtosis.
Table 4. Pearson correlation coefficient of the subfactors of green process and green output.
Table 4. Pearson correlation coefficient of the subfactors of green process and green output.
Pearson Correlation Coefficient of the Sub-Factors of Green Process
GPURGSTOGSERGTRAGEES
GPUR1.000
GSTO0.844 **1.000
GSER0.828 **0.816 **1.000
GTRA0.860 **0.842 **0.858 **1.000
GEES0.840 **0.846 **0.850 **0.838 **1.000
Bartlett’s Test of Sphericity = 1613.068, p < 0.001
Kaiser-Meyer-Olkin Measure of Sampling Adequacy = 0.971
Pearson Correlation Coefficient of the Sub-Factors of Green Output
SOCPENVPECOPOIMP
SOCP1.000
ENVP0.772 **1.000
ECOP0.605 **0.557 **1.000
OIMP0.689 **0.692 **0.619 **1.000
Bartlett’s Test of Sphericity = 1613.068, p < 0.001
Kaiser-Meyer-Olkin Measure of Sampling Adequacy = 0.971
** p < 0.01.
Table 5. Model consistency with empirical data.
Table 5. Model consistency with empirical data.
Major-Indicator
(or Variable)
Component Weight/Influencet
b (SE)Beta (β)
GPRO
GPUR0.965 (0.035)0.91827.530 ***
GSTO0.967 (0.037)0.90726.429 ***
GSER0.941 (0.035)0.91126.771 ***
GTRA10.932------
GEES0.909 (0.035)0.93126.093 ***
GOUT
SOCP1.002 (0.079)0.82712.755 ***
ENVP0.986 (0.079)0.81412.552 ***
ECOP10.708------
OIMP1.043 (0.080)0.84113.027 ***
GPRO ---> GOUT
(or GPRO)
0.825 (0.063)0.90313.203 ***
CMIN/df = 1.666, df = 21, RMSEA = 0.049, CFI = 0.995, GFI = 0.974, *** p < 0.001. ------: SE and t values are not reported as this is a constrained parameter, ---> is the influence line.
Table 6. The sub hypothesis analysis test.
Table 6. The sub hypothesis analysis test.
ANOVA a Sum of SquaresDegree of FreedomMean SquaresFp-Value
Regression
Residual
Total
86.413
11.153
97.566
4
269
274
21.603
0.041
521.070<0.01 b
a dependence: Y1, b Predictors: Constant, X1, X2, X3, X4.
Table 7. Coefficient analysis.
Table 7. Coefficient analysis.
ModelUnstandardized CoefficientsStandardized Coefficientstp-Value
BStd. ErrorBeta (β)
Constant0.2590.095 2.7150.07
Social performance (X1)0.2840.0320.3108.750<0.01
Environmental performance (X2)0.2410.0320.2637.583<0.01
Economic performance (X3)0.0740.0220.0943.408<0.01
Organization image performance (X4) 0.3570.0290.40012.515<0.01
R2 = 0.941, R2 Adjusted = 0.886
Table 8. Indicator analytic from in-depth interviews for green process (GPRO).
Table 8. Indicator analytic from in-depth interviews for green process (GPRO).
Major
Indicators
Draft Sub-IndicatorsSelected
Indicator Frequency and Percentage
CodesDetailFrequency *%
Green procurement
(GPUR)
GPUR1There is an evaluation system for green product standards (green label, green livestock, etc.)666.67
GPUR2The ratio of products that have green standards666.67
GPUR3There is a complaint system for stakeholders in procurement555.56
GPUR4There is a complaint management system for stakeholders in procurement555.56
GPUR5There is a complaint communication system for stakeholders in procurement555.56
GPUR6The ratio of suppliers who received green standard certification.555.56
GPUR7The ratio of products that have green label standards444.44
GPUR8The ratio of revised purchase complaints444.44
GPUR9There is a product requirement planning system444.44
GPUR10The ratio of product items available.555.56
GPUR11There is a food safety product management system666.67
GPUR12The ratio of food product items with international safety production standards (GMP, etc.)666.67
GPUR13There is a green procurement policy that is communicated to employees at all levels333.33
GPUR14There are supplier selection standards (e.g., contract of sale)333.33
GPUR15There is a legal product selection standard.666.67
GPUR16The number of suppliers who have performed illegal operations888.89
GPUR17The number of illegal products666.67
Green storage
(GSTO)
GSTO1There is a complaint system for stakeholders in storage333.33
GSTO2There is a complaint management system for stakeholders in storage333.33
GSTO3There is a complaint communication system for stakeholders in storage666.67
GSTO4The ratio of revised storage complaints555.56
GSTO5The ratio of product items available for sale in the sales area444.44
GSTO6The ratio of product items found to be expired444.44
GSTO7There is a green storage policy that is communicated to employees at all levels222.22
GSTO8There is a management system for occupational safety and health444.44
GSTO9The number of accidents at work555.56
Green service
(GSER)
GSER1There is a complaint system for customers at sales area555.56
GSER2There is a complaint management system for customer555.56
GSER3There is a complaint communication system for customer and related staffs444.44
GSER4There is a complaint system for stakeholders in service333.33
GSER5There is a complaint management system for stakeholders in service555.56
GSER6There is a complaint communication system for stakeholders in service555.56
GSER7The ratio of revised service complaints666.67
GSER8The number of recurring customer complaints333.33
GSER9The ratio of customer complaints that are fully communicated555.56
GSER10The ratio of product items that have been stored clearly for customers666.67
GSER11The ratio of revised service complaints555.56
GSER12There is an electronic shelves label system555.56
GSER13The ratio of product items using electronic shelves labels666.67
GSER14There is a system for assessing cleanliness and hygiene in the supermarket area.333.33
GSER15There is a screening system for epidemics444.44
GSER16There is green service policy that is communicated to employees at all levels666.67
GSER17The ratio of refill products to the total product items444.44
Green transportation
(GTRA)
GTRA1There is a complaint system for stakeholders in transportation666.67%
GTRA2There is a complaint management system for stakeholders in transportation444.44%
GTRA3There is a complaint communication system for stakeholders in transportation333.33%
GTRA4The ratio of revised transportation complaints333.33%
GTRA5There is a payment waiting time check system333.33%
GTRA6The ratio of the number of customers waiting in the payment queue for more than 5 min666.67%
GTRA7There are degradable packaging bags for customers555.56%
GTRA8The ratio of the number of use of the degradable packaging bags for customers444.44%
GTRA9There is a green transportation policy that is communicated to employees at all levels333.33%
(GEES)GEES1The organization has a green energy management and energy system policy and management framework in place to ensure that all staff are conscious of the guidelines9100%
GEES2Employees at all levels are required to accept the policy and communication of the green environmental and energy management system9100%
GEES3Inspection and evaluation of treated wastewater quality in compliance with the requirements mandated by law9100%
GEES4A focused working group on the environment and energy have been established9100%
GEES5Employees within the company have been tasked with taking care of the environment and energy management9100%
GEES6The organization promotes environmental and energy knowledge and skills of its employees9100%
GEES7The organization has a procedure for collecting, analyzing, and evaluating quantitative information on all water utilization9100%
GEES8The company continuously improves the training requirements for employees who work in environmental and energy protection9100%
GEES9The organization continually monitors the treated wastewater’s quality9100%
GEES10The organization has sorted food waste for further use or management9100%
GEES11The organization adopts effective trash management and garbage separation9100%
GEES12The organization follows a standard waste management system9100%
GEES13The organization has implemented a process for wastewater recycling and reuse9100%
GEES14The organization has utilized by-products from food waste management such as fertilizer, biogas9100%
GEES15An environmental and energy action plan for the organization supports overall environment and energy management dimensions9100%
GEES16The organization has been working on process guidelines for instructing staff members on environmental and energy conservation9100%
GEES17Organizations have set timeframes for cleaning and maintaining equipment that consumes large amount of energy9100%
GEES18The organization uses high-efficiency air conditioners and chillers9100%
GEES19The organization has modified or installed energy-saving lamps in place of the old incandescent lamps9100%
GEES20An apparatus that manages the operation of automatic outside lamps is installed in the organization9100%
* A total of nine key informants.
Table 9. Indicator analytic from in-depth interviews for green output (GOUT).
Table 9. Indicator analytic from in-depth interviews for green output (GOUT).
Major-IndicatorsDraft Sub-IndicatorsSelected
Indicator Frequency and Percentage
CodesDetailFrequency *%
Social performance (SOCP)SOCP1Number of work accidents for employees555.56%
SOCP2Number of customers who have been involved in an accident in the supermarket area444.44%
SOCP3Number of suppliers/contractors have been involved in an accident in the supermarket area555.56%
SOCP4Employee turnover rate555.56%
SOCP5The satisfaction ratio of investor444.44%
SOCP6The satisfaction ratio of government333.33%
SOCP7The satisfaction ratio of employee666.67%
SOCP8The satisfaction ratio of supplier (or contractor)666.67%
SOCP9The satisfaction ratio of customer222.22%
SOCP10The satisfaction ratio of community333.33%
Environmental performance
(ENVP)
ENVP1The ratio of food waste recycled444.44%
ENVP2The ratio of electricity consumption from renewable energy systems (or clean energy)555.56%
ENVP 3The unavailable waste ratio555.56%
ENVP4The ratio of water reused777.78%
Economic performance
(ECOP)
ECOP1Current ratio333.33%
ECOP2Quick ratio555.56%
ECOP3Leverage ratio666.67%
ECOP4Average collection period666.67%
ECOP5Inventory turnover ratio555.56%
ECOP6Return on assets888.89%
ECOP7Free cash flow ratio222.22%
ECOP8Gross profit margin222.22%
ECOP9Operating profit margin777.78%
ECOP10Return on equity666.67%
ECOP11Cash cycle444.44%
ECOP12Net profit ratio666.67%
ECOP13Acid ratio333.33%
Organization image performance
(OIMP)
OIMP1The number of ethical complaints777.78%
OIMP2The good organization image ratio from the public666.67%
OIMP3The number of news programs communicating the bad image of the organization555.56%
OIMP4Trust of stakeholders to the organization444.44%
* A total of nine key informants.
Table 10. Sub-indicator detail.
Table 10. Sub-indicator detail.
CodesType of MeasureCriterionScore of IndicatorCodesMeasured TypeCriterionScore of Indicator
GPUR1Yes/NoYes3GEES10Yes/NoYes3
GPUR2RatioRatio obtained3GEES11Yes/NoYes3
GPUR3Yes/NoYes2GEES12Yes/NoYes3
GPUR4Yes/NoYes2GEES13Yes/NoYes3
GPUR5Yes/NoYes2GEES14Yes/NoYes3
GPUR6RatioRatio obtained3GEES15Yes/NoYes3
GPUR7RatioRatio obtained3GEES16Yes/NoYes3
GPUR8RatioRatio obtained3GEES17Yes/NoYes3
GPUR9Yes/NoYes2GEES18Yes/NoYes3
GPUR10RatioRatio obtained2GEES19Yes/NoYes3
GPUR11Yes/NoYes3GEES20Yes/NoYes3
GPUR12RatioRatio obtained3GTRA1Yes/NoYes2
GPUR13Yes/NoYes2GTRA2Yes/NoYes2
GPUR14Yes/NoYes2GTRA3Yes/NoYes2
GPUR15Yes/NoYes2GTRA4RatioRatio obtained3
GPUR16Count02GTRA5Yes/NoYes2
GPUR17Count02GTRA6RatioRatio obtained3
GSTO1Yes/NoYes2GTRA7Count03
GSTO2Yes/NoYes2GTRA8RatioRatio obtained3
GSTO3Yes/NoYes2GTRA9Count03
GSTO4RatioRatio obtained2SOCP1Count01
GSTO5RatioRatio obtained2SOCP2Count01
GSTO6Ratio0%3SOCP3Count01
GSTO7Yes/NoYes3SOCP4Ratio<10%1
GSTO8Yes/NoYes3SOCP5RatioRatio obtained2
GSTO9Count03SOCP6RatioRatio obtained2
GSER1Yes/NoYes2SOCP7RatioRatio obtained2
GSER2Yes/NoYes2SOCP8RatioRatio obtained2
GSER3Yes/NoYes3SOCP9RatioRatio obtained2
GSER4Yes/NoYes2SOCP10RatioRatio obtained2
GSER5Yes/NoYes2ENVP1RatioRatio obtained3
GSER6Yes/NoYes2ENVP2RatioRatio obtained3
GSER7Ratio100%3ENVP 3RatioRatio obtained3
GSER8Count03ENVP4RatioRatio obtained3
GSER9Ratio100%3ECOP1Ratio>200% 1
GSER10Ratio100%3ECOP2Ratio>100% 1
GSER11RatioRatio obtained3ECOP3Ratio>40% 1
GSER12Yes/NoYes2ECOP4Ratio<40 1
GSER13Ratio0%3ECOP5Ratio>200% 1
GSER14Yes/NoYes3ECOP6Ratio>8% 1
GSER15Yes/NoYes3ECOP7Ratio>20% 1
GSER16Yes/NoYes2ECOP8Ratio>30% 1
GSER17RatioRatio obtained2ECOP9Ratio>20% 2
GEES1Yes/NoYes3ECOP10Ratio>15% 3
GEES2Yes/NoYes3ECOP11Count2 3
GEES3Yes/NoYes3ECOP12Ratio>10% 3
GEES4Yes/NoYes3ECOP13Ratio>200% 1
GEES5Yes/NoYes3OIMP1Count03
GEES6Yes/NoYes3OIMP2RatioRatio obtained3
GEES7Yes/NoYes3OIMP3Count03
GEES8Yes/NoYes3OIMP4RatioRatio obtained3
GEES9Yes/NoYes3
Table 11. Sub-indicator weights (third level).
Table 11. Sub-indicator weights (third level).
CodesScore of IndicatorIndicator Weight (β)CodesScore of IndicatorIndicator Weight (β)
GPUR130.00321951219512195 GEES130.00225
GPUR230.00321951219512195 GEES230.00225
GPUR320.00214634146341463 GEES330.00225
GPUR420.00214634146341463 GEES430.00225
GPUR520.00214634146341463 GEES530.00225
GPUR630.00321951219512195 GEES630.00225
GPUR730.00321951219512195 GEES730.00225
GPUR83\0.00321951219512195 GEES830.00225
GPUR920.00214634146341463 GEES930.00225
GPUR1020.00214634146341463 GEES1030.00225
GPUR1130.00321951219512195 GEES1130.00225
GPUR1230.00321951219512195 GEES1230.00225
GPUR1320.00214634146341463 GEES1330.00225
GPUR1420.00214634146341463 GEES1430.00225
GPUR1520.00214634146341463 GEES1530.00225
GPUR1620.00214634146341463 GEES1630.00225
GPUR1720.00214634146341463 GEES1730.00225
Sum410.044GEES1830.00225
GSTO120.004 GEES1930.00225
GSTO220.004 GEES2030.00225
GSTO320.004 Sum600.045
GSTO420.004 SOCP110.012625
GSTO520.004 SOCP210.012625
GSTO630.006 SOCP310.012625
GSTO730.006 SOCP410.012625
GSTO830.006 SOCP520.025250
GSTO930.006 SOCP620.025250
Sum220.044SOCP720.025250
GSER120.00204651162790698 SOCP820.025250
GSER220.00204651162790698 SOCP920.025250
GSER330.00306976744186047 SOCP1020.025250
GSER420.00204651162790698 Sum160.202
GSER520.00204651162790698 ENVP130.0495
GSER620.00204651162790698 ENVP230.0495
GSER730.00306976744186047 ENVP 330.0495
GSER830.00306976744186047 ENVP430.0495
GSER930.00306976744186047 Sum120.198
GSER1030.00306976744186047 ECOP110.00865
GSER1130.00306976744186047 ECOP210.00865
GSER1220.00204651162790698 ECOP310.00865
GSER1330.00306976744186047 ECOP410.00865
GSER1430.00306976744186047 ECOP510.00865
GSER1530.00306976744186047 ECOP610.00865
GSER1620.00204651162790698 ECOP710.00865
GSER1720.00204651162790698 ECOP810.00865
Sum430.044ECOP920.01730
GTRA120.00391304347826087 ECOP1030.02595
GTRA220.00391304347826087 ECOP1130.02595
GTRA320.00391304347826087 ECOP1230.02595
GTRA430.00586956521739130 ECOP1310.00865
GTRA520.00391304347826087 Sum200.173
GTRA630.00586956521739130 OIMP130.05125
GTRA730.00586956521739130 OIMP230.05125
GTRA830.00586956521739130 OIMP330.05125
GTRA930.00586956521739130 OIMP430.05125
Sum230.045Sum120.205
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Vipusanapat, I.; Ratanatamskul, C.; Chandrachai, A. Development of Green Supermarket Evaluation Model Based on Green Process and Green Output—Case of Bangkok City. Sustainability 2022, 14, 10745. https://0-doi-org.brum.beds.ac.uk/10.3390/su141710745

AMA Style

Vipusanapat I, Ratanatamskul C, Chandrachai A. Development of Green Supermarket Evaluation Model Based on Green Process and Green Output—Case of Bangkok City. Sustainability. 2022; 14(17):10745. https://0-doi-org.brum.beds.ac.uk/10.3390/su141710745

Chicago/Turabian Style

Vipusanapat, Ittipat, Chavalit Ratanatamskul, and Achara Chandrachai. 2022. "Development of Green Supermarket Evaluation Model Based on Green Process and Green Output—Case of Bangkok City" Sustainability 14, no. 17: 10745. https://0-doi-org.brum.beds.ac.uk/10.3390/su141710745

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