Next Article in Journal
An Event-Based Resilience Index to Assess the Impacts of Land Imperviousness and Climate Changes on Flooding Risks in Urban Drainage Systems
Previous Article in Journal
Comparative Analysis of Tree-Based Ensemble Learning Algorithms for Landslide Susceptibility Mapping: A Case Study in Rize, Turkey
 
 
Font Type:
Arial Georgia Verdana
Font Size:
Aa Aa Aa
Line Spacing:
Column Width:
Background:
Article

Water Pollution Indexes Proposal for a High Andean River Using Multivariate Statistics: Case of Chumbao River, Andahuaylas, Apurímac

by
Betsy S. Ramos-Pacheco
1,2,3,4,*,
David Choque-Quispe
1,2,3,4,
Carlos A. Ligarda-Samanez
2,3,4,5,
Aydeé M. Solano-Reynoso
3,4,6,
Yudith Choque-Quispe
3,4,7,
John Peter Aguirre Landa
8,
Henrry W. Agreda Cerna
8,
Henry Palomino-Rincón
2,3,4,
Fredy Taipe-Pardo
2,3,4,
Miluska M. Zamalloa-Puma
9,
Lourdes Magaly Zamalloa-Puma
10,
Edwin Mescco Cáceres
8,
Liliana A. Sumarriva-Bustinza
11 and
Katia Choque-Quispe
12
1
Water and Food Treatment Materials Research Laboratory, Universidad Nacional José María Arguedas, Andahuaylas 03701, Peru
2
Department of Agroindustrial Engineering, Universidad Nacional José María Arguedas, Andahuaylas 03701, Peru
3
Research Group in the Development of Advanced Materials for Water and Food Treatment, Universidad Nacional José María Arguedas, Andahuaylas 03701, Peru
4
Nutraceuticals and Biopolymers Research Group, Universidad Nacional José María Arguedas, Andahuaylas 03701, Peru
5
Food Nanotechnology Research Laboratory, Universidad Nacional José María Arguedas, Andahuaylas 03701, Peru
6
Department of Basic Sciences, Universidad Nacional José María Arguedas, Andahuaylas 03701, Peru
7
Department of Environmental Engineering, Universidad Nacional José María Arguedas, Andahuaylas 03701, Peru
8
Department of Business Administration, Universidad Nacional José María Arguedas, Andahuaylas 03701, Peru
9
Department of Physics, Universidad Nacional de San Antonio Abad del Cusco, Cusco 08000, Peru
10
Faculty of Engineering, Universidad Continental, Cusco 08000, Peru
11
Department of Chemistry, Faculty of Sciences, Universidad Nacional de Educación Enrique Guzmán y Valle, Lima 15472, Peru
12
Administration Mention Public Management and Business Development, Universidad Nacional de San Antonio Abad del Cusco, Cusco 08000, Peru
*
Author to whom correspondence should be addressed.
Submission received: 12 June 2023 / Revised: 11 July 2023 / Accepted: 18 July 2023 / Published: 23 July 2023

Abstract

:
Pollution indexes are instruments that allow a quick interpretation of water quality, combining physical, chemical, and microbiological parameters to generate a numerical value. Our aim was to evaluate spatial and temporal-spatial water quality and propose a water pollution index (WPI) for high Andean rivers using multivariate statistics. Data on physical, chemical, and microbiological parameters were collected from the river water of the Chumbao sub-basin during the rainy and dry seasons at eight sampling points. The laboratory and field analysis methods were developed following the methodology proposed by the APHA. Spearman’s correlation, cluster analysis, and discriminate analysis were applied to evaluate water quality’s spatial and temporal variation and principal component analysis/factor analysis to identify critical parameters to formulate the Water Pollution Index (WPI). The parameters with the most incidence in water quality were color, conductivity, dissolved oxygen, biochemical demand oxygen, ammonia, total phosphorus, lead, chromium, and thermotolerant coliforms. The inorganic pollution index (IPI) was obtained from conductivity, lead, and chromium, reporting pollution levels for the river water between “none” to “high”; and the organic pollution index (OPI) was obtained from dissolved oxygen, biochemical demand oxygen, ammonia, total phosphorus, color, and thermotolerant coliforms, with levels of “low” to “very high” pollution. The proposed pollution indexes are water management instruments that evaluate water quality.

1. Introduction

The high Andean rivers are a source of fresh water and allow the development of anthropic activities in the surrounding communities, such as agriculture, cattle raising, aquaculture, industry, energy, and water supply [1,2,3,4]. They are collectors of domestic, agricultural, and industrial wastewater, and transport organic and inorganic substances [5] that alter the natural composition and quality of water [6].
Assessing water quality involves monitoring spatial and temporal changes in parameters [7,8,9,10,11,12], which are subject to variations in flow, precipitation, surface runoff, tributaries, and effluents [1,13]. The practical and reliable water quality evaluation during monitoring programs is complicated and difficult to interpret, so it is crucial to develop new ways to approach and statistically interpret data for preventive or management purposes [6,14,15,16].
Multivariate statistical methods (MSM) are excellent research tools that help interpret complex sets of information, identify parameters responsible for water quality variation [17,18,19,20,21,22,23,24,25], and allow their selection to compose indexes that objectively evaluate the water resource [21,26,27].
MSM, as the correlation analysis, cluster analysis (CA), discriminant analysis (DA), principal component analysis (PCA), and factor analysis (FA), have been widely used to evaluate temporal and spatial variations in complex water quality datasets [1,6,10,14,19,24,28,29,30,31,32]. For example, Barakat et al. [3] used correlation, PCA, and CA to evaluate the spatial and seasonal variations of Oum Er Bia River surface water quality data; the PCA technique allowed the identification of the sources of water quality degradation. Alam et al. [33] applied the Pearson correlation matrix to detect interrelationships between variables; PCA/FA resulted in three principal components, showing that organic substances, anthropogenic activity, fertilization, chemical wastes, and sewage runoff are responsible for water quality deterioration. Hajigholizadeh and Melesse [10] used CA and DA to assess spatial and temporal variations in water quality in South Florida; for this, a dataset of 12 water quality variables was used. The CA grouped 16 monitoring sites into three groups based on the similarity of the water quality characteristics, while the DA reduced the data; both techniques allowed us to evaluate the state of water contamination. Ramírez et al. [34] used multivariate statistics to formulate four pollution indexes developed based on legislation from different countries according to the concentrations of other variables and potential water uses.
Many proposed water quality and pollution indexes make it possible to assess the state of the water body. They are widely used by institutions that modulate water quality in different countries [35,36,37]. Most of them are based on the criteria established by Horton [38], such as, altitudinal, geological, climatic conditions, physicochemical transformations of water, the use of nonoriginal parameters and different units, and the condition of water quality, with some parameters critical to determine its status.
These indexes are helpful instruments for the rapid interpretation of water quality, combining different physical, chemical, and microbiological parameters to generate a numerical value that allows specific pollution levels and to present the current state of water in rivers or bodies of water [24,39]; however, most of these indices do not adjust to the reality of each zone; their selection, weight assignment, and conversion to a scale, in most cases, are based on a subjective aspect [40].
The Chumbao River acts as a source of water for human consumption, irrigation, aquaculture, energy, industry, and habitat for aquatic organisms [2,4,41,42]; however, its waters have been affected by the excessive growth of the urban zone, intensive agricultural activities, and domestic and industrial wastewater discharges [16,17,43]. In this sense, the present study aimed to evaluate spatial and temporal-spatial water quality and propose a water pollution index (WPI) for high Andean rivers, using multivariate statistics, which was applied in the study of the Chumbao River in the city of Andahuaylas, Peru.

2. Materials and Methods

2.1. Study Area

The study area comprised the Chumbao sub-basin (Figure 1). Hydrographically, the Chumbao River is located in the Pampas River’s lower part and right bank and originates in the high Andean zone at 4400 m. The sub-basin presents a Cwb climate according to Köppen, with marked seasons, in avenues with intense rainfall between October and March (from 500 to 1000 mm/year), and temperatures from 5 to 23 °C, and an average relative humidity of 55% [44].
It has an approximate length of 61.92 km until it flows into the Pampas River and acts as a collector basin, covering 23.6% of soil use; agriculture and pasture cover a significant percentage of soil use, 60.7%, and 15.7% corresponds to the urbanized zone and limited industry [41].

2.2. Analysis of Water Quality Parameters

Water samples were collected at eight sampling points (Table 1) in the dry and rainy seasons during 2018 and 2019; the evaluated water quality parameters were selected in accordance with Peruvian regulations, specifically the environmental water quality standards, temperature (TEM), dissolved oxygen (DO), conductivity (CON), salinity (SAL), turbidity (TUR), total dissolved solids (TDS), and pH measured in the field; color (COL), alkalinity (ALK), hardness (HAR), biochemical oxygen demand (BOD5), chemical oxygen demand (COD), chloride (CHL), phosphate (PHO), ammonia (AMM), nitrate (NITA), nitrite (NITI), total phosphorus (TP), lead (Pb), chromium (Cr), iron (Fe), bromine (Br), total coliforms (TCO), and thermotolerant coliforms (THC) determined in the laboratory. On the other hand, some heavy metals were considered in the study because, in the area, there is metallic and non-metallic extractive activity as well as some industries.
Sampling and sample preservation procedures (Table 2) were realized according to the National Protocol for monitoring the Quality of Superficial Water Resources [45] and analyses as per the methods proposed by APHA [46].

2.3. Evaluation of Water Pollution Index (WPI)

For the formulation of the water pollution indexes (WPI), the degree of relevance of each variable was identified through PCA/FA, selecting those with the highest factorial load and indicated in the Peruvian regulations: “ESQ: Environmental Standard Quality of the water, category 4: Conservation of the Aquatic Environment” [47]. The classification was according to the source of organic and inorganic pollution, and parameter weights ( W i ) which were obtained as per Equation (1).
W i = F l i i = 1 i = n F l i
where F l i is the factor load of each selected parameter, i = 1 i = n F l i is the sum of the factor loadings as per the classification.
Subsequently, each selected parameter’s nominal reason ( N r i ) was determined according to Equation (2), considering field/laboratory-measured and ESQ values.
N r i = C i C E S Q
where C i is the concentration of the selected and evaluated parameter; C E Q S is the concentration of the parameter established in the ESQ.
When the concentration of the evaluated parameter is greater than or equal to the concentration of the ESQ, the nominal ratio is equal to 1.
Condition: C i C   E S Q ;   N r i = 1 .
The WPI was formulated using the organic pollution index (OPI) and the inorganic pollution index (IPI).
O P I = N r i W i
I P I = N r i W i
Water pollution indexes were applied to evaluate the water quality of the high Andean River. The calculated WPI values were classified into five categories (Table 3) according to Ramírez et al. [34]. The scale makes it possible to quantify the degree of contamination of the waters for its general condition and not for specific contaminants.

2.4. Statistical Analysis

The normality of the data was tested using the Kolmogorov–Smirnov test [40]. Spearman’s correlation analysis was applied to determine the relationship between the parameters. The clustering of sampling points was performed through a CA, using the Ward method to evaluate the distance between clusters and the squared Euclidean distance as an index of proximity or similarity. The DA was used to assess spatial and temporal variations in water quality. The PCA/FA was performed to determine the factors and sources of pollution that affect water quality. The Kaiser–Meyer–Olkin (KMO) sphericity and Bartlett’s test [48] were previously applied to evaluate the effectiveness of the data in executing the PCA/FA. Origin Pro 2022b software (OriginLab Corporation, Northampton, MA, USA) was used, and 5% was used as the significance level.

3. Results and Discussion

3.1. Analysis of Water Quality Parameters

The physical water parameters (Figure 2) levels were high during the dry season, especially for COL, CON, SAL, and TDS, with average values of 91.67 PCU, 907.17 µS/cm, 0.46 PSU, and 453.00 mg/L, respectively. The TUR reported high levels during the rainy season, associated with increased flow and removal of particulate material [33,49]. The CON, SAL, and TDS presented high levels in the populated zone; TEM reported values with an increasing and varied trend during the rainy and dry seasons, respectively.
The chemical parameters of the water are shown in Figure 3; the DO reported levels higher than 5.00 mg/L except for points P6 and P7 of the dry season, which show the degree of pollution, demonstrating the behavior of rivers in urban areas [50]. The COD reported higher values than the BOD5; this would be due to the presence of degradable and oxidizable organic substances [51]; however, a limitation of the COD test is its inability to differentiate between biodegradable and biologically inert organic matter on its own [52]; regarding pH, neutral values were mostly reported. Although, slightly alkaline values were reported in the populated zone; this parameter is related to the toxicity of some compounds in the water [53]. The ALK and HAR reported high levels of up to 61.67 mg/L and 212.65 mg/L, respectively, while the basin headwater showed a decreasing trend; the variability of these parameters is subject to pH changes [50,54,55]. The presence of NITA was reported only during the rainy season, especially in the populated zone. Regarding the concentration of NITI and AMM, average values were 5.44 mg/L and 11.85 mg/L, respectively. The CHL levels in the water were high in the basin headwater and downstream of the populated zone; their presence may cause water and soil salinization, plant growth inhibition [56], and corrosion [57]. The PHO and TP concentrations were high in the populated zone with values of up to 3.53 mg/L and 0.99 mg/L, respectively; their increase in the water led to a rise in nutrients, causing irreversible damage to aquatic life [58].
The concentration of Br, Fe, Cr, and Pb (Figure 4) presented values of up to 0.28 ppm, 0.48 ppm, 64.00 ppb, and 1.20 ppb, respectively. The level of Cr and Pb indicates the extent to which industrial activities have developed in the study zone [59,60,61].
Heavy metals such as Cr and Pb bioaccumulate in the body. The effects of toxicity range from mild irritation to the eyes, nose, and skin to severe headaches, stomach pain, diarrhea, hematemesis, vomiting, and dizziness, to organ dysfunctions such as cirrhosis, necrosis, low blood pressure, hypertension, and gastrointestinal upset [62].
Regarding the Peruvian regulations, some chromium values exceed the limit (11 ppb), while lead is within the limit (2.5 ppb). The level of Cr and Pb indicates the extent to which industrial activities have developed in the study zone [59,61].
The presence of TCO and THC in the water (Figure 5) is indicative of pollution by human or animal fecal waste [49]; levels were high, especially during the dry season and in zones with higher population density, as a result of domestic effluents and the lack of wastewater collection and treatment infrastructure.
In general, it was observed that most of the parameters are within the limit established by Peruvian regulations [47], except for COL, DO, BOD5, AMM, pH, TP, Cr, and THC. However, no reference value exists for TUR, SAL, TDS, COD, NITI, PHO, CHL, ALK, Fe, Br, and TCO (Table 4).

3.2. Correlation of Water Quality Parameters

Most of the parameters were correlated, except CHL (Figure 6). Values of r > 0.99 were observed for CON, SAL, and TDS. These parameters would be associated with dissolved ions in the water due to evaporation and mineral weathering [63,64]. Likewise, a significant correlation was observed between COL and BOD5 (r = 0.71), TUR, and COD (r = 0.77), which are related to the organic and inorganic load from agricultural and domestic sources; similarly, for ALK and HAR (r = 0.92), which would be linked to the geology of the study zone.

3.3. Spatial Similarity and Site Clustering

The dendrogram showed the clustering of three groups with a similarity index of 60% (Figure 7). Cluster I comprised points P1, P2, and P3, which are low pollution (LP) sites located in the headwater of the basin, where there is no anthropogenic presence. Cluster II included sites P4, P5, and P8, considered medium polluted (MP) sites, located in zones dedicated to agricultural and livestock activities, and sites P6 and P7 were part of Cluster III, which are highly polluted sites (HP), directly receiving domestic and industrial wastewater discharges.

3.4. Spatial and Season Variation of River Water Quality

The spatial DA indicated that CON, NITI, HAR, Pb, Cr, and TCO are the parameters responsible for spatial variation (Figure 8). The evaluation showed that water CON was low in the LP zone with significant spatial variations, indicating that the dissolution of geological soil components and organic and inorganic substances introduced to the river channel caused an increase in water conductivity in the MP and HP zone. Likewise, the MP and HP sites reported high concentrations of HAR associated with cations in the water due to the study zone’s lithological origin and geological complexity [65]. The concentrations of Pb and Cr were high in the MP and HP zones, respectively, which is related to wastewater from mining and agricultural activities developed in the zone. This behavior is characteristic of zones of anthropogenic activity [59,60,61], while the presence of these metals in the LP zone could be due to their natural form in rocks or surface mineral grains that are mobilized by natural means or artificial recharge [66,67]. The presence of high concentrations of NITI in the MP zone would be associated with crop residues and nitrogen fertilizers [68,69]. The TCO levels were high at the HP zones, suggesting a critical level of microbial pollution. The spatial relationships between the variables showed more significant environmental pollution problems in the PM and HP zones.
The temporal AD showed that TDS, ALK, Br, and TCO are responsible for the variations (Figure 9), being higher in the dry season due to the concentration of organic and inorganic substances present in the water in a natural or anthropic form [50,70,71,72,73,74].

3.5. Identification of Source of Pollution

The KMO sphericity analysis was 0.62, and Bartlett’s test was significant (p = 0.00); therefore, the data are adequate to reduce the dimensionality of the information by PCA/FA. The PCA/FA with a normalized Varimax rotation identified three factors, which explained 66.85% of the total variance (Table 5). The first factor (F1) explained 38.73% of the total variance, presenting strong positive loadings (>0.70) for CON, SAL, TDS, ALK, HAR, Br, TP, and Pb. This F1 is related to natural sources of dissolution of geological components of the soil, especially inorganic ones such as anions and cations dissolved in the water due to the mineral weathering process or anthropogenic sources [32,75]. In addition, a Spearman’s correlation test applied to environmental parameters showed that TDS was significantly correlated with SAL, ALK, HAR, Br, TP, and Pb, indicating that these components are the principal source of TDS. The second factor (F2) accounted for 16.22% of the total variance, with moderate loads for COL, BOD5, TCO, and THC and a negative contribution of DO to this factor. This F2 represents the contributions of nutrients and organic matter from untreated domestic wastewater, effluents, and agricultural runoff. The negative contribution of DO to this factor is due to the increase in nutrients that raises the concentration of organic matter; therefore, the degradation of organic matter reduces the DO concentration [6,76]. The third factor (F3) shows 11.91% of the total variance and presents a heavy positive load for TUR, COD, and Cr. This F3 represents the sediments coming from erosion, suspended solids, and urban runoff responsible for the TUR of the water and a high concentration of COD; the contribution of Cr to this factor is an indicator of pollution from industrial activities [61].

3.6. Identification of Sources of Pollution

The results of the weights were calculated from Equation (1) and shown in Table 6. The factor loads were grouped into two sources of contamination. The inorganic source showed that CON presented the most significant weight, followed by Pb and Cr. While the organic source revealed that the BOD5, COL, and THC presented higher weights, followed by AMM, DO, and TP.
Other studies obtained the relative weights by combining physical, chemical, and microbiological parameters; for example, Khanoranga and Khalid [75] combined 21 parameters to calculate the relative weights, weighting the values according to the WHO standard to calculate the groundwater quality index. Dimri [49] used 11 parameters according to the drinking water quality standard to calculate the relative weights and calculated the water quality index for the Ganga River.
The values of the nominal reason are shown in Table 7. The nominal reason represents the scale of assessment of water contamination, which was obtained by dividing the concentration observed by the concentration regulated in the regulations. In terms of the evaluation, it was possible to appreciate values close to one, especially for TP, THC, BOD5, and chromium. Regarding temporality, the dry season showed high classification scales, which would be associated with the low flow of the river water that concentrates the pollutants. Furthermore, Khanoranga and Khalid [75] applied the quality rating scale to obtain a groundwater quality index.
The evaluation of water quality is shown in Figure 10. It was observed that the OPI values ranged from 0.25 to 0.78 during rains, indicating “low” to “high” pollution, and from 0.35 to 0.86 during the dry season, meaning “low” to “very high” pollution, evidencing slight anthropogenic incidence and highly contaminated areas, especially in the populated zone, which would be related to the presence of organic substances and decomposing plant material from domestic and agricultural activities [6,49,76,77]. The IPI presented mild biogenic contributions and notable anthropic activity in the populated zone, with values that fluctuated between 0.07 and 0.39 during the rainy season, indicating “none” and “low” pollution, and between 0.09 and 0.45 during the dry season, indicating “none” to “medium” pollution; this index would be indicative of industrial activities developed in the zone [59,60,61,66,67].

4. Conclusions

The study applied different multivariate statistical techniques to evaluate spatial and temporal variations and identify possible sources of contamination of surface water quality in the Chumbao sub-basin.
The AC grouped the eight sampling points into three seasonal groups with identical water quality characteristics. The DA substantially reduced both temporal and spatial data, and the AF/PCA allowed extracting and recognizing the factors responsible for changes in water quality.
The parameters with the most significant impact on water quality were identified, which allowed the formulation of the IPI constructed from the parameters CON, Cr, and Pb, and the OPI with the parameters DO, BOD5, AMM, TP, COL, and THC. The water quality of the high Andean River reported pollution levels between “none” and “medium” for the IPI and between “low” and “very high” for the OPI. The proposal of an ICO provides a water quality management instrument.
The indices can be applied to high Andean rivers with similar characteristics located at an altitude of at least 2500 m. Finally, the indices can be used as a management instrument to assess water quality.

Author Contributions

Conceptualization, B.S.R.-P., D.C.-Q. and C.A.L.-S.; data curation, B.S.R.-P. and A.M.S.-R.; methodology, B.S.R.-P., D.C.-Q. and C.A.L.-S.; software, Y.C.-Q., H.W.A.C., L.M.Z.-P. and F.T.-P.; validation, B.S.R.-P., D.C.-Q. and E.M.C.; formal analysis, B.S.R.-P., D.C.-Q., Y.C.-Q., F.T.-P., M.M.Z.-P., E.M.C. and L.A.S.-B.; investigation B.S.R.-P., D.C.-Q., A.M.S.-R., J.P.A.L., L.A.S.-B., H.P.-R., M.M.Z.-P., C.A.L.-S. and L.M.Z.-P.; resources, J.P.A.L. and K.C.-Q.; visualization, H.W.A.C. and H.P.-R.; writing—original draft preparation, B.S.R.-P. and D.C.-Q.; writing—review and editing B.S.R.-P., D.C.-Q. and C.A.L.-S.; supervision, B.S.R.-P., H.P.-R. and D.C.-Q.; project administration J.P.A.L. and K.C.-Q. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Data Availability Statement

The information displayed in this study is accessible in this article.

Acknowledgments

The authors are grateful to the Vice-Presidency of Research of the Jose Maria Arguedas National University for the use of the Water and Food Treatment Materials Research Laboratory.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. Mamun, M.; An, K.-G. Application of Multivariate Statistical Techniques and Water Quality Index for the Assessment of Water Quality and Apportionment of Pollution Sources in the Yeongsan River, South Korea. Int. J. Environ. Res. Public Health 2021, 18, 8268. [Google Scholar] [CrossRef] [PubMed]
  2. Choque-Quispe, D.; Froehner, S.; Palomino-Rincón, H.; Peralta-Guevara, D.E.; Barboza-Palomino, G.I.; Kari-Ferro, A.; Zamalloa-Puma, L.M.; Mojo-Quisani, A.; Barboza-Palomino, E.E.; Zamalloa-Puma, M.M.; et al. Proposal of a Water-Quality Index for High Andean Basins: Application to the Chumbao River, Andahuaylas, Peru. Water 2022, 14, 654. [Google Scholar] [CrossRef]
  3. Barakat, A.; El Baghdadi, M.; Rais, J.; Aghezzaf, B.; Slassi, M. Assessment of spatial and seasonal water quality variation of Oum Er Rbia River (Morocco) using multivariate statistical techniques. Int. Soil Water Conserv. Res. 2016, 4, 284–292. [Google Scholar] [CrossRef]
  4. Ligarda Samanez, C.A.; Choque Quispe, D.; Ramos Pacheco, B.S.; Peralta Guevara, D.E.; Moscoso Moscoso, E.; Rincon, H.P.; Carrión, M.L.H. The Influence of Anthropogenic Activities on the Concentration of Pesticides, Physicochemical and Microbiological Properties in the Chumbao River, Andahuaylas, Perú. Int. J. Adv. Sci. Eng. Inf. Technol. 2021, 11, 1977–1985. [Google Scholar] [CrossRef]
  5. Abdel-Satar, A.M.; Ali, M.H.; Goher, M.E. Indices of water quality and metal pollution of Nile River, Egypt. Egypt. J. Aquat. Res. 2017, 43, 21–29. [Google Scholar] [CrossRef]
  6. Varol, M. Use of water quality index and multivariate statistical methods for the evaluation of water quality of a stream affected by multiple stressors: A case study. Environ. Pollut. 2020, 266, 115417. [Google Scholar] [CrossRef]
  7. Zeinalzadeh, K.; Rezaei, E. Determining spatial and temporal changes of surface water quality using principal component analysis. J. Hydrol. Reg. Stud. 2017, 13, 1–10. [Google Scholar] [CrossRef]
  8. Wu, Z.; Wang, X.; Chen, Y.; Cai, Y.; Deng, J. Assessing river water quality using water quality index in Lake Taihu Basin, China. Sci. Total Environ. 2018, 612, 914–922. [Google Scholar] [CrossRef]
  9. Varol, M. Spatio-temporal changes in surface water quality and sediment phosphorus content of a large reservoir in Turkey. Environ. Pollut. 2020, 259, 113860. [Google Scholar] [CrossRef]
  10. Hajigholizadeh, M.; Melesse, A.M. Assortment and spatiotemporal analysis of surface water quality using cluster and discriminant analyses. Catena 2017, 151, 247–258. [Google Scholar] [CrossRef]
  11. Tian, Y.; Jiang, Y.; Liu, Q.; Dong, M.; Xu, D.; Liu, Y.; Xu, X. Using a water quality index to assess the water quality of the upper and middle streams of the Luanhe River, northern China. Sci. Total Environ. 2019, 667, 142–151. [Google Scholar] [CrossRef] [PubMed]
  12. Ustaoğlu, F.; Tepe, Y. Water quality and sediment contamination assessment of Pazarsuyu Stream, Turkey using multivariate statistical methods and pollution indicators. Int. Soil Water Conserv. Res. 2019, 7, 47–56. [Google Scholar] [CrossRef]
  13. Haji Gholizadeh, M.; Melesse, A.M.; Reddi, L. Water quality assessment and apportionment of pollution sources using APCS-MLR and PMF receptor modeling techniques in three major rivers of South Florida. Sci. Total Environ. 2016, 566–567, 1552–1567. [Google Scholar] [CrossRef]
  14. Mamun, M.; Kim, J.Y.; An, K.-G. Multivariate Statistical Analysis of Water Quality and Trophic State in an Artificial Dam Reservoir. Water 2021, 13, 186. [Google Scholar] [CrossRef]
  15. Singh, K.P.; Malik, A.; Sinha, S. Water quality assessment and apportionment of pollution sources of Gomti river (India) using multivariate statistical techniques—A case study. Anal. Chim. Acta 2005, 538, 355–374. [Google Scholar] [CrossRef]
  16. Varol, M.; Gökot, B.; Bekleyen, A.; Şen, B. Water quality assessment and apportionment of pollution sources of Tigris river (Turkey) using multivariate statistical techniques—A case study. River Res. Appl. 2012, 28, 1428–1438. [Google Scholar] [CrossRef]
  17. Akoto, O.; Adopler, A.; Tepkor, H.E.; Opoku, F. A comprehensive evaluation of surface water quality and potential health risk assessments of Sisa River, Kumasi. Groundw. Sustain. Dev. 2021, 15, 100654. [Google Scholar] [CrossRef]
  18. Oketola, A.A.; Adekolurejo, S.M.; Osibanjo, O.J.J.O.E.P. Water Quality Assessment of River Ogun Using Multivariate Statistical Techniques. J. Environ. Prot. 2013, 4, 466–479. [Google Scholar] [CrossRef] [Green Version]
  19. de Andrade Costa, D.; Soares de Azevedo, J.P.; dos Santos, M.A.; dos Santos Facchetti Vinhaes Assumpção, R. Water quality assessment based on multivariate statistics and water quality index of a strategic river in the Brazilian Atlantic Forest. Sci. Rep. 2020, 10, 22038. [Google Scholar] [CrossRef]
  20. Medeiros, A.C.; Faial, K.R.F.; do Carmo Freitas Faial, K.; da Silva Lopes, I.D.; de Oliveira Lima, M.; Guimarães, R.M.; Mendonça, N.M. Quality index of the surface water of Amazonian rivers in industrial areas in Pará, Brazil. Mar. Pollut. Bull. 2017, 123, 156–164. [Google Scholar] [CrossRef] [PubMed]
  21. Muniz, D.H.F.; Malaquias, J.V.; Lima, J.E.F.W.; Oliveira-Filho, E.C. Proposal of an irrigation water quality index (IWQI) for regional use in the Federal District, Brazil. Environ. Monit. Assess. 2020, 192, 607. [Google Scholar] [CrossRef]
  22. Pratama, M.A.; Immanuel, Y.D.; Marthanty, D.R. A Multivariate and Spatiotemporal Analysis of Water Quality in Code River, Indonesia. Sci. World J. 2020, 2020, 8897029. [Google Scholar] [CrossRef] [PubMed]
  23. Wrublack, S.C.; Mercante, E.; Vilas, M.A.; Prudente, V.H.R.; y Silva, J. Variation of water quality along a river in agricultural watershed with support of geographic information systems and multivariate analysis. Eng. Agrícola 2018, 38, 74–81. [Google Scholar] [CrossRef] [Green Version]
  24. Alves, J.P.H.; Fonseca, L.C.; Chielle, R.S.A.; Macedo, L.C.B. Monitoring water quality of the Sergipe River basin: An evaluation using multivariate data analysis. Braz. J. Water Resour. 2018, 23. [Google Scholar] [CrossRef] [Green Version]
  25. Rahman, K.; Barua, S.; Imran, H.M. Assessment of water quality and apportionment of pollution sources of an urban lake using multivariate statistical analysis. Clean. Eng. Technol. 2021, 5, 100309. [Google Scholar] [CrossRef]
  26. Cecconello, S.T.; Centeno, L.N.; Guedes, H.A.S.; Cecconello, S.T.; Centeno, L.N.; Guedes, H.A.S. Water quality index modified by using multivariate analysis: A case study of Pelotas Stream, RS, Brazil. Eng. Sanit. E Ambient. 2018, 23, 973–978. [Google Scholar] [CrossRef]
  27. Silva, M.I.; Gonçalves, A.M.L.; Lopes, W.A.; Lima, M.T.V.; Costa, C.T.F.; Paris, M.; Firmino, P.R.A.; De Paula Filho, F.J. Assessment of groundwater quality in a Brazilian semiarid basin using an integration of GIS, water quality index and multivariate statistical techniques. J. Hydrol. 2021, 598, 126346. [Google Scholar] [CrossRef]
  28. Liu, J.; Zhang, D.; Tang, Q.; Xu, H.; Huang, S.; Shang, D.; Liu, R. Water quality assessment and source identification of the Shuangji River (China) using multivariate statistical methods. PLoS ONE 2021, 16, e0245525. [Google Scholar] [CrossRef]
  29. Liu, G.; Ma, F.; Liu, G.; Zhao, H.; Guo, J.; Cao, J. Application of Multivariate Statistical Analysis to Identify Water Sources in a Coastal Gold Mine, Shandong, China. Sustainability 2019, 11, 3345. [Google Scholar] [CrossRef] [Green Version]
  30. Zhang, X.; Wang, Q.; Liu, Y.; Wu, J.; Yu, M. Application of multivariate statistical techniques in the assessment of water quality in the Southwest New Territories and Kowloon, Hong Kong. Environ. Monit. Assess. 2011, 173, 17–27. [Google Scholar] [CrossRef]
  31. Lee, K.-H.; Kang, T.-W.; Ryu, H.-S.; Hwang, S.-H.; Kim, K. Analysis of spatiotemporal variation in river water quality using clustering techniques: A case study in the Yeongsan River, Republic of Korea. Environ. Sci. Pollut. Res. 2020, 27, 29327–29340. [Google Scholar] [CrossRef] [PubMed]
  32. Elumalai, V.; Nethononda, V.G.; Manivannan, V.; Rajmohan, N.; Li, P.; Elango, L. Groundwater quality assessment and application of multivariate statistical analysis in Luvuvhu catchment, Limpopo, South Africa. J. Afr. Earth Sci. 2020, 171, 103967. [Google Scholar] [CrossRef]
  33. Alam, R.; Ahmed, Z.; Seefat, S.M.; Nahin, K.T.K. Assessment of surface water quality around a landfill using multivariate statistical method, Sylhet, Bangladesh. Environ. Nanotechnol. Monit. Manag. 2021, 15, 100422. [Google Scholar] [CrossRef]
  34. Ramirez, A.; Restrepo, R.; Cardeñosa, M. Índices de contaminación para caracterización de aguas continentales y vertimientos. Formulaciones. Cienc. Tecnol. Futuro 1999, 1, 89–99. [Google Scholar]
  35. Uddin, M.G.; Nash, S.; Olbert, A.I. A review of water quality index models and their use for assessing surface water quality. Ecol. Indic. 2021, 122, 107218. [Google Scholar] [CrossRef]
  36. Akhtar, N.; Ishak, M.I.; Ahmad, M.I.; Umar, K.; Md Yusuff, M.S.; Anees, M.T.; Qadir, A.; Ali Almanasir, Y.K. Modification of the Water Quality Index (WQI) Process for Simple Calculation Using the Multi-Criteria Decision-Making (MCDM) Method: A Review. Water 2021, 13, 905. [Google Scholar] [CrossRef]
  37. Lumb, A.; Sharma, T.C.; Bibeault, J.-F. A Review of Genesis and Evolution of Water Quality Index (WQI) and Some Future Directions. Water Qual. Expo. Health 2011, 3, 11–24. [Google Scholar] [CrossRef]
  38. Horton, R.K. An index number system for rating water quality. J. Water Pollut. Control Fed. 1965, 37, 300–306. [Google Scholar]
  39. Tiri, A.; Lahbari, N.; Boudoukha, A. Assessment of the quality of water by hierarchical cluster and variance analyses of the Koudiat Medouar Watershed, East Algeria. Appl. Water Sci. 2017, 7, 4197–4206. [Google Scholar] [CrossRef] [Green Version]
  40. Hossain, M.; Patra, P.K. Water pollution index—A new integrated approach to rank water quality. Ecol. Indic. 2020, 117, 106668. [Google Scholar] [CrossRef]
  41. Choque-Quispe, D.; Ligarda-Samanez, C.A.; Solano-Reynoso, A.M.; Ramos-Pacheco, B.S.; Quispe-Quispe, Y.; Choque-Quispe, Y.; Kari-Ferro, A. Índice de calidad de agua en la microcuenca altoandina del río Chumbao, Andahuaylas, Apurímac, Perú. Tecnol. Cienc. Agua 2021, 12, 37–73. [Google Scholar] [CrossRef]
  42. Choque-Quispe, D.; Ramos-Pacheco, B.S.; Ligarda-Samanez, C.A.; Solano-Reynoso, A.M.; Correa-Cuba, O.; Quispe-Quispe, Y.; Choque-Quispe, Y. Water pollution index of high Andean micro-basin of the Chumbao River, Andahuaylas, Peru. Rev. Fac. Ing. Univ. Antioq. 2021, 20–28. [Google Scholar] [CrossRef]
  43. Custodio, M.; Peñaloza, R. Data on the spatial and temporal variability of physical-chemical water quality indicators of the Cunas River, Peru. Chem. Data Collect. 2021, 33, 100672. [Google Scholar] [CrossRef]
  44. Choque-Quispe, D.; Ligarda-Samanez, C.A.; Ramos-Pacheco, B.S.; Solano-Reynoso, A.M.; Quispe-Quispe, Y. Cafeína y barrido UV-Vis y el índice de calidad de agua en la microcuenca altoandina del río Chumbao, Andahuaylas, Apurímac, Perú. J. Tecnol. Química 2019, 39, 619–637. [Google Scholar]
  45. Ana, A.N.d.A. Autoridad Nacional del Agua—Protocolo Nacional para el Monitoreo de la Calidad de Recursos Hídricos Superficiales 2016. Available online: https://www.ana.gob.pe/publicaciones/protocolo-nacional-para-el-monitoreo-de-la-calidad-de-los-recursos-hidricos-0 (accessed on 18 January 2023).
  46. Baird, R.; Bridgewater, L. Standard Methods for the Examination of Water and Wastewater, 23rd ed.; American Public Health Association: Washington, DC, USA, 2017. [Google Scholar]
  47. Minam, M.d.A. Ministerio del Ambiente—Estándar de Calidad Ambiental del Agua Decreto Supremo N°004-2017-MINAM. Available online: https://www.minam.gob.pe/disposiciones/decreto-supremo-n-004-2017-minam/ (accessed on 18 January 2023).
  48. Noori, R.; Sabahi, M.S.; Karbassi, A.R.; Baghvand, A.; Taati Zadeh, H. Multivariate statistical analysis of surface water quality based on correlations and variations in the data set. Desalination 2010, 260, 129–136. [Google Scholar] [CrossRef]
  49. Dimri, D.; Daverey, A.; Kumar, A.; Sharma, A. Monitoring water quality of River Ganga using multivariate techniques and WQI (Water Quality Index) in Western Himalayan region of Uttarakhand, India. Environ. Nanotechnol. Monit. Manag. 2021, 15, 100375. [Google Scholar] [CrossRef]
  50. Bozorg-Haddad, O.; Delpasand, M.; Loáiciga, H.A. 10—Water quality, hygiene, and health. In Economical, Political, and Social Issues in Water Resources; Bozorg-Haddad, O., Ed.; Elsevier: Amsterdam, The Netherlands, 2021; pp. 217–257. [Google Scholar]
  51. Jain, S.K.; Singh, V.P. Chapter 4—Statistical Techniques for Data Analysis. In Developments in Water Science; Jain, S.K., Singh, V.P., Eds.; Elsevier: Amsterdam, The Netherlands, 2003; Volume 51, pp. 207–276. [Google Scholar]
  52. Kosseva, M.R. Chapter 4—Sources, characteristics, treatment, and analyses of animal-based food wastes. In Food Industry Wastes, 2nd ed.; Kosseva, M.R., Webb, C., Eds.; Academic Press: Cambridge, MA, USA, 2020; pp. 67–85. [Google Scholar]
  53. Boyd, C.E.; Tucker, C.S.; Somridhivej, B. Alkalinity and Hardness: Critical but Elusive Concepts in Aquaculture. J. World Aquac. Soc. 2016, 47, 6–41. [Google Scholar] [CrossRef]
  54. Martínez-Alvarez, V.; González-Ortega, M.J.; Martin-Gorriz, B.; Soto-García, M.; Maestre-Valero, J.F. 14—Seawater desalination for crop irrigation—Current status and perspectives. In Emerging Technologies for Sustainable Desalination Handbook; Gude, V.G., Ed.; Butterworth-Heinemann: Oxford, UK, 2018; pp. 461–492. [Google Scholar]
  55. Trick, J.K.; Stuart, M.; Reeder, S. Chapter 3—Contaminated Groundwater Sampling and Quality Control of Water Analyses. In Environmental Geochemistry, 2nd ed.; De Vivo, B., Belkin, H.E., Lima, A., Eds.; Elsevier: Amsterdam, The Netherlands, 2018; pp. 25–45. [Google Scholar]
  56. Li, Y.; Yang, Z.; Yang, K.; Wei, J.; Li, Z.; Ma, C.; Yang, X.; Wang, T.; Zeng, G.; Yu, G.; et al. Removal of chloride from water and wastewater: Removal mechanisms and recent trends. Sci. Total Environ. 2022, 821, 153174. [Google Scholar] [CrossRef]
  57. Brandt, M.J.; Johnson, K.M.; Elphinston, A.J.; Ratnayaka, D.D. Chapter 7—Chemistry, Microbiology and Biology of Water. In Twort’s Water Supply, 7th ed.; Brandt, M.J., Johnson, K.M., Elphinston, A.J., Ratnayaka, D.D., Eds.; Butterworth-Heinemann: Boston, MA, USA, 2017; pp. 235–321. [Google Scholar]
  58. Das, P.; Chetry, B.; Paul, S.; Bhattacharya, S.S.; Nath, P. Detection and quantification of phosphate in water and soil using a smartphone. Microchem. J. 2022, 172, 106949. [Google Scholar] [CrossRef]
  59. Abdulla, M. Chapter 13—Lead. In Essential and Toxic Trace Elements and Vitamins in Human Health; Prasad, A.S., Brewer, G.J., Eds.; Academic Press: Cambridge, MA, USA, 2020; pp. 181–191. [Google Scholar]
  60. Roy, S.; Edwards, M.A. Preventing another lead (Pb) in drinking water crisis: Lessons from the Washington D.C. and Flint MI contamination events. Curr. Opin. Environ. Sci. Health 2019, 7, 34–44. [Google Scholar] [CrossRef]
  61. Sarkar, M.; Rahman, A.K.M.L.; Bhoumik, N.C. Remediation of chromium and copper on water hyacinth (E. crassipes) shoot powder. Water Resour. Ind. 2017, 17, 1–6. [Google Scholar] [CrossRef]
  62. Inyinbor Adejumoke, A.; Adebesin Babatunde, O.; Oluyori Abimbola, P.; Adelani-Akande Tabitha, A.; Dada Adewumi, O.; Oreofe Toyin, A. Water Pollution: Effects, Prevention, and Climatic Impact. In Water Challenges of an Urbanizing World; Matjaž, G., Ed.; IntechOpen: Rijeka, Croatia, 2018; pp. 33–47. [Google Scholar]
  63. Rahman, S.S.; Hossain, M.M. Gulshan Lake, Dhaka City, Bangladesh, an onset of continuous pollution and its environmental impact: A literature review. Sustain. Water Resour. Manag. 2019, 5, 767–777. [Google Scholar] [CrossRef]
  64. Thirumalini, S.; Joseph, K. Correlation between electrical conductivity and total dissolved solids in natural waters. Malays. J. Sci. 2009, 28, 55–61. [Google Scholar] [CrossRef]
  65. Segnini, S.; Chacón, M.M.J.E. Caracterización fisicoquímica del hábitat interno y ribereño de los ríos andinos en la cordillera de Mérida, Venezuela. An. Acad. Bras. Ciências 2005, 18, 38–61. [Google Scholar]
  66. Mani Tripathi, S.; Chaurasia, S. Detection of Chromium in surface and groundwater and its bio-absorption using bio-wastes and vermiculite. Eng. Sci. Technol. Int. J. 2020, 23, 1153–1161. [Google Scholar] [CrossRef]
  67. Izbicki, J.A.; Wright, M.T.; Seymour, W.A.; McCleskey, R.B.; Fram, M.S.; Belitz, K.; Esser, B.K. Cr(VI) occurrence and geochemistry in water from public-supply wells in California. Appl. Geochem. 2015, 63, 203–217. [Google Scholar] [CrossRef] [Green Version]
  68. Bendicho, C.; Lavilla, I. WATER ANALYSIS|Sewage. In Encyclopedia of Analytical Science, 2nd ed.; Worsfold, P., Townshend, A., Poole, C., Eds.; Elsevier: Oxford, UK, 2005; pp. 300–307. [Google Scholar]
  69. Verma, P.; Ratan, J.K. Chapter 5—Assessment of the negative effects of various inorganic water pollutants on the biosphere—An overview. In Inorganic Pollutants in Water; Devi, P., Singh, P., Kansal, S.K., Eds.; Elsevier: Amsterdam, The Netherlands, 2020; pp. 73–96. [Google Scholar]
  70. Adams, F.V.; Wakaso, A.I.; Daramola, M.O.; Oluwasina, O.O.; Mulaba-Bafubiandi, A.F.; Joshua, M.O.; Chukwuneke, C.E.; O’donnell, S.P. 11—Remediation of oil-contaminated water for reuse using polymeric nanocomposites. In Water Engineering Modeling and Mathematic Tools; Samui, P., Bonakdari, H., Deo, R., Eds.; Elsevier: Amsterdam, The Netherlands, 2021; pp. 213–234. [Google Scholar]
  71. Mattson, M.D. Alkalinity of Freshwater. In Reference Module in Earth Systems and Environmental Sciences; Elsevier: Amsterdam, The Netherlands, 2014. [Google Scholar]
  72. Chanda, S.; Mehendale, H.M. Bromine. In Encyclopedia of Toxicology, 2nd ed.; Wexler, P., Ed.; Elsevier: New York, NY, USA, 2005; pp. 342–344. [Google Scholar]
  73. von Glasow, R.; Hughes, C. BIOGEOCHEMICAL CYCLES|Bromine. In Encyclopedia of Atmospheric Sciences, 2nd ed.; North, G.R., Pyle, J., Zhang, F., Eds.; Academic Press: Oxford, UK, 2015; pp. 194–200. [Google Scholar]
  74. Winid, B. Bromine and water quality—Selected aspects and future perspectives. Appl. Geochem. 2015, 63, 413–435. [Google Scholar] [CrossRef]
  75. Khanoranga; Khalid, S. An assessment of groundwater quality for irrigation and drinking purposes around brick kilns in three districts of Balochistan province, Pakistan, through water quality index and multivariate statistical approaches. J. Geochem. Explor. 2019, 197, 14–26. [Google Scholar] [CrossRef]
  76. Varol, M.; Li, S. Biotic and abiotic controls on CO2 partial pressure and CO2 emission in the Tigris River, Turkey. Chem. Geol. 2017, 449, 182–193. [Google Scholar] [CrossRef]
  77. Zobkov, M.B.; Zobkova, M.V. New spectroscopic method for true color determination in natural water with high agreement with visual methods. Water 2020, 177, 115773. [Google Scholar] [CrossRef]
Figure 1. Study area Chumbao Sub-basin.
Figure 1. Study area Chumbao Sub-basin.
Water 15 02662 g001
Figure 2. Values of physical parameters: (a) Color, (b) Turbidity, (c) Conductivity, (d) Salinity, (e) TDS, (f) Temperature.
Figure 2. Values of physical parameters: (a) Color, (b) Turbidity, (c) Conductivity, (d) Salinity, (e) TDS, (f) Temperature.
Water 15 02662 g002
Figure 3. Values of chemical parameters: (a) DO: Dissolved oxygen, (b) BOD: Biochemical oxygen demand, (c) COD: Chemical oxygen demand, (d) pH, (e) Hardness, (f) Alkalinity, (g) Nitrite, (h) Nitrate, (i) Ammonia, (j) Chloride, (k) Phosphate, (l) Total phosphorus.
Figure 3. Values of chemical parameters: (a) DO: Dissolved oxygen, (b) BOD: Biochemical oxygen demand, (c) COD: Chemical oxygen demand, (d) pH, (e) Hardness, (f) Alkalinity, (g) Nitrite, (h) Nitrate, (i) Ammonia, (j) Chloride, (k) Phosphate, (l) Total phosphorus.
Water 15 02662 g003
Figure 4. Values of: (a) Bromine, (b) Iron, (c) Chromium, (d) Lead.
Figure 4. Values of: (a) Bromine, (b) Iron, (c) Chromium, (d) Lead.
Water 15 02662 g004
Figure 5. Values of microbiological parameters: (a) Total coliforms, (b) Thermotolerant coliforms.
Figure 5. Values of microbiological parameters: (a) Total coliforms, (b) Thermotolerant coliforms.
Water 15 02662 g005
Figure 6. Correlation of water quality parameters of the high Andean River; X is not significant.
Figure 6. Correlation of water quality parameters of the high Andean River; X is not significant.
Water 15 02662 g006
Figure 7. Dendrogram of sampling points of the high Andean River.
Figure 7. Dendrogram of sampling points of the high Andean River.
Water 15 02662 g007
Figure 8. Spatial variations of: (a) Conductivity, (b) Hardness, (c) Lead, (d) Chromium, (e) Nitrite, (f) Total coliforms.
Figure 8. Spatial variations of: (a) Conductivity, (b) Hardness, (c) Lead, (d) Chromium, (e) Nitrite, (f) Total coliforms.
Water 15 02662 g008
Figure 9. Season variations of: (a) TDS, (b) Alkalinity, (c) Bromine, (d) Total coliforms.
Figure 9. Season variations of: (a) TDS, (b) Alkalinity, (c) Bromine, (d) Total coliforms.
Water 15 02662 g009
Figure 10. Water pollution index of the high Andean River.
Figure 10. Water pollution index of the high Andean River.
Water 15 02662 g010
Table 1. Sampling points.
Table 1. Sampling points.
Sampling PointsAltitude (m)ReferenceCoordinatesCharacteristics of the AreaReferential Photo
SouthWest
P14079River headwater13°46′38.4″073°15′32.3″Water collecting basin/native flora and faunaWater 15 02662 i001
P23184Hydroelectric13°41′10.9″073°20′19.7″Water collection basin/limited agriculture and grazingWater 15 02662 i002
P32978Suylluhuacca bridge13°39′23.4″073°21′30.7″Limited urbanization, agriculture, and intense grazingWater 15 02662 i003
P42916Andahuaylas coliseum13°39′33.2″073°22′38.2″Increasing urbanization, limited agriculture and grazing, limited urban industryWater 15 02662 i004
P52872Engineering barracks13°39′37.0″073°23′52.7″High urbanization and limited urban industryWater 15 02662 i005
P62807GREMAR college13°39′27.4″073°25′50.8″High urbanization, limited agriculture, and grazingWater 15 02662 i006
P72767Chihuampata bridge13°38′17.0″073°27′10.6″Limited urbanization, agriculture, and intense grazingWater 15 02662 i007
P82572Posoccoy bridge13°35′26.4″073°27′00.8″Agriculture and intense grazingWater 15 02662 i008
Table 2. Water Quality evaluation methods.
Table 2. Water Quality evaluation methods.
ParameterMethodReference
ColorSpectrophotometric2120 B Standard Methods
TurbiditySelective electrode (NFU)User manual, Multiparameter
ConductivitySelective electrode (Conductometer)User manual, Multiparameter
SalinitySelective electrode (Conductometer)2520 B Standard Methods
TDSSelective electrode (Conductometer)2540 C Standard Methods
TemperatureSelective electrode (thermometer)User manual, Multiparameter
AlkalinitySpectrophotometricUser manual, Photometer
HardnessSpectrophotometricUser manual, Photometer
ChlorideChloride selective electrode (ISE)User manual, Multiparameter
pHPotentiometricUser manual, Multiparameter
AmmoniaAmmonia selective electrode (ISE)4500-NH3 D Standard Methods
NitriteSpectrophotometricUser manual, Photometer
NitrateNitrate selective electrode (ISE)User manual, Multiparameter
PhosphateSpectrophotometricUser manual, Photometer
DOSelective electrode (oximetry)User manual, Multiparameter
BODRespirometry/manometric4500-0C y 5210 B Standard Methods
CODSpectrophotometricUser manual, Photometer
Total phosphorusSpectrophotometricUser manual, Photometer
ChromiumSpectrophotometricUser manual, Photometer
LeadSpectrophotometricUser manual, ICP-OES
IronSpectrophotometricUser manual, Photometer
BromineSpectrophotometricUser manual, Photometer
Total coliformsFermentation9221 B y 9221C Standard Methods
Thermotolerant coliformsThermotolerant coliform 9221 E Standard Method
Table 3. Water pollution index classification.
Table 3. Water pollution index classification.
WPIPollutionColor ScaleCharacterization
0.0–0.2NoneBluePure waters, perhaps with biogenic contributions
>0.2–0.4LowGreenMild anthropic incidence
>0.4–0.6MediumYellowNotable anthropic activity
>0.6–0.8HighOrangeImportant incidence of pollution
>0.8–1.0Very highRedHighly polluted areas
Table 4. Statistical summary of water quality parameters of the high Andean River.
Table 4. Statistical summary of water quality parameters of the high Andean River.
ParametersNMinMaxMeanSDCVESQUnits
Color960.00172.0036.9636.0897.6220PCU
Turbidity960.60194.6049.4945.9792.89NANTU
Conductivity9627.00917.00302.68290.6896.031000µs/cm
Salinity960.010.460.150.1495.36---PSU
TDS9613.00471.00153.01146.8695.98NAmg/L
Temperature964.9922.9614.733.8626.223°C
DO962.188.726.381.5123.595mg/L
BOD5960.00292.0032.2762.20192.7710mg/L
COD960.00330.0057.0277.77136.39NAmg/L
Nitrate960.004.870.300.90305.9913mg/L
Nitrite960.0010.081.162.55220.67NAmg/L
Phosphate960.045.621.131.14101.47NAmg/L
Ammonia960.0020.892.054.72229.880.88mg/L
Chloride966.1080.2029.0517.4960.19NAmg/L
Alkalinity962.9074.4030.1219.2463.86NAmg/L
Hardness966.30256.6078.7861.0977.55NAmg/L
pH967.139.347.970.445.576.5–9.0
Total phosphorus960.001.400.370.3492.350.05mg/L
Lead960.001.400.450.4498.892.5ppb
Chromium960.0083.0018.7018.0996.7311ppb
Iron960.010.610.310.1755.91NAppm
Bromine960.000.350.090.0881.21NAppm
Total coliforms960.004.06 × 1082.57 × 1078.18 × 1073.19 × 102NAMPN/100 mL
Thermotolerant coliforms960.001.47 × 1061.75 × 1053.02 × 1051.72 × 1022000MPN/100 mL
N is the data number; Min is the minimum value; Max is the maximum value; SD is the standard deviation; CV is the coefficient of variation; ESQ: Environmental Standard Quality of the water, category 4: Conservation of the Aquatic Environment; NA is Not applicable.
Table 5. Factor loadings (Varimax normalized).
Table 5. Factor loadings (Varimax normalized).
ParametersF1F2F3
COL−0.030.87 *0.19
TUR0.220.060.85 *
CON0.94 *0.300.03
SAL0.95 *0.290.04
TDS0.94 *0.300.03
TEM0.520.560.19
DO0.11−0.720.08
BOD50.170.89 *0.04
COD0.240.170.73 *
NITA−0.08−0.180.66
NITI0.580.22−0.28
PHO0.460.60−0.11
AMM0.390.82 *−0.09
CHL0.43−0.11−0.51
ALK0.83 *0.030.40
HAR0.86 *0.040.15
pH0.32−0.260.00
TP0.70 *0.140.08
Pb0.70 *−0.060.33
Cr0.090.360.70 *
Fe−0.210.17−0.45
Br0.75 *0.170.17
TCO0.170.92 *−0.09
THC0.320.86 *0.23
Eigenvalue9.293.892.86
%Total variance38.7316.2211.91
Cumulative %38.7354.9566.85
* Indicates factor loading > 0.7.
Table 6. Weights of water quality parameters.
Table 6. Weights of water quality parameters.
Source of PollutionParametersFactor Loading Weight   ( W i )
InorganicCON0.940.40
Pb0.700.30
Cr0.700.30
Total2.341.00
OrganicDO0.720.15
BOD50.890.18
AMM0.820.17
TP0.700.14
COL0.870.18
THC0.860.18
Total4.861.00
Table 7. Nominal reason water quality parameters.
Table 7. Nominal reason water quality parameters.
Sampling PointsSeasonDOBOD5AMMTPCOLTHCCONPbCr
P1Rainy0.840.140.040.270.300.000.030.000.20
P2Rainy0.830.150.010.330.300.000.030.000.89
P3Rainy0.810.130.001.000.310.000.010.001.00
P4Rainy0.820.260.151.000.301.000.050.251.00
P5Rainy0.811.000.081.000.311.000.030.201.00
P6Rainy0.851.000.121.000.291.000.050.151.00
P7Rainy0.731.000.661.000.341.000.070.151.00
P8Rainy0.671.000.411.000.371.000.030.271.00
P1Dry0.780.000.211.000.320.000.010.040.26
P2Dry0.720.000.021.000.350.000.020.010.67
P3Dry0.651.000.071.000.391.000.020.080.71
P4Dry0.871.001.001.000.291.000.080.361.00
P5Dry0.611.001.001.000.411.000.030.331.00
P6Dry1.001.001.001.000.201.000.090.301.00
P7Dry1.001.001.001.000.221.000.040.251.00
P8Dry0.620.701.001.000.411.000.010.481.00
Disclaimer/Publisher’s Note: The statements, opinions and data contained in all publications are solely those of the individual author(s) and contributor(s) and not of MDPI and/or the editor(s). MDPI and/or the editor(s) disclaim responsibility for any injury to people or property resulting from any ideas, methods, instructions or products referred to in the content.

Share and Cite

MDPI and ACS Style

Ramos-Pacheco, B.S.; Choque-Quispe, D.; Ligarda-Samanez, C.A.; Solano-Reynoso, A.M.; Choque-Quispe, Y.; Aguirre Landa, J.P.; Agreda Cerna, H.W.; Palomino-Rincón, H.; Taipe-Pardo, F.; Zamalloa-Puma, M.M.; et al. Water Pollution Indexes Proposal for a High Andean River Using Multivariate Statistics: Case of Chumbao River, Andahuaylas, Apurímac. Water 2023, 15, 2662. https://0-doi-org.brum.beds.ac.uk/10.3390/w15142662

AMA Style

Ramos-Pacheco BS, Choque-Quispe D, Ligarda-Samanez CA, Solano-Reynoso AM, Choque-Quispe Y, Aguirre Landa JP, Agreda Cerna HW, Palomino-Rincón H, Taipe-Pardo F, Zamalloa-Puma MM, et al. Water Pollution Indexes Proposal for a High Andean River Using Multivariate Statistics: Case of Chumbao River, Andahuaylas, Apurímac. Water. 2023; 15(14):2662. https://0-doi-org.brum.beds.ac.uk/10.3390/w15142662

Chicago/Turabian Style

Ramos-Pacheco, Betsy S., David Choque-Quispe, Carlos A. Ligarda-Samanez, Aydeé M. Solano-Reynoso, Yudith Choque-Quispe, John Peter Aguirre Landa, Henrry W. Agreda Cerna, Henry Palomino-Rincón, Fredy Taipe-Pardo, Miluska M. Zamalloa-Puma, and et al. 2023. "Water Pollution Indexes Proposal for a High Andean River Using Multivariate Statistics: Case of Chumbao River, Andahuaylas, Apurímac" Water 15, no. 14: 2662. https://0-doi-org.brum.beds.ac.uk/10.3390/w15142662

Note that from the first issue of 2016, this journal uses article numbers instead of page numbers. See further details here.

Article Metrics

Back to TopTop