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Article

Isothermal Kinetic Analysis of the Thermal Decomposition of Wood Chips from an Apple Tree

1
Department of Transport and Handling, Faculty of Engineering, Slovak University of Agriculture in Nitra, Tr. A. Hlinku 2, 949 76 Nitra, Slovak
2
Department of Agricultural, Food and Environmental Engineering, Faculty of Agronomy, Mendel University in Brno, Zemědělská 1, 613 00 Brno, Czech Republic
3
Department of Industrial Engineering and Informatics, Faculty of Manufacturing Technologies, Technical University of Košice, Bayerova 1, 080 01 Prešov, Slovak
4
Central Control and Testing Institute in Agriculture, Letná 3, 041 39 Košice, Slovak
*
Author to whom correspondence should be addressed.
Submission received: 23 October 2020 / Revised: 11 January 2021 / Accepted: 19 January 2021 / Published: 21 January 2021

Abstract

:
The thermal decomposition of wood chips from an apple tree is studied in a static air atmosphere under isothermal conditions. Based on the thermogravimetric analysis, the values of the apparent activation energy and pre-exponential factor are 34 ± 3 kJ mol−1 and 391 ± 2 min−1, respectively. These results have also shown that this process can be described by the rate of the first-order chemical reaction. This reaction model is valid only for a temperature range of 250–290 °C, mainly due to the lignin decomposition. The obtained results are used for kinetic prediction, which is compared with the measurement. The results show that the reaction is slower at higher values of degree of conversion, which is caused by the influence of the experimental condition. Nevertheless, the obtained kinetic parameters could be used for the optimization of the combustion process of wood chips in small-scale biomass boilers.

1. Introduction

Nowadays, all kinds of human activity are directly or indirectly related to the use of different types of energy. With the rise of living standards and the rise of the world population, the overall energy demand in the world is still growing. Global environmental issues and the extraction of fossil fuels pose serious problems for energy consumption. Environmentally friendly energy technologies and the transition to non-fossil resources of energy, such as renewable energy sources, are expected, and seem to be very promising.
Apple trees are important crops, accounting for the production of more than 80 million tons worldwide [1,2]. They are commonly grown in various regions where the climate is particularly favourable for fruit quality [2]. Fruit trees also have natural enemies, including parasitoids, predators, and pathogens [3]. Therefore, the infected trees can be used as a renewable energy source, for example in small-scale biomass boilers. However, to use the woody biomass as an energy source, it is necessary to use it rationally and in a sustainable way [4,5,6]. On the other hand, there are still some problems in current biomass combustion furnaces, but where a kinetic analysis is a suitable tool to solve them [7,8].
Various studies [9,10,11,12,13,14,15] observed that the region of the thermal decomposition of the main wood constituents, such as hemicelluloses, cellulose, and lignin, can be divided into two steps. The first point of view states that in the temperature range of ~200–400 °C, the combination of total hemicellulose and cellulose decomposition with partial lignin decomposition occurs. The second step could be described as the decomposition of the remaining lignin and the combustion of char residues [9,10]. The reason why lignin decomposes slowly under the whole thermal decomposition temperature range is that it contains an aromatic matrix, which itself increases the degree of the condensation reaction [16,17,18]. Decomposition of lignin from different origins were observed in the study by Brodin et al. [19] and the conclusion is that the loss of ~40% took place in the temperature range 200–600 °C, with a maximum in material loss at ~400 °C.
On the other hand, the overall thermal decomposition and the reaction behaviour depends on the elementary constituents. These processes have been studied on several types of biomass; however, for apple tree biomass, it should be described more precisely [20].
The studies [11,12,13,14,15] also assumed a two-step process, were the first step can be described as volatilization of the main constituents and the second step can be characterized as combustion of the char residue. Along with that, an interaction between the components during the thermal decomposition may occur under certain conditions [21,22,23]. Due to the complex composition and structure of lignocellulosic materials, the thermal decomposition could be affected by various factors. For more information regarding these factors, we recommended some of the previous studies. We would like to note that mainly the chemical composition, particle size, and isothermal regime influence the thermal decomposition kinetics [12,14,24,25].
Numerous research studies have been performed in order to determine the kinetic triplet (activation energy, pre-exponential factor, and reaction model) of the processes that occurs during thermal treatment of various woody biomass. In the case of the reaction model, it is generally assumed that the first-order reaction (f(α) = (1−α)), where α stands for a degree of conversion, is suitable for the description of the thermal decomposition of various kinds of woody biomass [15]. On the other hand, some studies [26,27,28,29] use the reaction order model (f(α) = (1−α)n), where n is the reaction order. Another approach was used in [13,14], where the thermal decomposition was divided into two separated reactions and each of them was also described by the first-order reaction model.
This study focuses on the kinetic analysis of the thermal decomposition of woody biomass from an apple tree. Thermogravimetric (TG) analysis, which can provide the information about the mass loss of the sample during heating, was used to obtain the data for the kinetic analysis, from which the values of the Arrhenius parameters, i.e., apparent activation energy and pre-exponential factor, were calculated. In addition, the most probable reaction model was determined. Biomass is a substance of biological origin that includes plant biomass grown in soil and water, animal biomass, organic production, and organic waste. It is expected to replace a significant part of non-renewable conventional energy sources in the future. Therefore, these results were subsequently used for kinetic prediction of thermal decomposition. The authors also believe that such a study will contribute to the development of efficient biomass combustion applications. Note that this study is a continuation of a previous research study dealing with the kinetic analyses of woody biomass, by the same authors [4].

2. Materials and Methods

The wood chips used in this study came from an apple tree growing in the locality of Nitra, Slovakia (see Figure 1). The image of the surface of the wood chips, magnified 80×, is shown in Figure 1b. The content of the lignin and cellulose in the samples was determined by using an Ankom Fiber Analyzer A200 (Macedon, NY, USA), where the presented value is an average of three measurements.
Harvested wood was chopped into 5–10 cm pieces and grinded with a mill. Fractions between 0.5–2 mm were collected by sieving and used as feedstock for the subsequent thermogravimetric analysis.
The thermogravimetric measurements were carried out by using a Nabertherm L9/11/SW/P330 (Nabertherm GmbH, Lilienthal, Germany) furnace with a P330 Controller. Thermocouple type S was used to measure the temperature inside the furnace near the sample—from an appropriate distance—to ensure that the measurement was not affected by exothermic reactions. For the measurement of the mass loss, the Kern EG 220 digital scales were connected to a personal computer using the RS232 interface, and data were measured every 30 s simultaneously with the temperature. Moreover, a static air atmosphere and samples of ~5 g in mass were used. This apparatus (Figure 2) was chosen due to the possibility of measuring samples with masses that approach industrial applications. It is well known that thermogravimetry is commonly used for kinetic analysis, where the samples with smaller masses are usually used. However, samples with higher masses were used for the measurements, assuming the possible industrial application of the biomass, as is described in the EN ISO 17225:2014 standard for solid biofuels. In addition, using samples of ~5 g can reveal the influence of a temperature gradients during the thermal processes.
Non-isothermal thermogravimetric analyses were used to describe the processes occurring during the heating of the woody biomass in the temperature range of 25–900 °C, with a heating rate of 5 °C min−1. The numerical derivation of the TG curve provides the dTG curve. In the case of isothermal measurements, the heating rate of 10 °C min−1 was used to reach the isothermal temperatures of 250 °C, 270 °C, and 290 °C. Moreover, this heating rate was used to minimize the impact of the thermal decomposition on the results before we reached the isothermal temperature. All experiments were carried out under a given condition more than twice in order to ensure reproducibility and reliability of the obtained results.

Kinetic Analysis

The thermal decomposition of woody biomass is often expressed as follows [26]:
Wood k ( T )   Char   +   Volatiles ,
where k(T) is the rate constant (s−1) and Volatiles characterize the sum of the gas and tar. The rate of the reaction can be described by the following equation [30,31]:
d α d t = k ( T ) f ( α ) ,
where t is time (s), T is the absolute temperature (K), and f(α) characterized the reaction model. The temperature dependence of the rate constant is commonly described by the Arrhenius equation [30,31,32]:
k ( T ) = A exp ( E R T ) ,
where A and E are the Arrhenius parameters (pre-exponential factor and activation energy, respectively), R is the universal gas constant and T is the thermodynamic temperature. In the case of the thermogravimetric experiments, the degree of conversion can be calculated using the following equation [33]:
α = m i m m i m f ,
where m is current, mi initial, and mf the final value of the sample mass. Equation (2) can be written in the integral form [34],
g ( α ) = k ( T ) t ,
where g(α) is the integral form of a reaction model. Dependence of the g(α) on the time must give a straight line for the proper reaction model, where the slope of this plot corresponds to the k(T). The models used in this study are listed in Table 1.
The determination of Arrhenius parameters A and Ea is based on the logarithmic form of Equation (3) [29,35,36]:
ln k ( T ) = ln A E a R T ,
where the slope of the plot of the left-hand side vs. T−1 is equal to −Ea/R and the intercept with y-axis is equal to the ln A. Note that the apparent activation energy Ea is a value that characterizes the combination of several processes.

3. Results and Discussion

The measured samples contained ~15% lignin, ~49% cellulose, and ~32% hemicellulose. The occurrence of several processes during the thermal treatment is clearly visible in Figure 3, where the non-isothermal TG and dTG curves for the heating rate of 5 °C min−1 are shown. According to the various studies (see Section 1), the first peak on the dTG curve in the temperature range of 30–150 °C can be attributed to the elimination of the humidity. During this step, the mass loss is ~5 wt.%. The second peak (the main decomposition region), occurring in the temperature range of 200–350 °C and with a mass loss of ~60 wt.%, corresponds to the volatilization of the main constituents. This assumption is based on isothermal measurements [11], where due to the slower decomposition of lignin, different heating rates could lead to different explanations of the measurements. The last peak on the dTG curve, in the temperature range of 350–500 °C, is linked to the combustion of the char residues [37].
Based on these results, the isothermal thermogravimetric analyses were carried out using the temperatures 250 °C, 270 °C, and 290 °C, which correspond to the main decomposition region. These temperatures were also chosen due to the expectation that the lignin does not fully decompose at lower than 300 °C [11]. This is due to the assumption that it is hard to correctly determine the apparent activation energy and pre-exponential factor of the reaction in the region of lignin decomposition. The results of the thermogravimetric analysis with the corresponding conversion curves calculated according to Equation (4) are shown in Figure 4.

3.1. Kinetic Analysis

For the determination of the most probable reaction mechanism via linearization, the α = f(t) dependence must be transformed into the g(α) = f(t) function, which depends on the process of the reaction [38]. The dependence of g(α) on time must give a straight line for a proper reaction model, where the slope corresponds to the k(t). In this study, the values of the rate constant were calculated for a conversion degree in the range of 0.10 ≤ α ≤ 0.85. The results show that the best model for this process, which represents the measured data most accurately, is the first-order reaction (F1). The R2 values calculated for the different reaction models are listed in Table 2. This is in agreement with the previously published results by Liu et al. [15] and Vitázek and Tkáč [37]. In both studies, the kinetic analyses show that if the first-order reaction model (see Table 1) is used, the best final fit of the Arrhenius function is achieved. On the other hand, the determined reaction model could not describe the whole decomposition region due to the lignin decomposition.
The determined ln(k) values were used for the determination of the apparent activation energy and pre-exponential factor (see Table 3). The pertinent kinetic parameters were determined from the Arrhenius-type plot (Figure 5), where the calculated values of Ea and A are (34 ± 3) kJ mol−1 and (391 ± 2) min−1, respectively.
These results are also similar compared to apple tree leaves [7], where the decomposition region was divided into two steps, with the apparent activation energies of the first and second stage being 34.2 kJ mol−1 and 32.3 kJ mol−1, respectively. However, what makes the difference is that the authors from the study mentioned above used different experimental conditions, such as heating rate, reaction atmosphere, and particle size. Moreover, different methods of kinetic analysis were used. On the other hand, the value of Ea is significantly lower than the values published by Cui et al. [39], where the authors used the apple tree sawdust. In this study, the authors have reached a similar curve measured under non-isothermal conditions, as shown in Figure 3. However, the values of the activation energy in this study are in the range of 115.08–160.17 kJ mol−1 and 120.02–159.39 kJ mol−1, as determined by the Kissinger–Akahira–Sunose and Flynn–Wall–Ozawa method, respectively. These differences could be explained by different experimental conditions, such as isothermal and non-isothermal heating, the atmosphere during the reaction and sample masses. In case of Arrhenius parameters, it is well known that its values depend on the reaction atmosphere, where the review of the obtained values for various agricultural residue case studies could be found in [31]. Besides, the results by Wachter et al. [40] show that in a dynamic atmosphere, the decomposition temperature peak can occur in a higher temperature range. However, it is worth noting that the reaction atmosphere used in this study is more realistic in the case of smaller biomass boilers.
The different content of cellulose, hemicellulose, and lignin also could lead to the significant differences in the values of the kinetic parameters [41]. Another explanation for the lower values of the apparent activation energy and pre-exponential factor could be that the whole process undergoes a variety of competitive reactions.

3.2. Kinetic Prediction of the Thermal Decomposition Region

As soon as the Arrhenius parameters and reaction model were determined, the prediction of the thermal decomposition of the wood chips from the apple tree can be made. In this study, the kinetic prediction was computed according to Equations (2) and (3) using the Runge–Kutta method with the following parameters: Ea = 34 kJ mol−1, A = 391 min−1, and T = 260 °C. This temperature was chosen due to its correspondence with the main decomposition region. Moreover, it is different than the temperatures used for the parametrization of the process. The same as in the reaction model, the first-order reaction was chosen. The comparison of the computed and measured curve is shown in Figure 6.
The comparison of the experimental and predicted curve shows the agreement of dependencies in the degree of conversion range of 0 < α < 0.9. On the other hand, in the region with higher values of α, the reaction is slower than was predicted using the determined parameters. This behaviour can be explained by the influence of the experimental condition where the seemingly slight differences in certain processes vary, such as the particle size or heat transport, which can have a significant impact on the nature of the lignocellulosic decomposition reactions [31]. Nevertheless, the results could be used for the optimization of the combustion process of wood chips in small-scale biomass boilers. This can be concluded due to the fact that most of the input material (approximately 90%) was decomposed during the first ~10 min.

4. Conclusions

A thermogravimetric analysis under a static air atmosphere was used to study the thermal decomposition of wood chips from an apple tree. The kinetic analysis was carried out using a conventional model-fitting method, where the apparent activation energy and pre-exponential factor were determined based on an Arrhenius-type plot. The summary of the results is as follows:
-
The first-order reaction (F1) was determined as the most probable mechanism of the reaction. Due to the lignin decomposition, this reaction model was determined for a degree of conversion in the range of 0.10–0.85.
-
The determined values of Ea and A from the Arrhenius-type plot are (34 ± 3) kJ mol−1 and (391 ± 2) min−1, respectively.
Based on these results, the kinetic prediction of the thermal decomposition region was produced, and the obtained curves were compared with the measurement. This comparison led to the finding that the seemingly slight differences in certain process can have a significant impact on the nature of the lignocellulosic decomposition reactions near the end of the process; this has a lot of implications for the modelling of such processes, and not only in the case of wood chips from an apple tree. Of course, the reaction model that was determined in this work cannot fully describe the whole process (mainly the last phases of the thermal decomposition), as it was also presented in various studies.
For a real application, such as the thermal decomposition of biomass in boilers, it is sufficient to vary the temperature in Equation (2) to obtain the reaction rate from which the mass loss during this process can be simply obtained.
We would like to note that we plan to study the thermal decomposition of a combination of various wood chips, such as with vineyard pruning residues, which is also important for development of effective combustion applications. So, these results will be used for studying the effects of adding various biodegradable materials, which is, however, beyond the scope of this paper.

Author Contributions

Methodology, I.V.; validation, K.D. and M.Š.; formal analysis, K.D.; investigation, I.V. and M.Š.; resources, J.M.; data curation, I.V. and S.H.; writing—original draft preparation, I.V.; writing—review and editing, M.Š.; visualization, M.Š.; supervision, J.M. and K.D.; project administration, S.H. and J.M.; funding acquisition, S.H. All authors have read and agreed to the published version of the manuscript.

Funding

This work was supported by the Slovak Research and Development Agency under the contract No. APVV-15-0602.

Data Availability Statement

Not applicable.

Acknowledgments

The research was supported by the Project of the Structural Funds of the EU, ITMS code 26220220103.

Conflicts of Interest

The authors declare no conflict of interest.

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Figure 1. (a) Wood chips used in this study, and (b) image of the surface of the wood chips (magnification of 80×).
Figure 1. (a) Wood chips used in this study, and (b) image of the surface of the wood chips (magnification of 80×).
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Figure 2. The apparatus used in this study.
Figure 2. The apparatus used in this study.
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Figure 3. TG and dTG curves for the non-isothermal measurements with a heating rate of 5 °C min−1.
Figure 3. TG and dTG curves for the non-isothermal measurements with a heating rate of 5 °C min−1.
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Figure 4. Results of TG analysis under isothermal heating. Inserted graph: dependence of the conversion degree on the time.
Figure 4. Results of TG analysis under isothermal heating. Inserted graph: dependence of the conversion degree on the time.
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Figure 5. Determination of the apparent activation energy based on the Arrhenius-type plot.
Figure 5. Determination of the apparent activation energy based on the Arrhenius-type plot.
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Figure 6. Kinetic prediction of the thermal decomposition of wood from an apple tree at a temperature of 260 °C.
Figure 6. Kinetic prediction of the thermal decomposition of wood from an apple tree at a temperature of 260 °C.
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Table 1. The kinetic models used in this study [29,34].
Table 1. The kinetic models used in this study [29,34].
No.CodeReaction Modelf(α)g(α)
1.F1, A1Mampel (first-order)(1−α)−ln(1−α)
2.F2Second-order(1−α)2(1−α)−1−1
3.F3Third-order(1/2)(1−α)3(1−α)−2−1
Table 2. Determination of the most probable mechanism of thermal decomposition based on the R2 calculation.
Table 2. Determination of the most probable mechanism of thermal decomposition based on the R2 calculation.
CodeReaction ModelTemperature (°C)
250270290
F1Mampel (the first-order)0.99560.98740.9919
F2Second-order0.92730.89370.9288
F3Third-order0.80610.75460.8184
Table 3. Determined values of ln(k).
Table 3. Determined values of ln(k).
Temperature (°C)ln (k)
250−1.87
270−1.54
290−1.32
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Vitázek, I.; Šotnar, M.; Hrehová, S.; Darnadyová, K.; Mareček, J. Isothermal Kinetic Analysis of the Thermal Decomposition of Wood Chips from an Apple Tree. Processes 2021, 9, 195. https://0-doi-org.brum.beds.ac.uk/10.3390/pr9020195

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Vitázek I, Šotnar M, Hrehová S, Darnadyová K, Mareček J. Isothermal Kinetic Analysis of the Thermal Decomposition of Wood Chips from an Apple Tree. Processes. 2021; 9(2):195. https://0-doi-org.brum.beds.ac.uk/10.3390/pr9020195

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Vitázek, Ivan, Martin Šotnar, Stella Hrehová, Kristína Darnadyová, and Jan Mareček. 2021. "Isothermal Kinetic Analysis of the Thermal Decomposition of Wood Chips from an Apple Tree" Processes 9, no. 2: 195. https://0-doi-org.brum.beds.ac.uk/10.3390/pr9020195

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