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Estimating the Pyrolysis Kinetic Parameters of Coal, Biomass and their Blends: A Comparative Study Abhijit Bhagavatula, Naresh Shah, and Rick Honaker Energy Fuels, Just Accepted Manuscript • DOI: 10.1021/acs.energyfuels.5b00692 • Publication Date (Web): 10 Nov 2016 Downloaded from http://pubs.acs.org on November 14, 2016
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Energy & Fuels
Estimating the Pyrolysis Kinetic Parameters of Coal, Biomass and their Blends: A Comparative Study Abhijit Bhagavatula1, *, Naresh Shah1 and Rick Honaker2
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1. Department of Chemical and Materials Engineering, University of Kentucky, Lexington, KY – 40508, United States 2. Department of Mining Engineering, University of Kentucky, Lexington, KY – 40508, United States
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* Corresponding Author: Tel.: +1 304 9066529
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E-mail Addresses:
[email protected],
[email protected] 12 13
Abstract
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The pyrolysis kinetic parameters of two coal ranks (DECS-25 Lignite and DECS-38 Sub-
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Bituminous), two biomass materials (Corn Stover and Switchgrass) and their respective blends
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were investigated at various heating rates ranging between 5 ºC/min and 40 ºC/min using
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thermogravimetric analysis. Complex models for devolatilization of the feedstocks were solved
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for obtaining and predicting the global kinetic parameters. Distributed activation energy model
19
(Method 1) and matrix inversion algorithm (Method 2) were utilized and compared for this
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purpose. The results indicate that the matrix inversion algorithm predicts the kinetic parameters
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such that the weight loss characteristics can be best represented for both single fuels as well as
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that of blended materials. The algorithm can also be used for determining the number of
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reactions occurring in the devolatilization temperature interval. The number of reactions
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occuring during the devolatilization of blended materials fall between those that occur during the
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devolatilization of single fuels and the number of reactions gradually decrease with increase of
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biomass concentration in the blend. In addition, weight loss characteristics of fuel blends at 1
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unknown heating rates can be effectively predicted within 1 % error through the use of this
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algorithm.
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Keywords: Coal, Biomass, Blends, Thermogravimetric Analysis, Pyrolysis, Kinetics Modeling
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1. Introduction
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Global growth in industrialization, economy, population and most importantly, the
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depletion in fossil fuel resources has resulted in the global energy demand to increase
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exponentially [1-3]. This increasing demand will become more rapid in the future. Currently,
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heavy exploitation and extensive use of fossil fuels are the reasons leading towards their
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foreseeable depletion within the next few decades [2, 4-10]. Substituting fossil fuels and
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alleviating their negative environmental effects is sine qua non and have therefore led to the
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development of alternative sources of energy and promotion of sustainable low quality fuels. Co-
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conversion technologies mainly pertaining to co-pyrolysis, co-gasification and co-combustion of
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coal and biomass blends are among these alternatives for energy generation and production of
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high quality synthetic chemicals [11, 12].
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Pyrolysis or devolatilization (used interchangeably) is the starting point for all
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heterogeneous gasification reactions. Carbonaceous feedstock can be considered as a complex
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polymer network consisting of aromatic clusters and aliphatic bridges. During pyrolysis, the
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complex structure of such feedstock is broken down in to several small fragments whose vapor
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pressure is high enough to form volatile matter. The products include: pyrolysis gases (CO, H2,
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CH4 and H2O), tar, oil, naphtha and residual solid char [11, 13-15]. A complete description of the
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characteristics of pyrolysis is complicated, but for a given carbonaceous feedstock, the pyrolysis
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behavior depends on the rate of heating, decomposition temperature, residence time, the
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environment under which the pyrolysis takes place, pressure and particle size [16].
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Single-step reaction models are simple, but difficulties arise while simulating complex
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multi-step reactions such as pyrolysis of solid fuels. On the other hand, segmented reaction
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models divide a complicated reaction into several steps according to temperature range. Several 3
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methods for assessing non-isothermal pyrolysis kinetic parameters using thermogravimetric
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analysis (TGA) have been developed. These methods are generally categorized as either “model-
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fitting” or “model-free” [17, 18]. During devolatilization of carbonaceous feedstocks, several
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mass loss profiles can be observed with increasing temperatures. Each mass loss profile or the
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thermal event having sudden changes in mass loss slope can be modeled using appropriate
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“model-fitting” techniques for estimating the kinetic parameters. Each thermal event may have a
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discrete reaction order, frequency factor and activation energy.
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Prior investigations reveal that co-pyrolysis of coal-biomass blends generally yield three
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or more thermal events. For example, three thermal events with linear kinetics at temperatures
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ranging between 200 °C and 1400 °C were observed by Meesri and Moghtaderi in their work on
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pyrolytic behavior of coal and woody biomass blends [19]. Similar investigations by Vuthaluru
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[20] also revealed that three thermal events were sufficient enough to explain the mass loss
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profiles of coal/biomass mixtures using non-linear reaction kinetics. More importantly, they
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found that the total yield of the major pyrolysis products were linearly proportional to the
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blending ratio, indicating no synergistic effect between coal and biomass. However,
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contradictorily, Bhagavatula et al. [37] observed significant non-linearity in the evolution of
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volatile matter indicating synergistic behavior during their co-pyrolysis investigations using
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blends of corn stover and sub-bituminous coal which were in conjunction with the findings of
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Aboyade et al. [18], Zhou et al. [21], Cai et al. [27] and Haykiri-Acma and Yaman [22].
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Likewise, Zhou et al. [21] and Cai et al. [27] utilized linear reaction kinetics in their research on
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co-pyrolysis of plastic/biomass blends and coal/plastic blends respectively. Zhou et al. [21]
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observed two thermal events for polypropylene and three thermal events for blends of wood saw
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dust and plastics while Cai et al. [27] utilized four thermal events in their evaluation. In another 4
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work, multi-component distributed activation energy model involving several parallel
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irreversible first order reactions was employed by Jong et al. [23] who carried out co-pyrolysis
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experiments in Helium atmosphere with blends of biomass and high volatile coal in TGA–FTIR.
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They concluded that the pre-exponential factor had no significant deviation for each reaction and
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can be assumed to be constant although the activation energies followed Gaussian distribution.
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Vamvuka et al. [24] developed a kinetic model for the volatile matter released during the
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pyrolysis of several biomass (i.e. olive kernel, forest and cotton residues) blends with lignite
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using thermogravimetric analysis. Their findings revealed that the biomass possess higher
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thermochemical reactivity with shorter devolatilization times in comparison to the lignite.
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However, in multi-thermal event models the changeovers are not often sharp, making
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demarcation of each thermal event difficult. Moreover, the changeover temperatures may vary
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with the type of feedstock and other conditions, thereby, preventing the use of the model with
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generality. In addition, it was presumed that only one reaction occurred within a certain
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temperature range which is not scientifically warranted.
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The model-free approach does not require assumption of specific reaction models, and
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yields unique kinetic parameters as a function of either conversion (iso-conversional analysis) or
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temperature (non-parametric kinetics). Of the two main model-free methods the iso-conversional
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approach is more frequently adopted, and is increasingly being used in coal/biomass
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thermochemical conversion research. Garcia-Perez et al. [25] employed the iso-conversional
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approach for estimating the thermal decomposition parameters of sugar cane bagasse with
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petroleum residue at various heating rates ranging from 10-60 °C/min in an inert nitrogen
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atmosphere. Similarly, Biagini et al. [26], Cai et al. [27], and Aboyade et al. [18] employed
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various iso-conversional methods in the analysis of the non-isothermal decomposition of 5
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biomass and/or its components. Investigations by Aboyade et al. [18] revealed that the activation
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energies for biomass materials such as sugarcane bagasse and corn stover were in the range of
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165-200 KJ/mol and much lower than the activation energy displayed by coal (> 250 KJ/mol) at
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a conversion less than 0.8.
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An extensive literature review reveals contrasting methods adopted by various
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researchers in evaluating the thermochemical characteristics of blended fuel feedstocks. Kinetic
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modeling of the devolatilization behavior of coal and biomass is, therefore, an important step in
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assessing the contribution of single materials and their interactions during the devolatilization
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stage. The understanding of kinetics of co-pyrolysis of blends of biomass and coals, particularly
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the blends of Montana coals, corn stover and switchgrass used in this study, is far from clear and,
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hence, it is important to evaluate various kinetic models and demonstrate a robust and versatile
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model which can be used for predicting the kinetic parameters of co-pyrolysis using various
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feedstocks. Two models, namely, distributed activation energy model and matrix inversion
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algorithm were utilized and compared for this purpose in the present work. A detailed
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description of theory behind each of the kinetic models is provided in Section 2.
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2. Theory
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2.1. Method 1: Distributed Activation Energy Model - Gaussian Distribution Function
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As discussed in Section 1, kinetic parameters obtained using the model-fitting techniques
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are actually a starting point in the devolatilization modeling. Although simple and used as a
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starting point for more complex models, a single first order reaction model utilized for estimating
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the devolatilization kinetics of complex materials is only applicable over a limited range of
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experimental conditions. The kinetic parameters obtained through such a model may not be used
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as global parameters. Activation energy and pre-exponential factor change for different heating 6
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rates, i.e, the parameters obtained through one experimental condition may not be extrapolated to
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an unknown heating rate. More accurate and specific models are required to meet the
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experimental results of each material, one model being the distributed activation energy model
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[36, 44].
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Since coal and biomass are complex fuels with a wide variety of chemical groups, the
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distributed activation energy model treats thermal decomposition of these complex fuels as a
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large number of independent and analogous rate processes characterized uniquely by their
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activation energy. The thermal decomposition of a single organic species can be described as an
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irreversible first-order reaction. Thus, the rate at which volatiles are produced by a particular
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reaction can be defined according to the mass balance on the reactant species.
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153
154 155
∗ = − ∗ − = ∗ − −
Eq. 1
Eq. 2
Where ∗ is the final quantity of volatile matter for the generic species, i, and is the rate constant of the reaction expressed according to the Arrhenius law.
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This type of kinetic model requires that the amount of volatiles and kinetic parameters
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known for all the single reactions. To estimate these parameters from experimental data for all
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the reactions is practically not possible. The problem can be simplified if it is assumed that the
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rate constants for all the reactions differ only in the activation energy. The number of reactions is
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large enough so that the activation energy can be expressed as a continuous Gaussian distribution
161 162
function and representing the potential loss of volatile fraction with activation energy between the intervals E and E + dE. Thus, 7
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∗ = ∗ = ∗
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Finally, the yield of volatiles can be calculated using Equation 4.
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! ∗ − ∗ = exp − "
= −
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Eq. 3
Eq. 4
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Where,
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And,
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Where, ∗ is the global volatile quantity of the material, is the mean activation energy
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= #2%
.' ()
− − + exp * 2# + ,
Eq. 5
Eq. 6
and # is the standard deviation of the activation energy. Using this approach, low values of
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activation energies resulting from model-fitting first-order reactions as functions of temperature
171
can be negated [28].
172 173 174 175 176 177 178 179 180 181
In this work, Miura’s method was used to estimate and A values [45] for all the
feedstock materials. Both and A were obtained from at least three thermogravimetric experiments using different heating rates without assuming any functional forms for and A [46]. The procedure used is summarized as follows [45, 46]:
(1) Measure V/V* vs. T using at least three different heating rates on a dry and ash-free basis. (2) Calculate the values of ln (β/T2) and 1/ (RT) at the same V/V*, where β is the heating rate. (3) Plot ln (β/T2) and 1/ (RT) at the selected V/V* ratio and then determine the activation energies E from the slopes and A from the intercept as shown in Equation 7.
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Energy & Fuels
-. 1 = -. + 0.6075 − /
23
0
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4
4
30
Eq. 7
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(4) Plot V/V* and E and differentiate the V/V* vs. E relationship by E to obtain f (E).
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(5) Pre-exponential factor, A, can be expressed as a function of activation energy using the following expression:
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= :) :+
186
Where, :) and :+ are constants dependent on the reacting material.
187 188
Eq. 8
(6) The relationship between V/Vf and E is fitted using a logistic distribution curve using Equation 9.
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;
;
)? 44 B @
Eq. 9
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where A1 and A2 are the initial and final conversion points, E0 is the mean activation energy and
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p is a constant. The values of the constants are obtained by fitting the experimental data with
193
Equation 9.
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2.2. Method 2: Matrix Inversion Method
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As described in Section 2.1, the devolatilization mass loss of a complex carbonaceous
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material can be uniquely characterized within an activation energy interval of E and E + dE at
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any particular time t [47-49]. If the decomposition is considered to be first order, then Equation 4
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can be re-written in the following form:
C, = C D ,
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200
And,
D , = − − "
9
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Eq. 10
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201
Where, m (E, t) is the mass density function of the volatile material at any time t and m0 (E) is
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the initial mass of volatile material within the interval E and E + dE.
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Since m (E, t) cannot be measured quantitatively, integrating Equation 10 over all activation
204
energies enables the calculation of total amount of material decomposed, Mv (t), at any time t. EF EF@
205
=
EF@ (; EF@
G =
= G D , !
J
Eq. 11
H@ 4
@ H@ 4 I4
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And,
207
Where, Mv (t) is the mass of volatiles at any time t, Mvo is the initial mass of volatile matter, V (t)
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is the yield of volatiles and g (E) is the underlying initial distribution of activation energies.
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Since g (E) is unknown, calculation of kinetic parameters for each parallel reaction is
210
more complex. To overcome this complexity, a mathematical inversion method which does not
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rely on any assumption of the initial distribution of activation energies is utilized in this research
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for estimating the kinetic parameters. This method was successfully tested by Scott et al. [48, 49]
213
for evaluating the kinetic parameters of pyrolysis of sewage sludge. This method, which is
214
virtually an extension of Miura’s method, is used for determining the number of reactions
215
occurring during the process of devolatilization, in addition to determining the kinetic
216
parameters.
217
Mathematically, Equation 9 can be rearranged as shown in Equation 12 by assuming that
218
a volatile component of the fuel feedstock with an initial mass fraction of fi,0 reacts with an
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activation energy of Ei and pre-exponential factor of Ai.
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= , D 10
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Eq. 12
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Where, fi is the fraction of the ith component remaining as the fuel is devolatilized and Ψi is the
222
double exponential term (Eq. 10). For thermal decomposition by means of several analogous
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first-order reactions, Equation 12 can be expressed as:
224
225
and, W is the fraction of inert material.
E E@
= K + L2MM 3NOPQRS, , D Eq. 13
226
The problem is therefore to estimate fi,0, Ei and Ai. A unique case of this general problem
227
is the distributed activation energy model which can be generated when an infinite number of
228
reactions co-exist with a constraint that each of the reactions is distinctively characterized by its
229
activation energy [49]. During thermal decomposition, only one particular reaction is dominant
230
at a certain temperature and hence, the kinetic parameters of that particular reaction can be
231
directly and accurately evaluated. Only when multiple reactions occur at the same conversion
232
point or temperature interval, will deviations in activation energy be observed. Therefore,
233
Equation 13 can be interpreted in a matrix form as follows:
234
W D D+ V [ V ) U W) Z U D) ) D+ ) Z U ) U W+ Z = U D) + D+ + E@ U U ⋮ Z U ⋮ ⋮ U Z U TW R Y TD) R D+ R
⋯⋯
⋯⋯
⋯⋯
⋯⋯
⋯⋯
DR DR )
DR + ⋮
DR R
1 ), [ V [ 1Z U+, Z Z U Z 1Z × U_, Z U ⋮ Z 1Z U Z Z TKY 1Y
Eq. 14
235
Equation 14 can therefore be termed as a modified form of the distributed activation energy
236
model. For a constant heating rate experiment, i.e. dT/dt = H and initial temperature T0, the
237
double exponential term, Ψ can be expressed as:
11
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D = D = `− ba 0 c 2
238
0
@
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− d e
Eq. 15
= , D
239
And,
240
Thermogravimetric experiments conducted at two different heating rates, H1 and H2, can be used
241
for calculating the values of Ei and Ai. Assuming that the ith reaction is the only reaction
242
occurring at the same conversion in both experiments, then, f) , ) = f+ , +
243
244
And subsequently.
245
Or,
246
Eq. 16
)
b=
D f) , ) = D f+ , +
g − 30a − 4
Eq. 17
@
(4a 3
h
!
l mn@
!
k
o − ) − 30a + 4
=
4a
!
l mn=
!
k
op =
248
Equation 19 is a non-linear equation, which can be solved analytically for estimating unknown
249
activation energies for each reaction. Once the activation energy, Ei, is determined, pre-
250
exponential factor, Ai, can be calculated by assuming that the conversion of the individual
251
component i of the dominating reaction reaches a particular conversion. For this method, it is
252
assumed that the conversion is:
253
1
@
(4a 3
l mn@
4ij (k k
4
1
h 3
4ij (k
b g − 30a − 4
o − + − 30a +
3
h
247
)
h
4ij (k
Eq. 18
4a
l mn1
q = 1 − () => D = () => ln D = −1 12
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4ij (k k
op
Eq. 19
Eq. 20
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Energy & Fuels
Combining Equations 15 and 20, Ai can then be estimated.
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The matrix inversion method is thus different from Method 1 in the sense that this method
256
does not require that each reaction be uniquely characterized by its activation energy and does
257
not use a step function approximation, which is central to Method 1 (Miura’s method) for
258
estimating the amount of each reaction occurring. This type of analysis was used earlier for
259
determining the pyrolysis characteristics of dried sewage sludge [48] and high ash, inertinite-
260
rich, medium rank C South African coal [50]. In this work, the modified distributed activated
261
energy model has been extended for determining the kinetic parameters of single fuels as well as
262
blends of coal and biomass.
263
3. Materials and Methods
264
The pyrolysis characteristics of pure coal, biomass which includes corn stover (CS) and
265
switchgrass (SG) and their blends using thermogravimetric analysis will be discussed extensively
266
in this work. 10%, 20% and 30% by weight of individual biomass samples were blended with
267
two different ranks of coals, namely, DECS-38 sub-bituminous coal (SB) and DECS-25 lignite
268
coal (LG) [12, 51]. The samples were crushed and sieved to -100 mesh (< 150 µm) before
269
blending to limit the effects of intra-particle heat transfer [18, 24, 26, and 29].
270
Subsequently, their non-isothermal weight loss profiles were evaluated and co-pyrolysis
271
kinetic parameters were determined. These coals were chosen based on economic considerations,
272
their low sulfur content, and relatively high percentage of carbon present. Also, in view of the
273
overall gasification process, blends of higher percentages of biomass (in excess of 30% by
274
weight) would be uneconomical for large scale operations since biomass is a low density, low
275
heating value fuel and addition of more biomass would make thermochemical conversion less 13
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efficient. Therefore, the blends have been limited to a maximum of 30% by weight of biomass in
277
this study. Proximate analysis, elemental analysis and sulfur analysis of the feedstock samples
278
were conducted according to ASTM standards D7582-12 [52], D5373-08 [53] and D4239-12
279
[54], respectively. The proximate and elemental analyses of the single fuels are presented in
280
Table 1.
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Pyrolysis of the different feedstocks was carried out in non-isothermal mode using a TA-
282
SDT-Q600 thermogravimetric analyzer. Approximately 15 mg of representative coal sample and
283
about 7 mg of representative biomass samples on an as received basis were used for the
284
experiments. Pure nitrogen was used as the purge gas. Flow of pure nitrogen through the system
285
negates sample oxidation and also removes the volatile pyrolysis products, thus ensuring an inert
286
atmosphere during the run. In the non-isothermal mode, once the sample is inserted into the
287
furnace, the temperature of the furnace was increased from room temperature to 127 °C and held
288
at that temperature for 15 minutes to ensure drying. Subsequently, the furnace temperature was
289
raised to 900 °C at constant heating rates ranging between 5 °C/min and 40 °C/min. An inert
290
nitrogen atmosphere was employed throughout the process and the nitrogen flow rate was
291
maintained constant at 100 ml/min. Upon reaching a temperature of 900 °C, air was introduced
292
into the furnace to burn off the remaining char and obtain the percentage of ash in the respective
293
samples. The process was repeated four times to ensure reproducibility of the weight loss
294
profiles for each sample (error < 5 % for all samples).
295
4. Results and Discussion
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4.1. Method 1
297
For illustration of the distributed activated energy model (DAEM), Figure 1 describes the
298
method for establishing the kinetic parameters during the pyrolysis of DECS-38 sub-bituminous 14
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coal for different heating rates ranging from 5 °C/min to 40 °C/min. The idea is that, with
300
increase in heating rates, the temperature required to attain a particular conversion increases and
301
hence, the kinetic parameters can be determined at each conversion point. Once the activation
302
energies at selected conversions are determined, the relationship between conversion (V/Vf) and
303
activation energies needs to be established through a plot of V/Vf vs E.
304
Once the relationship between V/Vf and E is established and the unknown constants
305
obtained, Equation 9 can be differentiated with respect to E to obtain the values for the function f
306
(E). Finally, a plot of the obtained f (E) values with respect to the activation energy can be fitted
307
using a Gaussian distribution function. This implies that the complex devolatilization reaction
308
kinetics of carbonaceous materials may not be represented by only a single first order reaction
309
but, the reaction is made up of several analogous first order reactions occurring simultaneously
310
with increasing temperatures as described in Section 2.1. For example, as seen from Figure 1 and
311
Table 2, for DECS-38 sub-bituminous coal, the peak of f (E) occurs at 0.00575 KJ/mol
312
corresponding to an activation energy of approximately 269 KJ/mol and the distribution of
313
activation energies follows an approximate Gaussian function (R2 = 0.99). The range of
314
activation energies is between 120-578 KJ/mol within the devolatilization conversion interval of
315
5-99% (Table 2). Also, a linear relationship with reasonable correlation coefficient (R2 = 0.97)
316
exists between ln k0 and activation energy. Within the devolatilization interval, the values of k0
317
range between e20 – e53 min-1 for DECS-38 sub-bituminous coal corresponding well to the values
318
available in literature for coals with similar properties [45, 46]. Using the kinetic parameters thus
319
obtained, Equation 4 is then solved using the quadrature function of MATLAB to predict the
320
weight loss or conversion profiles during devolatilization at all heating rates and compared with
321
the experimental data as shown in Figure 2. Similar procedure has been utilized for analyzing the 15
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322
devolatilization kinetic parameters of all the feedstock materials and these values are shown in
323
Table 2. Figures S.1 through S.5 in supplementary information describe Method 1 for all
324
feedstocks used in this work. The standard correlation coefficient for predicting the
325
devolatilization weight loss using this method is reasonably good (R2 > 0.97) for all feedstocks.
326
4.2. Method 2
327
4.2.1. Kinetics of DECS-38 Sub-Bituminous Coal Devolatilization
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328
Figures 3 and 4 describe the matrix inversion algorithm results for DECS-38 sub-
329
bituminous coal. The algorithm was applied to the TGA data at various heating rates and kinetic
330
parameters were obtained at various conversions. The obtained kinetic parameters were then
331
used to model the reactions at unknown heating rates that were not used in the algorithm. The
332
obtained weight loss data was then compared with real TGA data for comparison and accuracy
333
of the method.
334
The ability to accurately predict the thermal mass loss curves at unknown heating rates
335
and also significantly lower data processing times make this inversion algorithm advantageous
336
over Miura’s method. For DECS-38 sub-bituminous coal, TGA data for heating rates 10 °C/min
337
and 20 °C/min were used in the inversion algorithm for determining the kinetic parameters and
338
the obtained parameters were then used to predict the weight loss curves at 5 °C/min and 40
339
°C/min.
340
From these mass loss data sets, a total of 50 conversions were chosen where the kinetic
341
parameters were to be calculated. One candidate reaction is generated at each value of
342
conversion and for cases where more than one real reaction occurs at a particular conversion, the
343
values of E and A generated would be incorrect. Therefore, the values of fi,0 of such unrealistic 16
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344
reactions can be set to zero using the method described in Section 2.2, thereby determining the
345
total number of reactions during devolatilization.
346
Figure 3 shows the values of fi,0 for DECS-38 sub-bituminous coal. Upon examination of
347
these values, 35 parallel reactions have been identified which are deemed to be occurring during
348
the devolatilization of DECS-38 sub-bituminous coal. Increasing the number of conversion
349
points to a number greater than 50 would not make a difference because the total number of
350
parallel reactions occurring in this case falls within the number of conversion points chosen. For
351
example, when the number of conversion points was increased from 50 to 100, the number of
352
parallel reactions occurring was still the same and no change in the activation energy range was
353
observed. It should be noted here that only the decomposition reactions, starting with removal of
354
moisture, are taken into consideration during this method and hence, fixed carbon content and
355
ash content are not included in Figures 3 and 4.
356
The values of kinetic parameters increase with increasing weight loss until a maxima is
357
achieved when the mass fraction of the fuel (sub-bituminous coal) remaining is approximately 55
358
% indicating the completion of the devolatilization process. Activation energy values occurring
359
during pyrolysis of DECS-38 sub-bituminous coal have a range between 84 - 683 KJ/mol with a
360
mean activation energy of approximately 338 KJ/mol while the values of pre-exponential factor
361
are not constant for all reactions but have a large range between 9E+5 min-1 and 5E+32 min-1.
362
The kinetic parameters thus obtained were used to model the TGA curves. A comparison of the
363
actual TGA curves and the predicted curves (Figure 4) indicates that for the two heating rates
364
used in the algorithm, the model predicts the weight loss data and derivative weight loss data
365
excellently with standard error of less than 0.5 % between the experimental and predicted values.
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366
The kinetic parameters obtained were then used for modeling the devolatilization reaction
367
at two heating rates, 5 °C/min and 40 °C/min, not used in the algorithm to verify if the model
368
could be extrapolated to unknown heating rates. This is important to verify since the process of
369
devolatilization occurs instantaneously at the top of a moving bed reactor during gasification
370
where the heating rates tend to be much higher, in the order of 100 °C/sec. For the
371
thermogravimetric analyzer used in this work (TA SDT Q600), a linear increase in furnace
372
temperature was not possible at heating rates higher than 40 °C/min. Hence, it must be noted
373
here that the maximum heating rates utilized in this work is 40 °C/min.
374
The model can clearly be utilized for predicting weight loss data for unknown heating
375
rates also. As seen from Figure 4, the predicted weight loss values and derivative weight loss
376
values fall within 1 % of the actual experimental curves suggesting that this model can be
377
successfully utilized for predicting the devolatilization reaction even at extremely high heating
378
rates that are achieved in industrial reactors.
379
It is also important to understand if this model can be extended to various feedstocks with
380
different compositions of moisture, volatile matter and fixed carbon content. Therefore, for this
381
purpose and for comparison with other models described earlier, devolatilization of the two
382
biomass materials (CS and SG) and blends of biomass with the two coals are analyzed further
383
using the matrix inversion method in the following sections. The pyrolysis kinetic parameters
384
and number of reactions occurring during the process for all feedstocks are shown in Table 3.
385
4.2.2. Kinetics of CS and SG Devolatilization
386
The kinetics parameters for corn stover and switchgrass devolatilization were obtained
387
via the matrix inversion method by utilizing the TGA data for heating rates 20 °C/min and 40
388
°C/min in the inversion algorithm and the obtained parameters were then used to predict the 18
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389
weight loss curves at a lower heating rate of 5 °C/min. It is evident that there are far fewer
390
reactions occurring during the devolatilization of corn stover when compared to that of sub-
391
bituminous coal. The values of fi,0 (Supplementary Information Figures S.6-S.7) suggest that the
392
devolatilization of corn stover can be represented by a total of 7 reactions which includes
393
removal of moisture. The range of activation energy values obtained, 55 – 225 KJ/mol, are also
394
comparable to the values obtained using Methods 1. It is evident that this method can also be
395
used for predicting the devolatilization kinetics of high volatile biomass materials such as corn
396
stover. From Table 3, an interesting observation that can be made between corn stover and
397
switchgrass is that the total number of reactions occurring during devolatilization of corn stover
398
(7 reactions) is lesser than that of switchgrass (11 reactions). This can be attributed to the lower
399
total volatile matter percentage in corn stover which evolves at lower temperatures when
400
compared to that of switchgrass.
401
4.2.3. Devolatilization Kinetics of Blended Feedstocks
402
Once the devolatilization kinetics of single fuels was analyzed, the matrix inversion
403
algorithm was tested on the blends of those single fuels. For illustration, the analysis of 10% corn
404
stover blended with 90% sub-bituminous coal is discussed in this section. The activation energy
405
curve (Figure S.8 in Supplementary Information) for the blended feedstock follows a slightly
406
different pattern when compared to that of the single fuels, again, indicating the fact that there
407
are certain interactions between the single fuels during devolatilization unlike several previous
408
works [18-20, 29] where synergistic interactions between coal and biomass blends were not
409
observed. A complete analysis of the synergistic interactions between the blended feedstocks has
410
been previously described elsewhere in detail by the authors [12, 36-37]. 19
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Page 20 of 33
411
The kinetic parameters obtained even for the blended feedstocks represent the weight loss
412
data excellently, with errors of less than 1% for all heating rates. This proves the effectiveness
413
and robustness of the matrix inversion method in representing the devolatilization of various
414
materials when compared with other methods discussed previously. It is expected that the
415
number of reactions occuring during the devolatilization of blended materials would be between
416
those that would occur during the devolatilization of single fuels and that the number would
417
gradually decrease with increase of high volatile matter content fuels in the blend, i.e., corn
418
stover and switchgrass in this case. For a 10% corn stover blend with sub-bituminous coal, the
419
number of devolatilization reactions is 29, while only 20 reactions were observed in 30% blend
420
of corn stover with sub-bituminous coal as shown in Table 3.
421
5. Conclusions
422
Distributed activation energy model (Method 1), and matrix inversion algorithm (Method
423
2) were evaluated for estimating pyrolysis kinetic parameters of different feedstocks (DECS-38
424
sub-bituminous coal, DECS-25 lignite coal, corn stover, switchgrass and respective blends).
425
Although, several previous works utilize a first order model for reasonably predicting the
426
pyrolysis kinetic parameters of single fuels, difficulties in the demarcation of each thermal event
427
and approximations while determining the temperature integral make such a method error prone.
428
Additionally, such models can only be used for determining the kinetic parameters at one heating
429
rate, thereby, preventing the use of the model with generality. Therefore the use of distributed
430
activation energy models (Methods 1 and 2) for determining the pyrolysis kinetic parameters of
431
carbonaceous feedstocks is warranted. However, Method 1 is not “model-free” and can only be
432
used for predicting the kinetic parameters at known heating rates apart from it being labor-
433
intensive (the method requires a minimum of three heating rates for validation). On the contrary, 20
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434
the matrix inversion algorithm (Method 2) is a “model-free” iso-conversional technique that
435
predicts the kinetic parameters such that the weight loss characteristics can be best represented
436
for both single fuels as well as that of blended materials apart from determining the number of
437
devolatilization reactions occurring in the devolatilization temperature interval. In addition,
438
weight loss characteristics of fuel blends at unknown heating rates can be effectively predicted
439
within 1 % error through the use of this algorithm. Finally, it can be stated that the data obtained
440
utilizing this unique analytical technique would provide valuable insights not only pertaining to
441
pyrolysis kinetics but also towards synergistic interactions between blended feedstocks, process
442
modeling, optimization and reaction pathways in the field of co-conversion of coal and biomass.
443
Acknowledgements
444
The authors would like to express their gratitude to the Department of Energy for funding
445
this research (DOE Contract No. DE-FC26-05NT42456) and also to the Center for Applied
446
Energy Research at the University of Kentucky for their timely support in providing the biomass
447
samples.
448 449 450 451 452
References 1.
Sukumara, S., A Multidisciplinary Techno-Economic Decision Support Tool for Validating Long-Term Economic Viability of Biorefining Processes, in Chemical and Materials Engineering. 2014, University of Kentucky: Lexington, KY, USA.
453 454 455
2.
Xu, Q., Investigation of Co-Gasification Characteristics of Biomass and Coal in Fluidized Bed Gasifiers, in Chemical and Process Engineering. 2013, University of Canterbury: Christchurch, NZ.
456 457 458
3.
Feng, Y., et al., Influence of Particle Size and Temperature on Gasification Performance in Externally Heated Gasifier. Smart Grid and Renewable Energy, 2011. 2(2): p. 158164.
459
4.
Campbell, C.J., Oil Shock. Energy World, 1996. 240: p. 7-12.
460
5.
Korpela, S.A., Oil depletion in the world. Current Science, 2006. 91(9): p. 1148-1152. 21
ACS Paragon Plus Environment
Energy & Fuels
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Page 22 of 33
461 462
6.
Lee, S., Speight, J. G., and Loyalka, S. K., Handbook of Alternative Fuel Technologies. 2007, Boca Raton: : CRC Press, c2007.
463 464 465
7.
Silk, M., et al., Overview of Fundamentals of Synthetic Ultraclean Transportation Fuel Production, in Ultraclean Transportation Fuels. 2007, American Chemical Society: Washington, DC.
466 467
8.
Potential Contributions of Bio-Energy to the World’s Future Energy Demand. 2007, International Energy Agency (IEA): Paris, France.
468 469
9.
Letcher, T.M., Future Energy: Improved, Sustainable and Clean Options for Our Planet. 1st ed. 2008, Oxford, U.K: Elsevier Ltd.
470 471
10.
Tchapda, A. and S. Pisupati, A Review of Thermal Co-Conversion of Coal and Biomass/Waste. Energies, 2014. 7(3): p. 1098-1148.
472 473
11.
Basu, P., Biomass Gasification and Pyrolysis: Practical Design and Theory. 2010, Elsevier Inc.
474 475 476
12.
Abhijit Bhagavatula, et al., Source Apportionment of Carbon During Gasification of Coal-Biomass Blends Using Stable Carbon Isotope Analysis. Fuel Processing Technology, 2014. 128: p. 83-93.
477 478
13.
Bu, J., Kinetic Analysis of Coal and Biomass Co-Gasification with Carbon Dioxide. 2009, West Virginia University.
479
14.
Higman, C. and M. van der Burgt, Gasification. 2008, Elsevier Inc.
480 481
15.
Ke Liu., Chunshan Song., and V. Subramani., Hydrogen and Syngas Production and Purification Technologies. 2010, John Wiley and Sons, Inc.
482 483 484
16.
Dutta, S., C.Y. Wen, and R.J. Belt, Reactivity of Coal and Char: In Carbon Dioxide Atmosphere. Industrial and Engineering Chemistry Process Design and Development, 1977. 16(1): p. 20-30.
485 486
17.
Vyazovkin, S., Model-free kinetics. Journal of Thermal Analysis and Calorimetry, 2006. 83(1): p. 45-51.
487 488 489
18.
Aboyade, A.O., et al., Thermogravimetric Study of the Pyrolysis Characteristics and Kinetics of Coal Blends with Corn and Sugarcane Residues. Fuel Processing Technology, 2013. 106: p. 310-320.
490 491 492
19.
Meesri, C. and B. Moghtaderi, Lack of synergetic effects in the pyrolytic characteristics of woody biomass/coal blends under low and high heating rate regimes. Biomass & Bioenergy, 2002. 23(1): p. 55-66.
493 494
20.
Vuthaluru, H.B., Investigations into the pyrolytic behaviour of coal/biomass blends using thermogravimetric analysis. Bioresource Technology, 2004. 92(2): p. 187-195. 22
ACS Paragon Plus Environment
Page 23 of 33
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Energy & Fuels
495 496 497
21.
Zhou, L., Wang, Y., Huang, Q., Cai, J., Thermogravimetric characteristics and kinetics of plastic and biomass blends co-pyrolysis. Fuel Processing Technology, 2006. 87: p. 963-969.
498 499
22.
Yaman, S. and H. Haykiri-Acma, Synergy in devolatilization characteristics of lignite and hazelnut shell during co-pyrolysis. Fuel, 2007. 86(3): p. 373-380.
500 501 502
23.
De Jong, W., Nola, G.Di., Venneker, B.C.H., Spliethoff, H., Wojtowicz, M.A., TG–FTIR pyrolysis of coal and secondary biomass fuels: determination of pyrolysis kinetic parameters for main species and NOx precursors. Fuel, 2007. 86: p. 2367-2376.
503 504
24.
Vamvuka, D., et al., Pyrolysis characteristics and kinetics of biomass residuals mixtures with lignite. Fuel, 2003. 82(15-17): p. 1949-1960.
505 506
25.
Garcı̀a-Pèrez, M., et al., Co-pyrolysis of sugarcane bagasse with petroleum residue. Part I: thermogravimetric analysis. Fuel, 2001. 80(9): p. 1245-1258.
507 508
26.
Biagini, E., et al., Devolatilization rate of biomasses and coal-biomass blends: an experimental investigation. Fuel, 2002. 81(8): p. 1041-1050.
509 510
27.
Cai, J., et al., Thermogravimetric analysis and kinetics of coal/plastic blends during copyrolysis in nitrogen atmosphere. Fuel Processing Technology, 2008. 89(1): p. 21-27.
511 512
28.
Di Blasi, C., Modeling chemical and physical processes of wood and biomass pyrolysis. Progress in Energy and Combustion Science, 2008. 34(1): p. 47-90.
513 514
29.
Sadhukhan, A.K., Gupta, P., Saha, R.K., Modeling and experimental studies on pyrolysis of biomass particles. Journal of Analytical and Applied Pyrolysis, 2008. 81: p. 183-192.
515 516
30.
Ahuja, P., S. Kumar, and P.C. Singh, A model for primary and heterogeneous secondary reactions of wood pyrolysis. Chemical Engineering Technology, 1996. 19: p. 272-282.
517 518
31.
Coats, A.W. and J.P. Redfern, Kinetic Parameters from Thermogravimetric Data. Nature, 1964. 201(491): p. 68-69.
519 520 521
32.
Koufopanos, C.A., Papayannakos, N., Modeling of the pyrolysis of biomass particles: studies on kinetics thermal and heat transfer effects. Canadian Journal of Chemical Engineering, 1991. 69: p. 907-915.
522 523
33.
Sima-Ella, E., G. Yuan, and T. Mays, A simple kinetic analysis to determine the intrinsic reactivity of coal chars. Fuel, 2005. 84(14-15): p. 1920-1925.
524 525 526
34.
Junqing Cai, Y.W., Limin Zhou, Qunwu Huang, Thermogravimetric analysis and kinetics of coal/plastic blends during co-pyrolysis in nitrogen atmosphere. Fuel Processing Technology, 2008. 89: p. 21-27.
527 528
35.
Hatakeyama, T. and F.X. Quinn, Thermal Analysis – Fundamentals and Applications to Polymer Science. 1999, Chichester.: John Wiley and Sons. . 23
ACS Paragon Plus Environment
Energy & Fuels
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60
Page 24 of 33
529 530 531 532
36.
Bhagavatula, A., Thermo-Chemical Conversion of Coal-Biomass Blends: Kinetics Modeling of Pyrolysis, Moving Bed Gasification and Stable Carbon Isotope Analysis, in Chemical and Materials Engineering, Ph.D Dissertation. 2014, University of Kentucky: Lexington, KY, USA.
533 534 535
37.
Bhagavatula, A., et al., Evaluation of Thermal Evolution Profiles and Estimation of Kinetic Parameters for Pyrolysis of Coal/Corn Stover Blends Using Thermogravimetric Analysis. Journal of Fuels, 2014: p. 1-12.
536 537
38.
Kissinger, H.E., Reaction Kinetics in Differential Thermal Analysis. Analytical Chemistry, 1957. 29(11): p. 1702-1706.
538 539 540 541
39.
Freeman, E.S. and B. Carroll, The Application of Thermoanalytical Techniques to Reaction Kinetics: The Thermogravimetric Evaluation of the Kinetics of the Decomposition of Calcium Oxalate Monohydrate. The Journal of Physical Chemistry, 1958. 62(4): p. 394-397.
542 543 544
40.
Jerez, A., A modification to the Freeman and Carroll method for the analysis of the kinetics of non-isothermal processes. Journal of Thermal Analysis, 1983. 26(2): p. 315318.
545 546 547
41.
Fermoso, J., et al., Co-gasification of different rank coals with biomass and petroleum coke in a high-pressure reactor for H(2)-rich gas production. Bioresource technology, 2010. 101(9): p. 3230-5.
548 549 550
42.
Gopalakrishnan, S. and R. Sujatha, Comparative thermoanalytical studies of polyurethanes using Coats-Redfern, Broido and Horowitz-Metzger methods Der Chemica Sinica, 2011. 2(5): p. 103-117.
551 552
43.
Syed, S., et al., Kinetics of pyrolysis and combustion of oil shale sample from thermogravimetric data. Fuel, 2011. 90(4): p. 1631-1637.
553 554
44.
Anthony, D.B. and J.B. Howard, Coal Devolatilization and Hydrogasification. AICHE, 1976. 22(4): p. 625-656.
555 556
45.
Li, Z., et al., Analysis of coals and biomass pyrolysis using the distributed activation energy model. Bioresource technology, 2009. 100(2): p. 948-52.
557 558
46.
Miura, K. and T. Maki, A Simple Method for Estimating f (E) and K0 (E) in the Distributed Activation Energy Model. Energy and Fuels, 1998. 12: p. 864-869.
559 560 561
47.
Please, C.P., M.J. McGuinness, and D.L.S. McElwain, Approximations to the distributed activation energy model for the pyrolysis of coal. Combustion and Flame, 2003. 133(1– 2): p. 107-117.
562 563
48.
Scott, S.A., et al., Thermogravimetric measurements of the kinetics of pyrolysis of dried sewage sludge. Fuel, 2006. 85(9): p. 1248-1253.
24
ACS Paragon Plus Environment
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Energy & Fuels
564 565 566
49.
Scott, S.A., et al., An algorithm for determining the kinetics of devolatilisation of complex solid fuels from thermogravimetric experiments. Chemical Engineering Science, 2006. 61(8): p. 2339-2348.
567 568 569
50.
Saloojee, F., Kinetics of Pyrolysis and Combustion of South African Coal Using the Distributed Activation Energy Model, in Faculty of Engineering and Built Environment. 2011, University of Witwatersrand: Johannesburg.
570 571
51.
Introduction Department of Energy Coal http://www.energy.psu.edu/copl/doesb.html.
572 573 574
52.
ASTM Standard D7582-12, "Standard Test Methods for Proximate Analysis of Coal and Coke by Macro Thermogravimetric Analysis". 2013: ASTM International, West Conshohocken, PA.
575 576 577
53.
ASTM Standard D5373-08, "Standard Test Methods for Determination of Carbon, Hydrogen and Nitrogen in Analysis Samples of Coal and Carbon in Analysis Samples of Coal and Coke". 2013, ASTM International: West Conshohocken, PA.
578 579 580
54.
ASTM Standard D4239-12, "Standard Test Method for Sulfur in the Analysis Sample of Coal and Coke Using High-Temperature Tube Furnace Combustion". 2013: ASTM International, West Conshohocken, PA.
581
Sample
Bank
&
Database
in
Table Captions
582 583
Table 1: Proximate and Elemental Analysis of Feedstocks.
584
Table 2: Method 1: Pyrolysis kinetic parameters for single fuels and blended feedstocks using
585
distributed activation energy model (Gaussian distribution of activation energies).
586
Table 3: Method 2: Pyrolysis kinetic parameters and number of devolatilization reactions
587
obtained for various feedstocks using matrix inversion algorithm.
588
Figure Captions
589
Figure 1: Plots for estimating the activation energy and Arrhenius constant for pyrolysis of
590
DECS-38 sub- bituminous coal at various heating rates using DAEM (Method 1).
591
Figure 2: Comparison between experimental and calculated devolatilization weight loss of
592
DECS-38 sub- bituminous coal with increasing temperature using DAEM (Method 1).
25
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593
Figure 3: Plots for estimating the number of parallel reactions, range of activation energies and
594
Arrhenius constants for pyrolysis of DECS-38 sub- bituminous coal at various heating rates
595
using Matrix Inversion Algorithm (Method 2).
596
Figure 4: Comparison of experimental and predicted values for devolatilization of DECS-38 sub-
597
bituminous coal using the matrix inversion algorithm (Method 2). (a) weight loss vs temperature
598
at known heating rates of 10 °C/min and 20 °C/min, (b) derivative weight loss vs temperature at
599
10 °C/min and 20 °C/min, (c) weight loss vs temperature at unknown heating rates of 5 °C/min
600
and 40 °C/min, (d) derivative weight loss vs temperature at 5 °C/min and 40 °C/min.
601 602 603 604 605 606 607 608 609 610 611 612 613 614 615 616
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Energy & Fuels
Table 1: Proximate and Elemental Analysis of Feedstocks.
617
Feedstock
DECS-38 SubBituminous Coal DECS-25 Lignite Coal
Proximate Analysis (As Received Basis) % % % Fixed Volatile Moisture Carbon Matter
Elemental Analysis (As Received Basis) % Ash
%C
%H
%N
%S
%O
22.01
39.66
34.58
3.75
56.82
3.95
0.98
0.44
12.36
34.91
27.32
30.05
7.71
42.80
2.99
0.61
0.47
10.50
Corn Stover
5.66
10.32
76.15
7.87
42.33
6.71
0.73
0.30
42.06
Switchgrass
4.87
9.35
83.62
2.16
45.76
8.09
0.32
0.08
42.87
618 619 620 621 622 623 624 625 626 627 628 629 630 631 632 633 634
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635
Table 2: Method 1: Pyrolysis kinetic parameters for single fuels and blended feedstocks
636
using distributed activation energy model (Gaussian distribution of activation energies).
Feedstock Materials
Activation Energy Range KJ/mol
Peak f (E), KJ/mol
Peak Activation Energy, KJ/mol
Arrhenius Constant Range, min-1
Correlation Coefficient, R2
DECS-38 Sub-Bituminous Coal (SB)
120-578
0.00575
269
e20- e53
0.991
DECS-25 Lignite Coal (LG)
100-446
0.00936
210
e19-e43
0.985
Corn Stover (CS)
91-256
0.00859
171
e14-e40
0.995
10% CS + 90% SB
118-374
0.0042
220
e23- e46
0.986
30% CS + 70% SB
110-350
0.0061
175
e17- e46
0.987
10% CS + 90% LG
95-396
0.0047
226
e27- e42
0.981
30% CS + 70% LG
92-320
0.00875
154
e17- e26
0.971
637 638 639 640 641 642 643 644 645 646
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Table 3: Method 2: Pyrolysis kinetic parameters and number of devolatilization reactions
648
obtained for various feedstocks using matrix inversion algorithm
649
(Correlation Coefficient for actual weight loss vs predicted weight loss, R2 > 0.99 for all feedstocks)
Feedstock Materials
Activation Energy Range
Arrhenius Constant Range
KJ/mol
sec-1
No. of Reactions
DECS-38 Sub-Bituminous Coal (SB)
35
84-683
9E+5 – 5E+32
DECS-25 Lignite Coal (LG)
29
93-300
2E+8 – 2E+14
Corn Stover (CS)
7
55-226
7E+4 – 4E+13
Switchgrass (SG)
11
40-175
1E+0 – 2E+13
10% CS + 90% SB
29
75-722
2E+9 – 5E+41
30% CS + 70% SB
20
89-607
2E+7 – 5E+45
10% CS + 90% LG
25
67-356
2E+5 – 6E+15
30% CS + 70% LG
22
78-320
3E+9 – 2E+22
10% SG + 90% SB
28
112-796
2E+8-2E+51
30% SG + 70% SB
24
41-673
1E+3-8E+31
10% SG + 90% LG
28
59-237
1E+3-4E+29
30% SG + 70% LG
24
40-231
1E+0-5E+17
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650
651 652
Figure 1: Plots for estimating the activation energy and Arrhenius constant for pyrolysis of
653
DECS-38 sub- bituminous coal at various heating rates using DAEM (Method 1).
654 655 656 657 658 659 660 661 662 663 664
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Energy & Fuels
665 666 667
668 669
Figure 2: Comparison between experimental and calculated devolatilization weight loss of
670
DECS-38 sub- bituminous coal with increasing temperature using DAEM (Method 1).
671 672 673 674 675 676 677 678 679 680
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681 682 683
0.07
684 0.06
1200
35 parallel reactions identified during devolatilization of DECS-38 sub-bituminous coal
1000
685 0.05 800
Ea, KJ/mol
686 0.04
687 688
F0
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0.03
Activation energy range: 84 – 683 KJ/mol
600
Mean: 338 KJ/mol
400
689
0.02
690
0.01
691 692
0 0.55
200
0.6
0.65
0.7
0.75
0.8
0.85
0.9
0.95
1
0 0.55
Mass Fraction Remaining
0.6
0.65
0.7
0.75
0.8
Mass Fraction Remaining
693 694 695 696 697 698 699 700 701 702 703
Figure 3: Plots for estimating the number of parallel reactions, range of activation energies and
704
Arrhenius constants for pyrolysis of DECS-38 sub- bituminous coal at various heating rates
705
using Matrix Inversion Algorithm (Method 2).
706 707 708
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0.85
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709 710 711 712
713 714
Figure 4: Comparison of experimental and predicted values for devolatilization of DECS-38 sub-
715
bituminous coal using the matrix inversion algorithm. (a) weight loss vs temperature at known
716
heating rates of 10 °C/min and 20 °C/min, (b) derivative weight loss vs temperature at 10 °C/min
717
and 20 °C/min, (c) weight loss vs temperature at unknown heating rates of 5 °C/min and 40
718
°C/min, (d) derivative weight loss vs temperature at 5 °C/min and 40 °C/min.
719
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