a novel mathematical modelling of waste biomass
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University of Southern Denmark
A novel mathematical modelling of waste biomass decomposition to facilitate rapid methanepotential prediction
Vazifehkhoran, Ali Heidarzadeh; Triolo, Jin Mi
Published in:Journal of Cleaner Production
DOI:10.1016/j.jclepro.2019.01.161
Publication date:2019
Document version:Accepted manuscript
Document license:CC BY-NC-ND
Citation for pulished version (APA):Vazifehkhoran, A. H., & Triolo, J. M. (2019). A novel mathematical modelling of waste biomass decomposition tofacilitate rapid methane potential prediction. Journal of Cleaner Production, 220, 1222-1230.https://doi.org/10.1016/j.jclepro.2019.01.161
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Accepted Manuscript
A novel mathematical modelling of waste biomass decomposition to facilitate rapid methane potential prediction
Ali Heidarzadeh Vazifehkhoran, Jin M. Triolo
PII: S0959-6526(19)30180-5
DOI: 10.1016/j.jclepro.2019.01.161
Reference: JCLP 15548
To appear in: Journal of Cleaner Production
Received Date: 02 March 2018
Accepted Date: 14 January 2019
Please cite this article as: Ali Heidarzadeh Vazifehkhoran, Jin M. Triolo, A novel mathematical modelling of waste biomass decomposition to facilitate rapid methane potential prediction, Journal
(2019), doi: 10.1016/j.jclepro.2019.01.161of Cleaner Production
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1 A novel mathematical modelling of waste biomass decomposition to facilitate rapid methane
2 potential prediction
3 Ali Heidarzadeh Vazifehkhoran, Jin M. Triolo*
4 University of Southern Denmark, Faculty of Engineering, Institute of Chemical Engineering,
5 Biotechnology and Environmental Technology, Campusvej 55, DK-5230 Odense M, Denmark
6 *Corresponding author. Tel: +4531794600; E-mail: jmt@kbm.sdu.dk
7 Abstract
8 Biogas production is known to be the most sustainable bioenergy technology available owing to
9 its utilization of waste biomass. Due to the widely ranging energy contents of major organic
10 carbons and their diverse degradation pathways, as well as their highly varying hydrolysis
11 capacities, predicting methane yield is not as simple as predicting the production of other
12 biofuels. This study investigated the hydrolysis behaviour of organic compounds using the
13 operational conditions of real-scale biogas plants (hydraulic retention time (HRT) of 15, 20, 30,
14 and 45 days) and explored a new approach to determine the biochemical methane potential
15 (BMP), which can be used to predict the methane yield of a wide range of agro-industrial
16 wastes. The degradation of hemicelluloses and cellulose increased gradually, closely following
17 first-order degradation kinetics, at longer retention times. In spite of their longer retention times,
18 only 45% of hemicelluloses and 34% of cellulose decomposed. The newly proposed BMP
19 model was validated using 65 internal and external datasets. The model error (RMSEP) was in
20 the range of 37.4 to 87.7 NL CH4 kg VS–1 while the relative model error (rRMSEP) was in the
21 range of 12.1%–47.8%. The model fits best to gently lignified biomass, but the overestimated
22 results obtained with woody biomass and winter harvested grass indicate that further
23 investigation of the hydrolysis of well-lignified biomass is required to enhance the precision of
24 the model.
25 Keywords: Anaerobic digestion; BMP model; lignocellulose; lignin; CSTR; methane
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1 Nomenclature
VS Volatile solids
DM Dry matter
TKN Total Kjeldahl nitrogen
TAN Total ammoniacal nitrogen
NDF Neutral detergent fiber
ADF Acid detergent fiber
ADL Acid detergent lignin
BMP (NL CH4 kg VS–1) Biochemical methane potential
TBMP (NL CH4 kg VS–1) Theoretical biochemical methane potential
𝑑𝑓𝜃 (%) The decay of an organic compound i
𝑑𝑓∞ (%) The ultimate decay of an organic compound i
k (day-1) The decay rate constant for a fraction
θ (day) Hydraulic retention time
(NL CH4 L–1 day-1)𝑟𝐶𝐻4 the specific rate of CH4 production
Mi0 (NL CH4 kg VS–1) TBMP of organic compounds (i) in the input feedstock
RMSEP Residual mean square error in prediction
rRMSEP Relative residual mean square error in prediction
VSED Easily degradable VS
VSSD Slowly degradable VS
VSND Non-degradable VS
XP Crude proteins
XL Crude lipids
(%)𝑉𝑆𝑋𝑃 Concentration of crude protein in VS
(%)𝑑𝑓𝑋𝑃 Ultimate degradation factor of 𝑉𝑆𝑋𝑃
(%)𝑉𝑆𝐻𝑀 Concentration of hemicellulose in VS
(%)𝑑𝑓𝐻𝑀 Ultimate degradation factor of 𝑉𝑆𝐻𝑀
(%)𝑉𝑆𝐶𝐸 Concentration of cellulose in VS
(%)𝑑𝑓𝐶𝐸 Ultimate degradation factor of 𝑉𝑆𝐶𝐸
(NL CH4 kg VS–1)𝐵𝑀𝑃𝑃 Predicted BMP
(%)𝑉𝑆𝑉𝐹𝐴 Concentration of VFA in VS
(%)𝑉𝑆𝐸𝑡. Concentration of ethanol in VS
(%)𝑉𝑆𝑋𝐿 Concentration of crude lipid in VS
(%)𝑉𝑆𝐶𝐵 Concentration of non-fibrous carbohydrates in VS
(NL CH4 kg VS–1)𝑇𝐵𝑀𝑃𝑉𝐹𝐴 Stoichiometric methane potential of 𝑉𝑆𝑉𝐹𝐴
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(NL CH4 kg VS–1)𝑇𝐵𝑀𝑃𝐸𝑡. Stoichiometric methane potential of 𝑉𝑆𝐸𝑡.
(NL CH4 kg VS–1)𝑇𝐵𝑀𝑃𝑋𝑃 Stoichiometric methane potential of 𝑉𝑆𝑋𝑃
(NL CH4 kg VS–1)𝑇𝐵𝑀𝑃𝑋𝐿 Stoichiometric methane potential of 𝑉𝑆𝑋𝐿
(NL CH4 kg VS–1)𝑇𝐵𝑀𝑃𝐻𝑀 Stoichiometric methane potential of 𝑉𝑆𝐻𝑀
(NL CH4 kg VS–1)𝑇𝐵𝑀𝑃𝐶𝐿 Stoichiometric methane potential of 𝑉𝑆𝐶𝐿
(NL CH4 kg VS–1)𝑇𝐵𝑀𝑃𝐶𝐵 Stoichiometric methane potential of 𝑉𝑆𝐶𝐵
1 1. Introduction
2 Biogas production by anaerobic digestion (AD) is known to be the most sustainable bioenergy
3 technology available owing to its utilization of waste biomass as a substrate, greenhouse gas
4 reduction efficacy, and production of digestate, which is used as a fertilizer (Saidu et al., 2013).
5 The flexibility of using biomass as a source of energy is another benefit. For example, while
6 bioethanol and biodiesel require specific types of biomass as substrates, biogas can be generated
7 from any organic compound, either solid or liquid. Therefore, a wide range of biomasses,
8 including animal slurry, agricultural residues, municipal solid waste, and food processing waste
9 can be used to produce biogas (Tuesorn et al., 2013).
10 Owing to the diverse AD pathways of organic carbons, predicting the actual methane yield is not
11 as simple as predicting the yield of other biofuels. Furthermore, owing to the flexibility in the
12 biomasses that can be used for biogas production and the fact that AD of single substrates
13 (mono-digestion) suffers from drawbacks related to substrate properties, co-digestion of different
14 biomasses has been implemented in industrial biogas plants (Mata-Alvarez et al., 2014). The co-
15 digestion of organic waste materials with animal manure is appealing for biogas production from
16 food, food processing, slaughterhouse, fruit, and vegetable wastes (Llaneza Coalla et al., 2009).
17 However, the full energy content of major organic carbons ranges widely from 375 NL CH4 kg–1
18 (organic acids) to 1014 NL CH4 kg–1 (lipid). Moreover, their hydrolysis behaviour, especially of
19 lignocellulose-combined carbohydrates, is strongly affected by the physicochemical bonding
20 within and between lignocellulosic macromolecules, i.e. the lignification degree, amorphous and
21 crystalline contents in cellulose, and the degree of crystallinity are affected by the nature of
22 bonding. Furthermore, the hydrolysis mechanism of these biopolymers and their structural
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1 barriers against enzymatic hydrolysis are not clearly understood, which in turn hinders the
2 extensive use of alternative potential biomasses (Wilson, 2011).
3 Many researchers have attempted to derive the kinetic constants of specific biomasses to predict
4 biogas yield in real scale biogas reactors using the data from batch AD experiments (Ibrahim,
5 2014; Syaichurrozi et al., 2015). However, the decomposition environment in real scale
6 continuous biogas reactors is not similar to that in a batch test. Differences exist in terms of the
7 limited microbial population and their acclimation issues, agitation effect, etc. With regard to the
8 energy contents, biochemical methane potential (BMP) is the most commonly used parameter to
9 assess the methane potential of a biomass and numerous studies have dealt with analysing the
10 BMPs of a wide range of biomasses. Due to the time-consuming and labour-intensive
11 determination procedure as well as the high possibility of errors in the reproducibility of BMP
12 results, many researchers have suggested alternative measurements (Bayard et al., 2018; Bekiaris
13 et al., 2015; Cu et al., 2015; Doublet et al., 2013; Raju et al., 2011; Strömberg et al., 2015; Triolo
14 et al., 2014, 2011; Xu et al., 2014). Simple or multiple regression statistical approaches were
15 developed (Bayard et al., 2016; Cu et al., 2015; Kafle and Chen, 2016; Thomsen et al., 2014) and
16 spectroscopic methods, such as applying near infrared spectroscopy (Doublet et al., 2013; Raju et
17 al., 2011; Triolo et al., 2014) or Fourier transform mid-infrared photoacoustic spectroscopy
18 (Bekiaris et al., 2015), were suggested. However, the state-of-the art technology still requires
19 sample drying prior to obtaining the spectra, which makes real time analysis of BMP impossible.
20 The aim of the present study is to provide a new insight on the hydrolysis behaviour of major
21 organic compounds during co-digestion in the semi-continuous mode and to attempt at
22 developing a new BMP model from the results.
23 2. Materials and methods
24 2.1. Feedstock and inoculum
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1 Energy-dense and easily degradable agro-industrial wastes and industrial wastewater as co-
2 substrates (25 wt.%) and pig manure (75 wt.%) as prime feedstock were examined in both batch
3 and semi-continuous modes. The co-digestion parameters, i.e. the mixing ratio and choice of co-
4 substrate, were similar to those used commonly in Danish central biogas plants; in these plants,
5 25 wt.% of diverse energy-dense wastes (slaughterhouse waste, expired canned ham, fish and
6 dairy waste, etc.) are typically co-digested with animal manure. Brewery wastewater was
7 collected from a local brewery (Odense, Denmark) and processed meat (canned pork and ham)
8 were purchased from supermarkets. Inoculum, pig manure and slaughterhouse waste were
9 obtained from the Fangel biogas plant (Odense, Denmark). The feed for AD consisted of 75
10 wt.% pig manure and 25 wt.% of the co-substrate mixture. The final composition of the feed was
11 75 wt.% pig manure, 11.25 wt.% processed meat waste, 11.25 wt.% brewery waste, and 2.5 wt.%
12 slaughterhouse waste. The dry matter (DM) and VS content of inoculum were 47.8 (±2.3) and
13 29.6 (±1.8) g kg–1 respectively.
14 2.2. Anaerobic digestion in the semi-continuous mode
15 Four stirred tank reactors (CSTRs) with a total volume of 20 L were utilized for the AD process.
16 Each reactor was made of two stainless steel plates and an acrylic cylinder (diameter 360 mm
17 and height 360 mm) was fixed between the two plates. The engine was installed at the bottom of
18 the reactor to mix the medium using two radial flow-impellers of 0.2 m diameter. In order to
19 supply the heat required for the reaction, four 50 W elements were attached to the bottom plate
20 and were controlled by a temperature sensor inside the reactor. The gas exhaust and feeding inlet
21 were supported by the top plate, while the two digestate outlets were fixed on the bottom plate at
22 two different levels.
23 The inoculum was obtained from the Fangel biogas plant, which processes 75 wt.% of animal
24 manure as the prime feedstock and 25 wt.% of industrial food processing waste at mesophilic
25 conditions. After an acclimation period of 14 days, the four reactors were subjected to different
26 organic loading rates (OLRs) and hydraulic retention times (HRTs) of 15, 20, 30, and 45 days
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1 under mesophilic conditions at 37°C. The volatile solid (VS) content of the feed mixture was
2 58.26 g kg–1 while the OLR values were 3.88 g VS L–1 day–1, 2.91 g VS L–1 day–1, 1.94 g VS L–1
3 day–1, and 1.29 g VS L–1 day–1. The reactors were fed on a daily basis and the gas production was
4 monitored. Volatile fatty acids (VFAs) were measured twice a week to monitor the stability of
5 the anaerobic digestion process. The AD operation was continued for a period of three times as
6 long as the HRTs. At the end of the operation time, the digestion was terminated and the
7 digestates were removed and placed in a freezer for further analysis.
8 2.3. BMP assay
9 The German standard method (VDI 4630, 2006) was used to determine the BMP of the
10 substrates and digestates from each reactor using batch reactors of 1 L capacity. The inoculum-
11 to-substrate ratio (I/S ratio) was set at 2.5 based on the VS content. All the experiments were
12 conducted in triplicate. The biogas yield of inoculum as a blank test for the correction of gas
13 production and methane yield of microcrystalline cellulose (Avicel® PH-101, Sigma-Aldrich) as
14 a reference material was determined. After mixing the substrate and inoculum, which had already
15 been degassed for two weeks, 150 mL of a nitrogen-flushed buffer medium was added to the
16 inoculum and substrate mixture according to the ISO standard method. The VS of BMP tests was
17 4.7 % (<10 %) ( ISO, 1995; Pham et al., 2013; Holliger et al., 2016). The batch digesters were
18 flushed with nitrogen gas to provide a fully anaerobic system. The BMP test was performed
19 under mesophilic conditions at 37°C for 60 days. The digesters were shaken manually to prevent
20 layering and to boost degassing. A syringe (Hamilton Super Syringe) was used to measure the
21 wet biogas volume and later, these gas volumes were corrected to dry biogas as normal litres.
22 CH4 concentration was determined using a gas chromatograph (GC; 7890A, Agilent
23 Technologies, USA) equipped with a thermal conductivity detector and a 30 m x 0.320 mm
24 column (J&W 113-4332, Agilent Technologies, USA).
25 2.4. Sample and digestate analysis
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1 The DM was measured according to a standard procedure (APHA, 2005) by drying the samples
2 at 105°C. The ash content of the dry matter was determined after placing the dried samples in a
3 muffle furnace at 550°C for 2 h and the VS content was calculated by the difference in the DM
4 and ash content. Total Kjeldahl nitrogen (TKN) and total ammoniacal nitrogen (TAN) were
5 determined according to a standard method (APHA, 2005). The crude lipid content was
6 measured by Soxhlet extraction.
7 The obtained DM results were corrected because during DM measurement, easily volatile
8 compounds evaporate. It is important to measure their concentration in the untreated sample and
9 add this concentration to the oven-dried samples to obtain the corrected DM (Weissbach and
10 Strubelt, 2008). VFA concentration from C2–C5 was determined using a gas chromatograph
11 (Hewlett Packard 6890, Italy) with a flame ionization detector and a 30 m x 0.25 mm x 0.25 μm
12 column (HP-INNOWax, USA) (Larsen et al., 2017). Ethanol content was measured by high-
13 performance liquid chromatography (HPLC; Agilent 1100, Germany). For alcohol and VFA
14 analysis, the samples were filtered through a 0.2 μm nylon membrane filter prior to injection into
15 the GC and HPLC columns. For VFA determination, the pH of the samples was adjusted to about
16 2 by adding phosphoric acid (Larsen et al., 2017). Lignin, cellulose, and hemicellulose were
17 determined according to Van Soest’s characterization for fibre analysis (Van Soest, 1963).
18 2.5. Data analysis
19 Crude protein was determined by multiplying the difference between TKN and TAN by 6.25
20 (Triolo et al., 2011). α-NDF was used to measure the total fibrous fractions consisting of
21 hemicellulose, cellulose, and lignin. Acid detergent fibre (ADF) includes cellulose and lignin
22 whereas acid detergent lignin (ADL) represents the lignin content. The hemicellulose content
23 was calculated from the difference between α-NDF and ADF and cellulose content was
24 calculated from the difference between ADF and ADL (Triolo et al., 2011).
25 Bushwell’s formula was used to calculate the theoretical biochemical methane potential (TBMP)
26 of a specific compound with defined molecular formulae under standard conditions (273 K and
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1 101.325 kPa). TBMP is a term estimated by assuming the total conversion of a specific
2 compound to methane and carbon dioxide ( Symons and Buswell, 1933; Raposo et al., 2012):
3 (1)𝐶𝑛𝐻𝑎𝑂𝑏𝑁𝐶 + (𝑛 ―𝑎4 ―
𝑏2 +
3𝑐4 )𝐻2𝑂→(𝑛
2 +𝑎8 ―
𝑏4 ―
3𝑐8 )𝐶𝐻4 + (𝑛
2 ―𝑎8 +
𝑏4 +
3𝑐8 )𝐶𝑂2 + 𝑐𝑁𝐻3
4 (2)𝐵𝑡ℎ =(𝑛 2 + 𝑎 8 ― 𝑏 4 ― 3𝑐 8)22400
12𝑛 + 𝑎 + 16𝑏 + 14𝑐 𝑁𝐿 𝐶𝐻4 𝑘𝑔 𝑉𝑆 ―1
5 TBMP of the substrate and digestate was calculated using the TBMP of each VS compound; the
6 TBMPs of VFAs, ethanol, crude proteins, crude lipids, lignin, hemicellulose, cellulose, and
7 carbohydrates were 373, 730, 496, 1014, 727, 415, 415 and 415 NL CH4 kg VS–1, respectively.
8 2.6. Degradation kinetics and CH4 production model
9 The hydrolysis of organic matter for biogas production is often described by first-order kinetics
10 (Angelidaki et al., 2009; Dandikas et al., 2018; Ebrahimi-Nik et al., 2018; Hashimoto, 1989;
11 Triolo et al., 2014). As the degradation rate of organic compounds controlled by hydrolysis, first-
12 order kinetics is used to derive the kinetics equation. However consideration should be given to
13 the fact that each compound is composed of both degradable and non-degradable fractions.
14 (3)𝑆 = 𝑆𝐷 + 𝑆𝑁𝐷
15 (4)𝑑𝑆𝐷
𝑑𝑡 = ―𝑘𝑆𝐷
16 Therefore:
17 (5)𝑆𝐷 = 𝑆0𝐷.𝑒 ―𝑘𝜃
18 and/or (6)𝑑𝑓∞ =𝑆0𝐷
𝑆0𝑑𝑓𝜃 =
𝑆0𝐷 ― 𝑆𝐷 𝑆0
19 From the combination of Eq. (5) and (6), the degradation kinetics would be as follows:
20 (7)𝑑𝑓𝜃 = 𝑑𝑓∞ * (1 ― 𝑒 ―𝑘 𝜃)
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1 where S is the total concentration of an organic compound, SD is the concentration of the
2 degradable part of an organic compound, SND is the concentration of the non-degradable (inert)
3 part of an organic compound, dfθ is the decay of an organic compound (%) at a certain time, df∞
4 is the ultimate decay of an organic compound (%), k is the decay rate constant for an organic
5 compound (day–1) and θ is the HRT (days).
6 From Eq. (7), the specific rate of CH4 production can be predicted as shown below.
7 (8)𝑟𝐶𝐻4 =∑𝑛
𝑖 = 1(𝑑𝑓𝑖𝜃 ·𝑀𝑖0)
𝜃
8 Here, is the specific rate of CH4 production (NL CH4 L–1 day–1), dfiθ is the decay of an 𝑟𝐶𝐻4
9 organic compound i (%), and Mi0 is the TBMP of the organic compounds i in the input feedstock
10 (NL CH4 kg wet weight (ww)–1).
11 During the validation of the BMP prediction model, the precision of the model was tested using
12 external datasets by applying the statistical parameters of residual mean square error in
13 prediction (RMSEP) and relative residual mean square error in prediction (rRMSEP), which is
14 normalized RMSEP using the mean value of the measured BMP. Least-squares non-linear
15 regression was performed by minimising the residual sum of squares (RSS):
16 (9)𝑟𝑒𝑠𝑖𝑑𝑢𝑎𝑙 𝑠𝑢𝑚 𝑜𝑓 𝑠𝑞𝑢𝑎𝑟𝑒 (𝑅𝑆𝑆) = ∑𝑛𝑖 = 1(𝑦𝑖 ― 𝑦𝑖)2
17 where is the predicted value and the measured value. 𝑦𝑖 𝑦𝑖
18 3. Results and discussion
19 3.1. Characteristics of the substrates and digestates
20 The physicochemical characterization results together with the concentrations of major organic
21 compounds are presented in Table 1. Lignocelluloses were not present in any of the co-
22 substrates, but in contrast, the pig manure was mainly composed of lignocellulose. The brewery
23 wastewater was diluted to 7.8 g DM kg–1 and was mostly composed of ethanol. The
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1 slaughterhouse waste and processed meat waste, which were two types of semi-solid wastes,
2 contributed to a concentration of 70 g DM kg–1 in the feed mixture. The processed meat waste
3 was rich in both proteins and lipids while the slaughterhouse waste contained mostly lipids.
4 (Table 1 near here)
5 The characteristics of the pig manure used in this study (DM content and organic composition)
6 were similar to those used in previous studies (Møller et al., 2004; Tsapekos et al., 2017). The
7 high content of lignocelluloses in the pig manure clearly indicates that the pig manure is only a
8 recalcitrant substrate in the feed mixture. Although plant biomass, typically wood or agricultural
9 residues, such as straw and bagasse, are generally known as lignocellulosic biomasses, the
10 lignocellulosic characteristics of animal manure have been pointed out in recent studies due to its
11 large concentration (Bruni et al., 2010; Cu et al., 2015).
12 The organic composition of the mixture of these four substrates resulted in a fairly good balance
13 of lipids, proteins, and lignocelluloses with a small content of dissolved VS sources, i.e. ethanol,
14 VFAs, etc., which reduces the concentration of the recalcitrant lignocelluloses; meanwhile, the
15 proteins and lipids became the dominant organic compounds in the feed mixture (Table 1).
16 3.2. Methane potentials
17 Table 1 shows that the organic compositions of the four substrates agree well with the BMP and
18 biodegradability results. The BMP of pig manure was considerably lower than that of other co-
19 substrates. In fact, the BMP of slaughterhouse waste, which mostly contains lipids, was
20 approximately three times higher than the BMP of pig manure. The BMP calculated for pig
21 manure is in good agreement with previously reported values (Triolo et al., 2013). The
22 differences in the BMPs of the substrates were considerably more evident when the specific
23 methane potential was considered (NL CH4 kg ww –1). The values of the specific methane
24 potential values of the substrates were 9 NL CH4 kg ww –1 (pig manure), 145 NL CH4 kg ww –1
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1 (processed meat waste), 258 NL CH4 kg ww –1 (slaughterhouse waste), and 3.6 NL CH4 kg ww –1
2 (brewery wastewater).
3 Such large differences in the specific methane potentials of the substrates consequently led to
4 diverse levels of contribution to the overall methane potential of the feed mixture. Among
5 others, pig manure, which was 75 wt.% of the feed mixture, contributed to only 22% of the
6 overall methane potential. Moreover, the brewery wastewater contributed to only 1% of the
7 methane potential of the feed mixture. On the other hand, despite its content being only 2.5
8 wt.% in the feed mixture, slaughterhouse waste contributed to 23% of the overall methane
9 potential due to its high solid and lipid concentration. In the feed mixture, the contribution of
10 VFAs, ethanol, XP, XL, hemicellulose, cellulose, lignin and carbohydrate to its TBMP was 5, 1,
11 26, 47, 4, 6, 7 and 4 % respectively. Therefore, a large fraction of methane sources in the feed
12 mixture consisted of lipids.
13 (Table 2 near here)
14 The results highlight that the contribution of brewery wastewater to the overall methane potential
15 during the co-digestion of different biomasses was nearly negligible; however, it would be
16 effective as a buffer medium to dilute so-called inhibitors, especially when AD is carried out
17 with other protein and lipid substrates.
18 3.3. CH4 production and CSTR performance
19 Specific biogas and CH4 production rate (NL CH4 L–1 day–1) and VFAs concentration during AD
20 in semi-continuous mode in each reactor are plotted against time in Figure 1. It can be seen that
21 the CH4 production was steady and there was no clear inhibition in the gas yield. The CH4
22 content in the biogas was very stable and varied from 69% to 71%. The high CH4 concentration
23 in the exhausted biogas was probably due to the presence of lipids in the feed.
24 (Figure 1 near here)
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1 The VFA concentration gradually diminished at greater HRTs: (7.69 ± 0.17) g kg–1 (HRT 15
2 days), (2.96 ± 0.09) g kg–1 (HRT 20 days), and (0.65 ± 0.05) g kg–1 (HRT 30 days).
3 Accumulation of VFAs in the reactor was observed clearly at a HRT of 15 days; however, the
4 considerably high level of VFAs was stable throughout HRT durations of 20 days and 30 days.
5 Aguilar et al. (1995) showed that there was no inhibition in acetate degradation when the VFA
6 concentration was less than 4 g L–1; when it exceeded 10 g L–1, the AD process was inhibited
7 (Aguilar et al., 1995). Fortela et al. (2016) found that activated sludge microbial consortia were
8 highly inhibited at total VFA concentrations of 10 g L–1 and 20 g L–1 (Fortela et al., 2016).
9 TAN was moderately high, ranging from 3.77 g kg–1 to 4.02 g kg–1. Despite the high TAN
10 content in the reactors, there was no clear inhibition of ammonia; for example, the VFA
11 concentration varied widely with variations in the HRT and in the reactor with an HRT of 45
12 days, it was nearly zero in the steady state phase with no evidence of the inhibited methanogenic
13 activity caused by ammonia. The unclear inhibition due to TAN can be attributed to the fact that
14 the inoculum had adapted well after it was obtained from the biogas plant operated using manure,
15 food processing waste, and slaughterhouse waste.
16 Previous studies on ammonia inhibition reported a wide range of ammonia inhibition activities
17 (mostly expressed as TAN concentration) from 1.7 g L–1 to 14 g L–1; the large variations in the
18 TAN level have been discussed in terms of the different substrates used, inocula, pH,
19 temperature, other operational conditions, and acclimation (Chen et al., 2008; Yenigün and
20 Demirel, 2013). Regarding the adaptation of methanogens and acclimation to ammonia, Yenigün
21 and Demirel (2013) reported that AD occurred efficiently at concentration of TAN up to 9 g L–1
22 (Yenigün and Demirel, 2013).
23 3.4. Anaerobic digestion of organic compounds
24 The contents of crude lipids, crude proteins, cellulose, hemicelluloses, lignin, VFAs, and ethanol
25 were measured before and after digestion (Figure 2). As expected, ethanol was completely
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1 decomposed in all the reactors. It can be observed in Figure 2 that the degradation of lipids and
2 proteins was similar in all the reactors; it is noteworthy that crude lipid was not present in the
3 digestate in any of the reactors; 27% of the feed protein was present in the digestate, which
4 corresponds to a decomposition of 73% ± 3% of the crude protein. The remaining organic
5 nitrogen is probably non-degradable, i.e. lignin-combined nitrogen, or it is transformed to
6 microbial communities.
7 (Figure 2 near here)
8 Due to the presence of relatively high levels of VFAs at shorter HRTs, it is not clear whether the
9 lipid was completely digested or not within 15 days of AD; however, it can still be confirmed
10 that the entire lipid content was hydrolysed within 15 days and in addition, it can be stated that
11 the extent of hydrolysis of the lipid and protein was not affected by the operational time, given
12 that the retention time is long enough (≥15 days). It can be inferred from the biodegradability
13 index (BMP/TBMP) in Table 1 that the results obtained on the hydrolysis of lipids and proteins
14 were in good agreement with the ratio between BMP and TBMP. Consequently, the BMP of
15 lipid- and protein-rich biomass can be analyzed by measuring the protein and lipid content.
16 On the other hand, the degradation of the two lignocelluloses (hemicelluloses and cellulose)
17 increased gradually, closely following first-order degradation kinetics. Furthermore, the
18 degradation of hemicellulose was faster than that of cellulose. Interestingly, in spite of a long
19 retention time (HRT of 45 days), only 45% of the hemicelluloses and 34% of cellulose
20 decomposed, implying that 55% and 66% of hemicelluloses and cellulose, respectively, were
21 available in the feed mixture as compared to the initial feed.
22 The reason for the relatively easier hydrolysis of hemicellulose as compared to cellulose is due to
23 its amorphous structure. It is known that lignin does not degrade in the absence of oxygen and
24 our results also show that its concentration in all the digestates is nearly the same as its
25 concentration in the input feed mixture.
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1 Table 3 presents the first-order decay kinetic constants of cellulose and hemicellulose and their
2 statistical parameters calculated using Eq. (7). Figure 3 visualizes the degradation of cellulose
3 and hemicellulose in terms of the measured and predicted values and the simulation results of
4 200 days extended retention time.
5 (Table 3 near here)
6 (Figure 3 near here)
7 Residual analysis using Eq. (7) with 4 dataset points for both hemicellulose and cellulose
8 indicates that hemicellulose was composed of 59.3% VSSD while the remaining 40.7% was inert
9 (non-degradable VS (VSND)). In the case of cellulose, the fraction of VSSD was even smaller at
10 36.3% (Figure 3). Furthermore, when the first-order decay kinetics model was fitted using the
11 lignocellulose data points, it was found that 72.6% of the mass corresponded to VSND. Therefore,
12 it can be roughly assessed that the biodegradability of lignocellulose was ~37.4%. This result is
13 probably comparable with the biodegradability data of 55 lignocellulosic biomass samples
14 reported previously by Triolo et al. (2012), who reported the following values) hedge cuttings,
15 39.9(7.6)%; woody cuttings 32.7(5.2)%; wild plants 44.9(12.5)% (Triolo et al., 2012).
16 3.5. Prediction of BMP
17 With the aim of providing a new and alternative method for analysing the BMP, we categorized
18 organic compounds into three pools: easily degradable VS (VSED), VSSD, and VSND. VSED
19 includes non-lignocellulosic carbohydrate, organic acids, alcohols including all the intermediate
20 products produced during hydrolysis, and methanogens; crude lipid was also categorized as VSED
21 due to its complete decomposition within 15 days. Crude protein was divided into VSED and
22 VSND, taking the remaining protein in the digestate into account. Hemicellulose and cellulose
23 were defined as VSSD and lignin VSND.
24 = + (1 – ) (10)𝑉𝑆𝑋𝑃 𝑑𝑓𝑋𝑃 𝑉𝑆𝑋𝑃 𝑑𝑓𝑋𝑃 𝑉𝑆𝑋𝑃
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1 Here, is the concentration of crude protein in VS and is the ultimate degradation 𝑉𝑆𝑋𝑃 𝑑𝑓𝑋𝑃
2 factor of , which has a value of 0.73. 𝑉𝑆𝑋𝑃
3 Eq. (11) and (12) were deduced from Table (3).
4 = + (1 – ) (11)𝑉𝑆𝐻𝑀 𝑑𝑓𝐻𝑀 𝑉𝑆𝐻𝑀 𝑑𝑓𝐻𝑀 𝑉𝑆𝐻𝑀
5 is the concentration of hemicellulose in VS and is the ultimate degradation factor of 𝑉𝑆𝐻𝑀 𝑑𝑓𝐻𝑀
6 , which has a value of 0.59.𝑉𝑆𝐻𝑀
7 = + (1 – ) (12)𝑉𝑆𝐶𝐸 𝑑𝑓𝐶𝐸 𝑉𝑆𝐶𝐸 𝑑𝑓𝐶𝐸 𝑉𝑆𝐶𝐸
8 is the concentration of cellulose in VS and is the ultimate degradation factor of , 𝑉𝑆𝐶𝐸 𝑑𝑓𝐶𝐸 𝑉𝑆𝐶𝐸
9 which has a value of 0.36.
10 Finally, the BMP of the biomass can be estimated by Eq. (13).
11 𝐵𝑀𝑃𝑃 = 𝑇𝐵𝑀𝑃𝑉𝐹𝐴·𝑉𝑆𝑉𝐹𝐴 + 𝑇𝐵𝑀𝑃𝐸𝑡.·𝑉𝑆𝐸𝑡. + 𝑑𝑓𝑋𝑝·𝑇𝐵𝑀𝑃𝑋𝑃 ·𝑉𝑆𝑋𝑃 + 𝑇𝐵𝑀𝑃𝑋𝐿·𝑉𝑆𝑋𝐿 +12 (13)𝑑𝑓𝐻𝑀·𝑇𝐵𝑀𝑃𝐻𝑀·𝑉𝑆𝐻𝑀 + 𝑑𝑓𝐶𝐿·𝑇𝐵𝑀𝑃𝐶𝐿·𝑉𝑆𝐶𝐿 + 𝑇𝐵𝑀𝑃𝐶𝐵 ∙ 𝑉𝑆𝐶𝐵
13 refers to the predicted BMP (NL CH4 kg VS–1); , , 𝐵𝑀𝑃𝑃 𝑉𝑆𝑉𝐹𝐴, 𝑉𝑆𝐸𝑡. 𝑉𝑆𝑋𝑃, 𝑉𝑆𝑋𝐿 , 𝑉𝑆𝐻𝑀, 𝑉𝑆𝐶𝐿
14 and are VS compounds referring to VFA, ethanol, crude protein, crude lipid, hemicellulose, 𝑉𝑆𝐶𝐵
15 cellulose, and non-fibrous carbohydrates, respectively (kg kg VS–1). , ,𝑇𝐵𝑀𝑃𝑉𝐹𝐴 𝑇𝐵𝑀𝑃𝐸𝑡.
16 are stoichiometric methane potentials 𝑇𝐵𝑀𝑃𝑋𝑃 , 𝑇𝐵𝑀𝑃𝑋𝐿, 𝑇𝐵𝑀𝑃𝐻𝑀, 𝑇𝐵𝑀𝑃𝐶𝐿, and 𝑇𝐵𝑀𝑃𝐶𝐵
17 (NL CH4 kg VS–1) corresponding to , , and , 𝑉𝑆𝑉𝐹𝐴, 𝑉𝑆𝐸𝑡. 𝑉𝑆𝑋𝑃, 𝑉𝑆𝑋𝐿 , 𝑉𝑆𝐻𝑀, 𝑉𝑆𝐶𝐿 𝑉𝑆𝐶𝐵
18 respectively; , , and are the ultimate degradation factors of , and 𝑑𝑓𝑋𝑃 𝑑𝑓𝐻𝑀 𝑑𝑓𝐶𝐿 𝑉𝑆𝑋𝑃, 𝑉𝑆𝑋𝑃
19 , respectively.𝑉𝑆𝑋𝑃
20 Different studies have used various approaches to predict BMP. These have mostly focused on a
21 statistical model using regression and correlation between BMP and some variables, especially
22 lignin, cellulose and hemicellulose (Bayard et al., 2016; Kafle and Chen, 2016; Thomsen et al.,
23 2014; Triolo et al., 2011; Xu et al., 2014). In the BMP model suggested in this paper, the
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1 coefficient for each compound was derived from their degradation kinetics, in which only
2 degradable components were taken into consideration. However further study is needed to
3 include the lignin effect on the degradation kinetics of cellulose and hemicellulose. As most of
4 the components were included in the present model, it can be used for a wide variety of
5 biomasses for which models based on the lignocellulosic fraction alone might not be very
6 effective or useful for proteinous and fatty substrates.
7 3.6. BMP model validation
8 The precision of the suggested model in predicting the BMP was tested using the samples from
9 this study. External validation was performed using the BMP results and compositions published
10 elsewhere as the reference data variables. The results obtained using the internal data were quite
11 precise with very low model error. The model error in prediction (RMSEPE) was only 25 (NL CH4
12 kg VS–1); thus, the normalized model error was low as well (4.2% of rRMSE). Even if the BMP
13 prediction model was not built by directly using the BMP values from the testing set, the
14 satisfactory validation results would however still obtained because the same samples were used
15 for validation. Nonetheless, the very high precision seen in Table 4 is most interesting, which
16 indicates that the calibrated model exhibits high precision.
17 For the validation of the suggested model, external data from 10 maize samples (Oslaj et al., 2010)
18 from Oslaj et al. (2010) and 51 lignocellulosic samples from the authors’ previous study (Triolo et
19 al., 2012) were used as the testing sets. In total, 65 external data sets were tested. The
20 lignocellulosic data sets were divided into two categories: 1) grasses and agricultural residues and
21 2) woody samples, and they were tested separately. In the case of the grass and agricultural residues,
22 the model was tested with and without four well-crystallized winter-harvested grasses with
23 critically low methane potentials. This was done to test the responses of the model to winter-
24 harvested grasses.
25 (Table 4 near here)
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1 The results of the validation exercise were found to be very interesting as the model had a tendency
2 to overestimate the BMP of woody biomass and winter-harvested grasses (Figure 4; Table 5). On
3 the other hand, it exhibited relatively fine precision when tested on green grasses with maize. The
4 obtained rRMSEPE values for maize and grasses were 12.1% and 15.8%, respectively, which
5 corresponds to a model error of 37.4 (NL CH4 kg VS–1) for maize and 49.9 (NL CH4 kg VS–1) for
6 straw. When the winter-harvested grasses were included, the relative model error increased to
7 19.6%. R2 decreased to 0.47 when winter grasses were excluded (Table 5). The higher correlation
8 level compared to the lower model precision when including winter harvested grasses is typically
9 seen in wider ranges of independent variables when including samples with very low methane
10 potentials (Triolo et al., 2011).
11 The BMP model was most precise in the case of the maize samples. This was probably because of
12 the highly homogeneous characteristics of the maize samples, when compared to a wide range of
13 lignocellulosic biomasses harvested through different seasons. Despite a low model error for maize,
14 there was no correlation found, probably due to low variation of methane potentials included in
15 the model validation. Except for the woody and winter-harvested grass samples, the predicted and
16 measured BMP values are not clearly biased, as can be seen in Figure 4.
17 (Figure 4 near here)
18 Only a few BMP prediction studies on organic compounds carried out external validation;
19 therefore, a comparison was not possible to analyze the precision of the BMP model. Comparing
20 this model to the other alternative methods used to predict BMP (for e.g. near infrared spectroscopy
21 (NIR)), it was found that the results were almost equivalent (Bekiaris et al., 2015).
22 4. Conclusions
23 This study emphasized that the majority of lipids and proteins in agro-industrial waste are
24 transformed into methane in modern industrial biogas plants (HRT ≥ 15 days). The methane yield
25 obtained by the degradation of the remaining hemicelluloses and cellulose increases at longer
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1 retention times. The model in this paper includes both lignocellulosic and non-lignocellulosic
2 compounds, therefore it can be applied to a wide range of biomasses where the regression models
3 based on the lignocellulose fraction alone might not be applicable for non-lignocellulosic
4 biomasses. The developed BMP model fits best to lightly lignified biomass but the overestimated
5 results obtained with woody biomass and winter-harvested grass indicate that further
6 investigation of the hydrolysis of well-lignified biomass is required to improve the model
7 precision. The model can easily be applied to energy-intense lipid- or protein-rich biomass with
8 high precision.
9 Acknowledgements
10 This study was supported by a grant from the Danish Council for Strategic Research (12-132631)
11 under the work programme “Optimisation of Value Chains for Biogas Production in Denmark”
12 (BioChain). The authors are responsible for the content of this publication.
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Figure Captions
Figure 1. Specific CH4 rate and VFA concentration plotted versus time course for 4 AD reactors.
The average TAN for HRT of 15, 20. 30 and 45 days are 4.02, 3.88, 3.92 and 3.77 g kg ww-1
Figure 2. Degradation of crude lipids, crude proteins, hemicelluloses and cellulose. St: content of
organic compound residues; S0: content of initial organic compound
Figure 3: Remaining fraction of hemicellulose and cellulose in prediction versus measured one (Above)
and its simulation results of 200 days extended retention time.
Figure 4. model validation of the suggested BMP predicting model: Predicted versus measured BMP. The solid line indicates the best linear relationship (1:1). R2 of grass and crop residue including winter harvested sample 0.62; R2 of grass and crop residue excluding winter harvested samples 0.47; R2 of woody biomass 0.33; R2 of maize 0.00.
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Figure 1.
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Figure 2.
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Figure 3.
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Figure 4.
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Table 1. Concentration of major organic compounds, methane potentials measured (BMP), stoichiometry methane potential(TBMP), pig manure, processed meat waste, brewery wastewater, slaughterhouse waste and feed mixture.
Pig manure Processed meat waste
Brewery wastewater
Slaughterhouse waste
Feed mixture
DM (g kg ww-1) 39.55 (±0.96) 278.71 (±3.76) 7.74 (±0.97) 324.29 (±4.88) 70.0VS (g kg ww-1) 30.41 (±0.45) 239.08 (±4.57) 6.23 (±0.10) 314.20 (±5.02) 58.26TKN (g kg ww-1) 3.14 (±0.10) 19.09 (±0.61) 0.09 (±0.00) 7.66 (±0.41) 4.70TAN (g kg ww-1) 2.15 (±0.17) 0.00 (±0.00) 0.08 (±0.00) 1.66 (±0.12) 1.66VFAs (g kg ww-1) 7.12 (±0.85) 0.00 (±0.00) 0.29 (±0.09) 2.53 (±0.11) 5.44
(% of VS) 23.41 (±2.43) 0.00 (±0.00) 0.81 (±0.15) 4.65 (±0.79) 9.33Ethanol (g kg ww-1) 0.00 (±0.00) 0.00 (±0.00) 3.74 (±0.36) 0.00 (±0.00) 0.42
(% of VS) 0.00 (±0.00) 0.00 (±0.00) 60.03 (±1.75) 0.00 (±0.00) 0.72XP (g kg ww-1) 6.19 (±0.46) 120.00 (±2.35) 0.00 (±0.00) 37.45 (±1.13) 19.08
(% of VS) 20.35 (±0.55) 50.19 (±1.82) 0.00 (±0.00) 11.92 (±0.66) 32.74XL (g kg ww-1) 0.00 (±0.00) 100.00 (±2.15) 0.00 (±0.00) 230.00 (±4.34) 17.00
(% of VS) 0.00 (±0.00) 41.83 (±1.05) 0.00 (±0.00) 73.20 (±2.92) 29.18Hemicellulose (g kg ww-1) 4.72 (±0.54) 0.00 (±0.00) 0.00 (±0.00) 0.00 (±0.00) 3.54
(% of VS) 15.52 (±0.95) 0.00 (±0.00) 0.00 (±0.00) 0.00 (±0.00) 6.08Cellulose (g kg ww-1) 7.32 (±0.46) 0.00 (±0.00) 0.00 (±0.00) 0.00 (±0.00) 5.49
(% of VS) 24.07 (±1.96) 0.00 (±0.00) 0.00 (±0.00) 0.00 (±0.00) 9.42Lignin (g kg ww-1) 5.03 (±0.78) 0.00 (±0.00) 0.00 (±0.00) 0.00 (±0.00) 3.77
(% of VS) 16.54 (±1.10) 0.00 (±0.00) 0.00 (±0.00) 0.00 (±0.00) 6.48Carbohydrate (g kg ww-1) 0.03 19.08 2.20 44.22 3.52
(% of VS) 0.11 7.98 14.07 35.31 6.05
TBMP (NL CH4 kg VS–1) 473 706 602 862 635BMP (NL CH4 kg VS–1) 297±8 605±15 577±20 821±14 513TBMP (NL CH4 kg ww-1) 14.39 168.74 3.75 270.97 36.97SMP (NL CH4 kg ww-1) 9.03 (±0.26) 144.70 (±5.35) 3.60 (±0.35) 258.03 (±5.34) 29.91BMP/TBMP (%) 62.8 85.8 95.9 95.2 80.9
Figures in parentheses are standard deviations.
XP: Crude protein; XL: crude lipid;
SMP: Specific methane potential in terms of wet weight (NL CH4 kg ww-1)
NL: normal liter at 273 K, 1.013 bar
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Table 2. The concentration of each compound is indicated as TBMP in terms of wet weight (NL CH4 kg ww -1)
Substrates VFA Ethanol XP XL Hemicellulose Cellulose Lignin Carbohydrate
Pig manure 2.66 0.00 3.07 0.00 1.96 3.04 3.66 0.01
Processed meat 0.00 0.00 59.47 101.36 0.00 0.00 0.00 7.91
Brewery wastewater 0.11 2.73 0.00 0.00 0.00 0.00 0.00 0.91
Slaughterhouse waste 0.94 0.00 18.56 233.12 0.00 0.00 0.00 18.34
Feed for reactor 2.03 0.31 9.45 17.23 1.47 2.28 2.74 1.46
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1 Table 3. Hydrolysis rate, ultimate biodegradable and inert fraction of hemicellulose, cellulose and 2 lignocellulose from the first-order kinetic regression test and its model calibration results
ki df∞ (100-df∞) 𝑅𝑀𝑆𝐸𝐶 𝑟𝑅𝑀𝑆𝐸𝐶 R2
Hemicellulose(VSHE) 0.0298 59.3 40.7 1.46 4.60 0.97Cellulose (VSCE) 0.0699 36.3 63.7 0.48 1.65 0.99Lignocellulose 0.0602 27.4 72.6 0.77 3.68 0.99
3 dfi∞ is the ultimate biodegradable fraction (%); (100-dfi∞): inert fraction (%); ki: the decay rate constant for a
4 fraction (day-1); θ: HRT (days).
5 : Root Mean Square error in model calibration (NL CH4 kg VS-1)𝑅𝑀𝑆𝐸𝐶
6 : Relative Root Mean Square error in model calibration (%)𝑟𝑅𝑀𝑆𝐸𝐶
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1 Table 4. Model validation results of suggested BMP predicting model using the 4 datasets of samples used in
2 this study.
𝐵𝑀𝑃𝑚
(NL CH4 kg VS-1)𝐵𝑀𝑃𝑃
(NL CH4 kg VS-1) SDPig manure 305 297 5.5Processed meat 639 605 24.0Slaugterhouse waste 847 821 18.3
Tested substrates Brewery wastewater 602 577 17.8
(NL CH4 kg VS-1)𝑅𝑀𝑆𝐸𝑃 25.1 (%)𝑟𝑅𝑀𝑆𝐸𝑃 4.2
Statistical parameters
R2 0.993 : measured BMP (NL CH4 kg VS-1)𝐵𝑀𝑃𝑚
4 : predicted BMP (NL CH4 kg VS-1)𝐵𝑀𝑃𝑃
5 : Root Mean Square error in prediction (NL CH4 kg VS-1)𝑅𝑀𝑆𝐸𝑃
6 : Relative Root Mean Square error in prediction (%)𝑟𝑅𝑀𝑆𝐸𝑃
7 SD: Standard deviation between measured and predicted BMP
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1 Table 5. Model errors in prediction using 64 external dataset
Oslaj et al. (2010) Triolo et al. (2012)Biomass type Maize Grass and residues woody samplesna 10 31 27 23
(mean) (NL CH4 kg VS-1)𝐵𝑀𝑃𝑚 309.1 254.8 276.3 267.0 (min) (NL CH4 kg VS-1)𝐵𝑀𝑃𝑚 251.4 104.0 177.2 133.7 (max) (NL CH4 kg VS-1)𝐵𝑀𝑃𝑚 294.7 391.3 391.3 249.5
SDa (NL CH4 kg VS-1) 26.0 77.3 59.9 31.8Validation results
(NL CH4 kg VS-1)𝑅𝑀𝑆𝐸𝑃 37.4 49.9 43.7 86.1 (%)𝑟𝑅𝑀𝑆𝐸𝑃 12.1 19.6 15.8 47.8
2 a n : number of dataset used for validation.
3 b SD: Standard deviation of BMP of attended dataset for validation (n).
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Highlights
We explored a new approach to determine biochemical methane potentials. The model was validated using 65 internal and external datasets. 45% of hemicelluloses and 34% of cellulose decomposed despite long
HRT. The relative error for precision of the best model was 12.1%. The model has better performance for gently lignified biomasses
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