Microsoft Word - 48dallavecchia.docx CHEMICAL ENGINEERING TRANSACTIONS VOL. 49, 2016 A publication of The Italian Association of Chemical Engineering Online at www.aidic.it/cet Guest Editors: Enrico Bardone, Marco Bravi, Tajalli Keshavarz Copyright © 2016, AIDIC Servizi S.r.l., ISBN 978-88-95608-40-2; ISSN 2283-9216 Response Surface Optimization of Dilute Sulfuric Acid Pretreatment of Switchgrass (Panicum virgatum L.) for Fermentable Sugars Production Ana I. Paniagua-García*a, Rebeca Díez-Antolíneza, María Hijosa-Valseroa, Marta E. Sánchezb, Mónica Cocac aCentre of Biofuels and Bioproducts. Instituto Tecnológico Agrario de Castilla y León (ITACyL), Villarejo de Órbigo, E- 24358, León, Spain bChemical and Environmental Bioprocess Engineering Group. Natural Resources Institute (IRENA), Universidad de León, Avenida de Portugal 42, E-24071, León, Spain cDepartment of Chemical Engineering and Environmental Technology, Universidad de Valladolid, C/Doctor Mergelina s/n, E-47011, Valladolid, Spain pangaran@itacyl.es Pretreatment of lignocellulosic materials to disrupt their recalcitrant structures is a crucial step on second generation biofuel production. In this study, response surface methodology (RSM) was used to investigate the effects of dilute sulfuric acid hydrolysis conditions on switchgrass (Panicum virgatum L.). A central composite rotatable design (CCRD) was applied to assess the effect of acid concentration (0.16 – 1.84% (w/w)), solid load (4.9 – 30.1% (w/w)) and hydrolysis time (9.6 – 110.5 min), on glucose, xylose and total sugars (glucose, xylose and arabinose) recovery yields and total inhibitors generated (acetic acid, levulinic acid, 5- hydroxymethylfurfural and furfural) after acid hydrolysis. Afterwards, enzymatic hydrolysis of the solid phase was performed as a second treatment step. Experimental data were fitted to a second order polynomial model to find the optimum acid hydrolysis conditions by multiple regression analysis. The results show a strong dependence of total sugars recovery and total fermentation inhibitors on acid concentration, and a weaker dependence on solid load and acid hydrolysis time. The optimized hydrolysis conditions, predicted by the polynomial model, were 1.72% (w/w) of sulfuric acid concentration and 112.0 min of acid hydrolysis time, for a fixed value of 10.0% (w/w) of solid load, with a total sugars yield of 78.8% for acid hydrolysis combined with a subsequent enzymatic hydrolysis step. 1. Introduction The transport sector worldwide depends almost entirely on fuels derived from petroleum. A strategy for reducing the rate of fossil fuel consumption is to increase the use of renewable biofuels. Lignocellulosic materials (e.g., corn stover, switchgrass, wheat straw, forest wastes, etc.) enable the production of second generation biofuels, since these raw materials are not employed as human or animal food. In addition, lignocellulosic biomass is abundant, cheap and renewable and consists of approximately 75% polysaccharides (Bayer et al., 2007). Switchgrass (Panicum virgatum L.) is a perennial warm-season grass with high productivity, rapid growth, low water and nutritional requirements and a high tolerance to heat, cold and drought (McLaughlin et al., 1999). This vegetal species can be used for the production of biofuels, and most research studies have been focused on ethanol generation (Keshwani and Cheng, 2009). The conversion of lignocellulosic materials to bioalcohols consists of three main steps: pretreatment, enzymatic hydrolysis and fermentation. The objective of the pretreatment is to alter the structure of the lignocellulosic matrix to increase cellulose digestibility. For efficient conversion of lignocellulosic biomass into fermentable sugars, the choice of pretreatment is extremely important (Diaz et al., 2013; Karapatsia et al., 2014). Each pretreatment has certain disadvantages, especially regarding the generation of compounds that can potentially act as inhibitors of enzymatic hydrolysis and fermentation. Acid based hydrolysis is considered DOI: 10.3303/CET1649038 Please cite this article as: Paniagua A.I., Diez-Antolinez R., Hijosa-Valsero M., Sanchez M.E., Coca M., 2016, Response surface optimization of dilute sulfuric acid pretreatment of switchgrass (panicum virgatum l.) for fermentable sugars production, Chemical Engineering Transactions, 49, 223-228 DOI: 10.3303/CET1649038 223 to be an economical viable pretreatment process (Chandra et al., 2007). Dilute acid pretreatment targets the hemicellulose fraction liberating pentose sugars while redistributing lignin and disrupting the crystalline structure of cellulose fibrils. Cellulose hydrolysis, based on the selective degradation of cell-wall components by specific enzymes (Zuorro et al., 2015), is thus enhanced by the resulting increase in porosity and overall surface area of the treated material (Jeoh et al., 2007). Response surface methodology (RSM) has been used successfully in many fields, including biomass pretreatments (Avci et al., 2013). In this paper, pretreatment of switchgrass with dilute sulfuric acid was conducted, using RSM with a central composite rotatable design (CCRD). The objective was to find the optimal conditions for the main hydrolysis parameters: acid concentration, biomass load and hydrolysis time, leading to maximum recovery of sugars and minimum generation of inhibitors in order not to affect the further stages of enzymatic hydrolysis and acetone-butanol-ethanol (ABE) fermentation with Clostridium sp. 2. Material and methods 2.1 Raw material Switchgrass (P. virgatum), Alamo variety, was used to conduct the experimental runs. Switchgrass was grown in a test plot of ITACyL (Agrarian Technologic Institute of Castile and Leon) located in Valladolid (Spain). The material was produced and harvested at the beginning of November 2013. Feedstock was dried in an oven at 45ºC for 48 h, ground in a SM100 Comfort rotary mill (Retsch GmbH, Haan, Germany) and passed through a 1.0 mm screen (Ruangmee and Sangwichien, 2013). Milled material was stored at room temperature in airtight containers until being used. 2.2 Acid hydrolysis pretreatment Dilute sulfuric acid at three different acid concentrations: 0.5, 1.0 and 1.5% (w/w) was used to treat 10 g of milled switchgrass at three different solid loads: 10, 17.5 and 25% (w/w). Pretreatment was performed in an autoclave at 121ºC (103 kPa) during three different times: 30, 60 and 90 min. The ranges and levels of the independent variables were determined according to preliminary studies. Different combinations of acid concentration, solid load and acid hydrolysis time were planned by an experimental design according to the RSM design. After the autoclave pretreatment, the samples were cooled and the solid residue was recovered by vacuum filtration and washed with distilled water until it reached neutral pH, using a Buchner funnel with cellulose filters (Model 1238, Filter Lab, Barcelona, Spain). The liquid of the acid hydrolysis and the first aliquot of wash water were collected, separately, to measure the recovered volumes and analyze fermentable sugars (glucose, xylose and arabinose) and inhibitors (acetic acid, levulinic acid, 5-hydroxymethylfurfural (5-HMF) and furfural) concentrations. Pretreated solids were dried in an oven at 45°C during 48 h. Thereafter, moisture content was determined before storing in a plastic container at room temperature to be further used as substrate for the enzymatic saccharification. 2.3 Severity factor The severity factor (SF) allows the comparison of different experimental conditions of dilute sulfuric acid pretreatment by combining the variables time, temperature and acid concentration according to Eq (1), (Lee et al., 2013): SF = log ∗ TH − 100 / 14.75 − pH (1) where t is the acid hydrolysis time (min), TH is the acid hydrolysis temperature (°C) and pH is the acidity of the dilute sulfuric acid solution used for the pretreatment. 2.4 Enzymatic hydrolysis Pretreated solids were used as a substrate to study the effect of dilute sulfuric acid pretreatment in the subsequent hydrolysis of sugars by enzymes. The cellulose hydrolyzing enzymes Novozyme 50013 (cellulose complex), with an activity of 70 filter paper units (FPU)/g, and Novozyme 50010 (β-glucosidase), with an activity of 250 cellobiose units (CBU)/g, were used in all experiments. Enzymes were kindly provided by Novozymes A/S (Bagsvaerd, Denmark). Enzymatic hydrolysis tests were carried out in 100 mL capped Erlenmeyer flasks containing 1 g of pretreated switchgrass (dry basis) and 33 mL of 50 mM citrate buffer (pH 4.8) together with 70 µL β-glucosidase enzyme (22 CBU/g pretreated biomass) and 300 µL cellulase complex enzyme (25 FPU/g pretreated biomass). Samples were incubated at 50°C and 150 rpm in an Infors HT Minitron orbital shaker (Infors AG, Bottmingen, Switzerland) during 48 h. After that, the samples were cooled at room temperature, filtered and washed with 20 mL distilled water using a Buchner funnel with cellulose filters. The liquid of the enzymatic hydrolysis and the wash water were taken separately and used for sugar analysis. Enzymatic hydrolysis was evaluated by 224 the ratio of total sugars mass (glucose, xylose and arabinose) released by unit of dry biomass (mg total sugars/g dry biomass). 2.5 Analytical methods Moisture, ash and protein contents of the biomass were determined according to the National Renewable Energy Laboratory procedures (NREL, 2008). Structural carbohydrates including glucan, xylan and arabinan, as well as acid insoluble lignin (AIL) and acid soluble lignin (ASL) were examined using a two-stage sulfuric acid hydrolysis procedure (NREL, 2008). The concentrations of released sugars (C6 sugars reported as glucose and C5 sugars reported as a total of xylose and arabinose), organic acids (acetic acid and levulinic acid), furfural and 5-HMF were determined according to NREL (2008). These compounds were quantified in liquid hydrolyzates on an Agilent 1200 HPLC equipment (Agilent Technologies, Santa Clara, CA, USA) with a 300 x 7.8 mm i.d. cation exchange column Aminex HPX-87H (Biorad, Hercules, CA, USA) and a Refractive Index Detector (RID, G1362A, Agilent Technologies). The mobile phase was 5 mM H2SO4 at a flow rate of 0.6 mL/min and 60 °C. The injection volume was 20 µL. All samples were filtered through 0.22 μm filters prior to analysis. 2.6 Experimental design A CCRD with three variables was used to determine the optimum combination of acid concentration, biomass load and hydrolysis time for maximizing the sugar recovery while minimizing the inhibitor concentrations. The experimental design was planned using Minitab 16 software (Minitab, State College, Pennsylvania, USA), which resulted in 19 trials. The experiments were performed with different combinations of the independent variables that include: 8 trials for factorial design, 6 trials for axial points (two for each variable) and 5 trials for replication of the central point. Each variable was studied at three levels with two axial points as can be seen in Table 1. The analysis of variance (ANOVA) of the results, the fitting models and the optimum determination were performed with Minitab 16 software. Table 1: Experimental design showing actual (and coded) values for independent variables; severity factors (SF) and observed and predicted values for responses. Notes: Obs: observed; Pred: predicted. Trial Independent variables SF Glucose, mg/g Xylose, mg/g Tot Sug, mg/g Tot Inh, mg/g Ac conc, % Sol load, % t, min Obs Pred Obs Pred Obs Pred Obs Pred 1 1.5(+1) 25(+1) 30(-1) 1.58 145 148 191 198 364 376 26 28 2 1(0) 17.5(0) 60(0) 1.71 150 144 211 211 385 382 26 27 3 0.5(-1) 10(-1) 30(-1) 1.10 118 111 91 93 233 226 15 14 4 1(0) 17.5(0) 60(0) 1.71 146 144 224 211 397 382 29 27 5 0.5(-1) 10(-1) 90(+1) 1.58 139 136 192 185 361 348 25 23 6 1(0) 17.5(0) 9.6(-1.68) 0.91 122 123 104 118 253 268 21 20 7 1(0) 17.5(0) 60(0) 1.71 142 144 215 211 385 382 30 27 8 1(0) 17.5(0) 110.5(+1.68) 1.97 164 163 225 211 420 406 30 30 9 1(0) 30.1(+1.68) 60(0) 1.71 136 132 148 145 307 300 22 20 10 1.5(+1) 10(-1) 30(-1) 1.58 156 159 233 216 421 410 30 31 11 1.5(+1) 10(-1) 90(+1) 2.06 176 178 245 262 462 480 36 37 12 1.84(+1.68) 17.5(0) 60(0) 1.97 175 166 243 240 456 441 36 34 13 1(0) 17.5(0) 60(0) 1.71 143 144 206 211 378 382 26 27 14 1(0) 17.5(0) 60(0) 1.71 140 144 198 211 363 382 27 27 15 1.5(+1) 25(+1) 90(+1) 2.06 164 171 219 217 412 419 30 31 16 0.16(-1.68) 17.5(0) 60(0) 0.91 63 72 29 32 102 117 3 4 17 0.5(-1) 25(+1) 90(+1) 1.58 112 108 76 92 206 218 12 12 18 1(0) 4.9(-1.68) 60(0) 1.71 161 165 234 238 429 437 31 32 19 0.5(-1) 25(+1) 30(-1) 1.10 81 79 44 28 141 123 6 6 3. Results and discussion 3.1 Characterization of switchgrass The compositional analysis of the untreated switchgrass (% dry basis) was: 33.0±0.4 glucan, 21.4±0.4 xylan, 2.4±0.4 arabinan, 20.3±1.2 acid insoluble lignin, 4.6±0.2 acid soluble lignin and 7.0±0.4 ash. The glucan, xylan, arabinan, lignin and ash contents of switchgrass were in agreement with values reported by other authors (Hu and Wen, 2008; Monti et al., 2008). The total protein in the feedstock was 1.6±0.1%. It is well known that there is a strong correlation between protein and the degree of cell wall lignification. Low protein content leads to high lignin contents (Hatfield et al., 1994). 225 3.2 Effect of acid hydrolysis conditions on sugar recovery and inhibitor generation After performing the dilute sulfuric acid pretreatment, a significant amount of fermentable sugars was found in the hydrolysates, especially xylose. After pretreatment, recovered solids were subjected to subsequent enzymatic hydrolysis that leads to glucose release. Total sugars recovery and total inhibitors generation were calculated as the sum of the compounds recovered in the liquid of dilute acid pretreatment and in the enzymatic hydrolysates. Glucose, xylose, total sugars [sum of glucose, xylose and arabinose] and total potential inhibitors [sum of acetic acid (the main inhibitor produced), levulinic acid, 5-HMF and furfural] were calculated on the basis of grams of dry switchgrass. The results are presented in Table 1, which relates the severity factor (SF) and independent variables of dilute acid pretreatment with the observed responses. It was observed that the highest values of SF produced the highest concentrations of hydrolyzed sugars and inhibitors. It was verified that the removal of hemicelluloses (higher xylose recovery) enhanced the digestibility of cellulose (higher glucose recovery), as already observed by Chandra et al. (2007). 3.3 Statistical analysis An ANOVA was performed to analyze the experimental data given in Table 1 and evaluate the effects of variables and their possible interactions. Coefficients of the model were evaluated by regression analysis and tested for their significance. ANOVA fittings of quadratic models for all responses are shown in Table 2. Table 2: ANOVA table for the adjusted model of different responses. Response Source Sum of squares DF Mean square F Value p-value R2 / Adj R2 Glucose Model 15128.3 9 1680.9 35.17 0.000 0.97/0.95 Lack of fit 373.1 5 74.6 5.24 0.067 Residual 430.1 9 47.8 Xylose Model 87098.5 9 9677.6 43.85 0.000 0.98/0.96 Lack of fit 1617.8 5 323.6 3.51 0.124 Residual 1986.5 9 220.7 Total sugars Model 196532.3 9 21837.1 67.29 0.000 0.99/0.97 Lack of fit 2311.2 5 461.9 3.03 0.152 Residual 2920.7 9 324.9 Total inhibitors Model 1512.7 9 168.1 47.72 0.000 0.98/0.96 Lack of fit 19.9 5 4.0 1.41 0.396 Residual 31.7 9 3.5 The significance shown by R2 and adjusted R2 values indicates that variation in the responses was attributed to the three independent variables at more than 95% confidence level. The large F values and the corresponding small p-values also confirm that the models are significant. The goodness of the fit for the models is therefore assumed. A three-variable quadratic polynomial regression model to predict glucose (YG), xylose (YX), total sugars (YTS) and total inhibitors (YTI) as a function of the three independent parameters: acid concentration (%, A), solid load (%, B) and hydrolysis time (h, C) was developed. The models in terms of non-coded variables are given in Eq (2), (3), (4) and (5): = 52.07 + 128.21 − 1.28 + 0.39 − 36.37 (2) = −72.71 + 326.52 − 3.66 + 2.96 − 101.40 − 0.02 (3) = 75.72 + 395.86 − 10.10 + 3.41 − 142.31 − 0.02 + 4.65 (4) = −0.82 + 40.95 − 0.47 + 0.10 − 11.64 (5) These equations predict all the responses considerably well with high R2 and low p-values (Table 2). The importance of the independent variables and their effects can also be explained by the magnitude and sign of the coefficients. As observed from Eqs (2)-(5), acid concentration and hydrolysis time had a positive influence, whereas solid load had a negative influence on sugar recoveries and inhibitor generation. The magnitudes of the acid concentration linear terms were considerably higher than those of hydrolysis time and solid load. These observations are in agreement with previous works with sorghum bagasse that pointed out that the main effect was given by the acid concentration followed by hydrolysis time (Heredia-Olea et al., 2012). However, the quadratic terms of acid concentration negatively contributed to all responses. In addition, 226 quadratic terms of hydrolysis time negatively contributed to xylose and total sugars recoveries, and were not significant (p-values < 0.05) to glucose and total inhibitors. The interactions between independent variables were only significant for the positive interaction of acid concentration and solid load on total sugars. The predicted results obtained from quadratic models are shown in Table 1. 3.4 Optimization and response surface plots The ANOVA analysis of optimal conditions was mathematically performed based on glucose, xylose, total sugars and total inhibitors. The objective was to maximize fermentable sugar recoveries while keeping the total inhibitors below 40 mg/g to avoid inhibition of Clostridium sp. The optimum values for the independent variables were found to be: 0.96% (w/w) acid concentration, 4.9% (w/w) solid load and 110.5 min hydrolysis time. The predicted and observed responses at optimal conditions are shown in Table 3. Table 3: Predicted and observed responses at optimal conditions for the three-independent-variable model. Responses Pred (mg/g) Yieldpred (%) Obs (mg/g) Yieldobs (%) Deviation (%) Glucose 178.7 48.7 197.0 53.7 10.2 Xylose 254.9 104.9 253.4 104.2 -0.6 Total sugars 476.4 74.8 485.8 76.3 2.0 Total inhibitors 35.8 36.6 2.2 The optimal values for the solid load and hydrolysis time correspond to the axial points of the experiment. Therefore, another complementary CCRD was used to design an experiment taking into account only acid concentration and hydrolysis time (the most significant variables), with wider ranges of values to know if the optimal values were beyond the axial points, and optimize the same responses for switchgrass. For this experiment, the solid load was fixed at 10% (w/w) for all trials (Avci et al., 2013; Ruangmee and Sangwichien, 2013). The experiment resulted in 13 trials (4 trials for factorial design, 4 trials for axial points and 5 trials for replication of the central point). Acid concentration was studied at three levels (0.75, 1.88 and 3.00%) with two axial points (0.28 and 3.47%) and hydrolysis time at three levels (30, 90 and 150 min) with two axial points (5.2 and 174.9 min). A two-variable quadratic polynomial regression model was developed, which was estimated as significant with an ANOVA. Figure 1 shows the contour plots associated to the response surface. The contour plots seem to confirm that there were significant interactions between acid concentration and hydrolysis time on glucose, xylose and total sugars recoveries and total inhibitors generation. Figure 1 shows that acid concentration had a more significant influence on glucose, xylose, total sugars recoveries and total inhibitors generation than the hydrolysis time because there were more response line levels located in the predefined range of acid concentration. The final optimal conditions for glucose, xylose, total sugars recoveries and total inhibitors generation were: acid concentration of 1.72% (w/w) and hydrolysis time of 112.0 min. The responses for these optimal conditions are shown in Table 4. Acid Conc. (%) H yd ro l. Ti m e (m in ) 3,02,52,01,51,00,5 160 140 120 100 80 60 40 20 > – – – – – – < 100 100 120 120 140 140 160 160 180 180 200 200 220 220 (mg/g) Glucose GLUCOSE (mg/g) Acid Conc. (%) H yd ro l. Ti m e (m in ) 3,02,52,01,51,00,5 160 140 120 100 80 60 40 20 > – – – – – < 0 0 50 50 100 100 150 150 200 200 250 250 (mg/g) Xylose XYLOSE (mg/g) Acid Conc. (%) H yd ro l. Ti m e (m in ) 3,02,52,01,51,00,5 160 140 120 100 80 60 40 20 > – – – – < 100 100 200 200 300 300 400 400 500 500 (mg/g) Sugars Total TOTAL SUGARS (mg/g) Acid Conc. (%) H yd ro l. Ti m e (m in ) 3,02,52,01,51,00,5 160 140 120 100 80 60 40 20 > – – – – < 0 0 10 10 20 20 30 30 40 40 (mg/g) Inhibitors Total TOTAL INHIBITORS (mg/g) Figure 1: 2-D contour plots between coupled acid concentration (%) and hydrolysis time (min) for glucose (mg/g), xylose (mg/g), total sugars (mg/g) and total inhibitors (mg/g). Table 4: Predicted and observed responses at optimal conditions for the two-independent-variable model. Responses Pred (mg/g) Yieldpred (%) Obs (mg/g) Yieldobs (%) Deviation (%) Glucose 222.9 60.8 196.8 53.7 -11.7 Xylose 245.0 100.8 266.0 109.4 8.6 Total sugars 502.1 78.8 502.2 78.8 0.0 Total inhibitors 39.4 42.9 8.9 Sugar yields observed for the optimal conditions for two experiments (three independent variables and two independent variables) were similar, and there were no significant differences between them (p < 0.05). 227 4. Conclusions The RSM is an effective method to optimize the operation parameters (acid concentration, solid load and hydrolysis time) of dilute sulfuric acid pretreatment of switchgrass to predict the maximum glucose, xylose and total fermentable sugars yields and a concentration of total inhibitors that does not affect the subsequent ABE fermentation by Clostridium sp. Optimal conditions were achieved with 1.72% (w/w) acid concentration, 112.0 min hydrolysis time and 10.0% (w/w) solid load. Under these conditions, a maximum glucose release of 196.8 mg/g (53.7% yield), a xylose release of 265.99 mg/g (109.4% yield) and total sugar release of 502.2 mg/g (78.8% yield), with a generation of total inhibitors of 42.9 mg/g, were obtained. Acknowledgments Authors are grateful to ITACyL and European Regional Development founds (FEDER) (POCTEP Project Nº 0450_AGRI_SOS_E_6) for financial support. 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