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Prediction of overall glucose yield in hydrolysis of pretreated sugarcane bagasse using a single artificial neural network: good insight for process development
Author(s) -
Plazas Tovar Laura,
Ccopa Rivera Elmer,
Pinto Mariano Adriano,
Wolf Maciel Maria Regina,
Maciel Filho Rubens
Publication year - 2018
Publication title -
journal of chemical technology and biotechnology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.64
H-Index - 117
eISSN - 1097-4660
pISSN - 0268-2575
DOI - 10.1002/jctb.5456
Subject(s) - bagasse , hydrolysis , yield (engineering) , artificial neural network , enzymatic hydrolysis , chemistry , mathematics , biomass (ecology) , chromatography , biochemistry , pulp and paper industry , materials science , computer science , biology , machine learning , engineering , agronomy , composite material
BACKGROUND In this work a single artificial neural network (ANN) was used to model the overall yield of glucose ( Y GLC ) as a function of a wide range of operating conditions of both pretreatment and enzymatic hydrolysis. RESULTS The model was validated experimentally and presented good predictions of Y GLC . Sensitivity analysis using the ANN model indicated that most of the operating parameters, except for pretreatment time, were statistically significant ( P ‐value <0.05). Experiments showed that the processing of sugarcane bagasse ( in natura ) results in a satisfactory glucose yield of 69.34% when pretreated for 60 min with low initial biomass concentration and acid concentration (10% and 1.0% w/v), and followed by enzymatic hydrolysis for 72 h with 3.0% w/v substrate loading and 60 FPU per g WIS enzyme concentration. CONCLUSION This study demonstrated how pretreatment and enzymatic hydrolysis data can be used to parameterize a single ANN model. Acceptable predictions of Y GLC are achieved in terms of RSD, MSE and R 2 . Supported by the model, this study provided a good insight for process development. © 2017 Society of Chemical Industry