Estimation of Biomass Enzymatic Hydrolysis State in Stirred Tank Reactor through Moving Horizon Algorithms with Fixed and Dynamic Fuzzy Weights
Second generation ethanol faces challenges before profitable implementation. Biomass hydrolysis is one of the bottlenecks, especially when this process occurs at high solids loading and with enzymatic catalysts. Under this setting, kinetic modeling and reaction monitoring are hindered due to the con...
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doaj-4f3ba88da0dd4e89a0728f2f2a36c5f12020-11-25T02:28:44ZengMDPI AGProcesses2227-97172020-03-01840740710.3390/pr8040407Estimation of Biomass Enzymatic Hydrolysis State in Stirred Tank Reactor through Moving Horizon Algorithms with Fixed and Dynamic Fuzzy WeightsVitor B. Furlong0Luciano J. Corrêa1Fernando V. Lima2Roberto C. Giordano3Marcelo P. A. Ribeiro4Graduate Program of Chemical Engineering, Federal University of São Carlos, P.O. Box 676, São Carlos 13565-905, SP, BrazilDepartment of Engineering, Federal University of Lavras, P. O. Box 3037, Lavras 37200-000, MG, BrazilDepartment of Chemical and Biomedical Engineering, West Virginia University, Morgantown, WV 26506, USAGraduate Program of Chemical Engineering, Federal University of São Carlos, P.O. Box 676, São Carlos 13565-905, SP, BrazilGraduate Program of Chemical Engineering, Federal University of São Carlos, P.O. Box 676, São Carlos 13565-905, SP, BrazilSecond generation ethanol faces challenges before profitable implementation. Biomass hydrolysis is one of the bottlenecks, especially when this process occurs at high solids loading and with enzymatic catalysts. Under this setting, kinetic modeling and reaction monitoring are hindered due to the conditions of the medium, while increasing the mixing power. An algorithm that addresses these challenges might improve the reactor performance. In this work, a soft sensor that is based on agitation power measurements that uses an Artificial Neural Network (ANN) as an internal model is proposed in order to predict free carbohydrates concentrations. The developed soft sensor is used in a Moving Horizon Estimator (MHE) algorithm to improve the prediction of state variables during biomass hydrolysis. The algorithm is developed and used for batch and fed-batch hydrolysis experimental runs. An alteration of the classical MHE is proposed for improving prediction, using a novel fuzzy rule to alter the filter weights online. This alteration improved the prediction when compared to the original MHE in both training data sets (tracking error decreased 13%) and in test data sets, where the error reduction obtained is 44%.https://www.mdpi.com/2227-9717/8/4/407artificial neural networkbiomass enzymatic hydrolysisfuzzy logiclocal linear model treemoving horizon estimationprocess monitoring |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Vitor B. Furlong Luciano J. Corrêa Fernando V. Lima Roberto C. Giordano Marcelo P. A. Ribeiro |
spellingShingle |
Vitor B. Furlong Luciano J. Corrêa Fernando V. Lima Roberto C. Giordano Marcelo P. A. Ribeiro Estimation of Biomass Enzymatic Hydrolysis State in Stirred Tank Reactor through Moving Horizon Algorithms with Fixed and Dynamic Fuzzy Weights Processes artificial neural network biomass enzymatic hydrolysis fuzzy logic local linear model tree moving horizon estimation process monitoring |
author_facet |
Vitor B. Furlong Luciano J. Corrêa Fernando V. Lima Roberto C. Giordano Marcelo P. A. Ribeiro |
author_sort |
Vitor B. Furlong |
title |
Estimation of Biomass Enzymatic Hydrolysis State in Stirred Tank Reactor through Moving Horizon Algorithms with Fixed and Dynamic Fuzzy Weights |
title_short |
Estimation of Biomass Enzymatic Hydrolysis State in Stirred Tank Reactor through Moving Horizon Algorithms with Fixed and Dynamic Fuzzy Weights |
title_full |
Estimation of Biomass Enzymatic Hydrolysis State in Stirred Tank Reactor through Moving Horizon Algorithms with Fixed and Dynamic Fuzzy Weights |
title_fullStr |
Estimation of Biomass Enzymatic Hydrolysis State in Stirred Tank Reactor through Moving Horizon Algorithms with Fixed and Dynamic Fuzzy Weights |
title_full_unstemmed |
Estimation of Biomass Enzymatic Hydrolysis State in Stirred Tank Reactor through Moving Horizon Algorithms with Fixed and Dynamic Fuzzy Weights |
title_sort |
estimation of biomass enzymatic hydrolysis state in stirred tank reactor through moving horizon algorithms with fixed and dynamic fuzzy weights |
publisher |
MDPI AG |
series |
Processes |
issn |
2227-9717 |
publishDate |
2020-03-01 |
description |
Second generation ethanol faces challenges before profitable implementation. Biomass hydrolysis is one of the bottlenecks, especially when this process occurs at high solids loading and with enzymatic catalysts. Under this setting, kinetic modeling and reaction monitoring are hindered due to the conditions of the medium, while increasing the mixing power. An algorithm that addresses these challenges might improve the reactor performance. In this work, a soft sensor that is based on agitation power measurements that uses an Artificial Neural Network (ANN) as an internal model is proposed in order to predict free carbohydrates concentrations. The developed soft sensor is used in a Moving Horizon Estimator (MHE) algorithm to improve the prediction of state variables during biomass hydrolysis. The algorithm is developed and used for batch and fed-batch hydrolysis experimental runs. An alteration of the classical MHE is proposed for improving prediction, using a novel fuzzy rule to alter the filter weights online. This alteration improved the prediction when compared to the original MHE in both training data sets (tracking error decreased 13%) and in test data sets, where the error reduction obtained is 44%. |
topic |
artificial neural network biomass enzymatic hydrolysis fuzzy logic local linear model tree moving horizon estimation process monitoring |
url |
https://www.mdpi.com/2227-9717/8/4/407 |
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