Soft-sensor development for biochemical systems using genetic programming

TitleSoft-sensor development for biochemical systems using genetic programming
Publication TypeJournal Article
Year of Publication2014
AuthorsSharma, S, Tambe, SS
JournalBiochemical Engineering Journal
Volume85
Pagination89-100
Date PublishedAPR
ISSN1369-703X
KeywordsArtificial intelligence, Batch processing, Bioprocess monitoring, Lipase, Modeling, sensors
Abstract

Soft-sensors are software based process monitoring systems/models. In real-time they estimate those process variables, which are difficult to measure online or whose measurement by analytical procedures is tedious and time-consuming. In this study, the genetic programming (GP), an artificial intelligence based data-driven modeling formalism, has been introduced for the development of soft-sensors for biochemical processes. The novelty of the GP is that given example input-output data, it searches and optimizes both the form (structure) and parameters of an appropriate linear/nonlinear data-fitting model. In this study, GP-based soft-sensors have been developed for two bioprocesses, namely extracellular production of lipase enzyme and bacterial production of poly(3-hydroxybutyrate-co-3-hydroxyvalerate) copolymer. While in case study-I, the soft-sensor predicts the time-dependent lipase activity (U/ml), in case study-II it predicts the amount of accumulated polyhydroxyalkanoates (% dcw). The prediction and generalization performance of the GP-based soft-sensors was compared with the corresponding multi-layer perceptron (MLP) neural network and support vector regression (SVR) based soft-sensors. This comparison indicates that in the first case study the GP-based soft-sensor with the training and test set correlation coefficient (root-mean-squared-error) magnitudes of >0.96 (approximate to 0.962 U/ml) has clearly outperformed the two other soft-sensors. In case study-II involving bacterial copolymer production, the GP and SVR based soft-sensors have performed equally well (correlation coefficient approximate to 0.98) while the MLP based soft-sensor's performance was relatively inferior (correlation coefficient approximate to 0.94). (C) 2014 Elsevier B.V. All rights reserved.

DOI10.1016/j.bej.2014.02.007
Type of Journal (Indian or Foreign)Foreign
Impact Factor (IF)3.03
Divison category: 
Chemical Engineering & Process Development