Author:
Mamat Nor Hana,Mohd Noor Samsul Bahari,Che Soh Azura,Saleena Taip Farah,Rashid Ahmad Hazri Ab.,Jufika Ahmad Nur Liyana,Yusof Ishak Mohd,Mohamad Adida Zuraida
Abstract
Abstract
Biomass concentration is an important indicator of production rate in polyhydroxyalkanoates (PHA) fermentation process. In current practice, measurement of biomass concentration is done off-line by laboratory analysis that is unsuitable for online process monitoring and control. Soft-sensor is often used as an alternative that provides an estimate of hard to measure parameters from easy to measure process data. However, most of these studies use simulated data or data generated from mathematical model that was developed without full consideration of process and measurement uncertainty. In this study, a soft-sensor is developed from real production data for PHA fermentation in pilot-scale bioreactor with the appropriate data pre-processing techniques applied to process data that was obtained from this system. Multilayer perceptron (MLP) neural network is used to estimate biomass concentration using secondary process parameters such as dissolved oxygen (DO), temperature, pH and agitation speed as inputs. Different models are developed based on different batches of production data and various network architecture in order to study the appropriate integration of process data and network topology that gives the best model accuracy. Results indicate that the biomass soft-sensor developed using MLP-ANN provides a better estimate of biomass in comparison to radial basis function (RBF) neural network and support vector regression (SVR) methods. The developed soft-sensor can be further used in monitoring and control of production output.
Subject
General Physics and Astronomy
Cited by
1 articles.
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1. An Improved Industrial Process Soft Sensor Method Based on LSTM;2023 IEEE 12th Data Driven Control and Learning Systems Conference (DDCLS);2023-05-12