Control of a Batch Polymerization System Using Hybrid Neural Network ‐ First Principle Model |
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Authors: | Ng Cheah Wei Mohamed Azlan Hussain Ahmad Khairi Abdul Wahab |
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Affiliation: | Department of Chemical Engineering, University of Malaya, 50603 Kuala Lumpur, Malaysia |
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Abstract: | In this work, the utilization of neural network in hybrid with first principle models for modelling and control of a batch polymerization process was investigated. Following the steps of the methodology, hybrid neural network (HNN) forward models and HNN inverse model of the process were first developed and then the performance of the model in direct inverse control strategy and internal model control (IMC) strategy was investigated. For comparison purposes, the performance of conventional neural network and PID controller in control was compared with the proposed HNN. The results show that HNN is able to control perfectly for both set points tracking and disturbance rejection studies. |
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Keywords: | hybrid neural networks first principle model batch polymerization modelling model‐based control |
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