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Development of Wiener-Hammerstein Models Parameterized using Orthonormal Basis Filters and Deep Neural Network
Journal
IFAC-PapersOnLine
Date Issued
2022-01-01
Author(s)
Patel, Janak M.
Kumar, Kunal
Patwardhan, Sachin C.
Abstract
Many chemical or biochemical processes exhibit strongly nonlinear dynamic behavior in the desired region of operations. To develop effective monitoring and control schemes for such systems, it is necessary to develop a reliable model that captures dynamics as well as the steady-state behavior over a wide range of operations. In this work, it is proposed to develop a block-oriented Wiener-Hammerstein model parameterized using generalized orthonormal basis filters and deep neural network (GOBF DNN). A two-step procedure is developed to select the generalized orthonormal basis filters (GOBF) pole locations and estimate the deep neural network (DNN) parameters. The e¢cacy of the proposed modeling strategy is demonstrated using the simulation study on a benchmark continuously operated fomenter system. The proposed GOBF DNN model is able to capture the dynamic and steady-state behavior of the plant over a wide range of operations. Comparison of performances based on the dynamic as well as the steady-state indices clearly underscores the advantages of using a DNN over a shallow neural net and a NARX model developed using DNN.
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