System identification of an interacting series process for real-time model predictive control

Wibowo, T.C.S. and Saad, N. and Karsiti, M.N. (2009) System identification of an interacting series process for real-time model predictive control. In: UNSPECIFIED.

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Abstract

This paper presents the empirical modeling of the gaseous pilot plant which is a kind of interacting series process with presence of nonlinearities. In this study, the discrete-time identification approach based on subspace method with N4SID algorithm is applied to construct the state space model around a given operating point, by probing the system in open-loop with variation of input signals. Three practical approaches are used and their performances are compared to obtain the most suitable approach for modeling of such a system. The models are also tested in the real-time implementation of a linear model predictive control. The selected model is able to well reproduce the main dynamic characteristics of gaseous pilot plant in open loop and produces zero steady-state errors in closed loop control system. Several issues concerning the identification process and the construction of MIMO state space model are discussed. © 2009 AACC.

Item Type: Conference or Workshop Item (UNSPECIFIED)
Additional Information: cited By 9; Conference of 2009 American Control Conference, ACC 2009 ; Conference Date: 10 June 2009 Through 12 June 2009; Conference Code:78162
Uncontrolled Keywords: Discrete-time; Dynamic characteristics; Empirical modeling; Gaseous pilot plant; Identification approach; Identification process; Input signal; Interacting process; Linear model; Non-Linearity; Open loops; Operating points; Predictive control; Real-time implementations; Real-time models; State space model; Steady state errors; Sub-space methods; System identifications, Closed loop control systems; Identification (control systems); Pilot plants; Predictive control systems; Real time control, Model predictive control
Depositing User: Mr Ahmad Suhairi UTP
Date Deposited: 09 Nov 2023 15:48
Last Modified: 09 Nov 2023 15:48
URI: https://khub.utp.edu.my/scholars/id/eprint/649

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