Nonlinear Modelling for Steam Temperature of Distillation Column: A Comparison between PRBS and MPRS Perturbation Signals

N. Hambali, M. Taib, A. Yassin, M. Rahiman
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引用次数: 2

Abstract

Nowadays, countless research efforts have been reported for distillation column on nonlinear modelling. Several studies have shown the importance of appropriate perturbation signal for the nonlinear system applications. This study focuses on a nonlinear modelling for steam temperature using Pseudo Random Binary Signal (PRBS) and Multi-level Pseudo Random Sequence (MPRS) perturbation signals. A Binary Particle Swarm Optimisation (BPSO) algorithm was utilised in the model structure selection for polynomial Nonlinear Auto-Regressive with eXogenous (NARX) input for Steam Distillation Pilot Plant (SDPP). Three model’s selection criteria were examined; Akaike Information Criterion (AIC), Model Descriptor Length (MDL), and Final Prediction Error (FPE). The performance analysis included output model analysis and model validation of the nonlinear model. The results demonstrated fewer number of input and output lags and lesser amount of output model parameter using MPRS perturbation signal compared with PRBS. Model validation showed high R-squared and low MSE for both signals’ application.
精馏塔蒸汽温度的非线性建模:PRBS和MPRS扰动信号的比较
目前,关于精馏塔非线性建模的研究已见多不报。一些研究表明,适当的扰动信号对于非线性系统的应用具有重要意义。研究了基于伪随机二值信号(PRBS)和多级伪随机序列(MPRS)扰动信号的蒸汽温度非线性模型。针对蒸汽蒸馏中试装置(SDPP)的外源输入多项式非线性自回归模型,采用二元粒子群优化(BPSO)算法进行模型结构选择。考察了三种模型的选择标准;赤池信息准则(AIC)、模型描述符长度(MDL)和最终预测误差(FPE)。性能分析包括输出模型分析和非线性模型的模型验证。结果表明,与PRBS相比,MPRS摄动信号的输入和输出滞后数量更少,输出模型参数数量更少。模型验证表明,两种信号的应用均具有较高的r平方和较低的MSE。
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