Title of article :
The identification of nonlinear models for process control using tailored “plant-friendly” input sequences
Author/Authors :
Robert S. Parker، نويسنده , , Douglas Heemstra، نويسنده , , Francis J. Doyle III، نويسنده , , Ronald K. Pearson and Babatunde A. Ogunnaike، نويسنده ,
Abstract :
This paper considers certain practical aspects of the identi®cation of nonlinear empirical models for chemical process dynamics.
The primary focus is the identi®cation of second-order Volterra models using input sequences that oer the following three
advantages: (1) they are ``plant friendly;ʹʹ (2) they simplify the required computations; (3) they can emphasize certain model parameters
over others. To provide a quantitative basis for discussing the ®rst of these advantages, this paper de®nes a friendliness index f that
relates to the number of changes that occur in the sequence. For convenience, this paper also considers an additional nonlinear
model structure: the Volterra±Laguerre model. To illustrate the practical utility of the input sequences considered here, second-
order Volterra and Volterra±Laguerre models are developed that approximate the dynamics of a ®rst-principles model of methyl
methacrylate polymerization.
Keywords :
Volterra series model , Process control , Input sequence design , Nonlinear identi®cation
Journal title :
Astroparticle Physics