2016 Indian Control Conference (ICC) 2016
DOI: 10.1109/indiancc.2016.7441133
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Use genetic programming for selecting predictor variables and modeling in process identification

Abstract: Availability of an accurate and robust dynamic model is essential for implementing the model dependent process control.When first principles based modeling becomes difficult, tedious and/or costly, a dynamic model in the black-box form is obtained (process identification) by using the measured input-output process data. Such a dynamic model frequently contains a number of time delayed inputs and outputs as predictor variables. The determination of the specific predictor variables is usually done via a trial an… Show more

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“…In the domain of engineering, system modelling can be basically classified as mechanical and black-box approaches [16]. The former is based solely on thorough understanding of inherent mechanism of system, while black-box model is derived from observed data of the system.…”
Section: B the Principle Of Operating Condition Based Modellingmentioning
confidence: 99%
“…In the domain of engineering, system modelling can be basically classified as mechanical and black-box approaches [16]. The former is based solely on thorough understanding of inherent mechanism of system, while black-box model is derived from observed data of the system.…”
Section: B the Principle Of Operating Condition Based Modellingmentioning
confidence: 99%