Nonlinear Modelling and Simulation of Industrial Wet Grinding Process
Authors: | Barve Jayesh, Tata Consultancy Services, India Mitra Kishalay, Tata Consultancy Services, India Junnuri V.S.S. Rameshkumar, Tata Consultancy Services, India |
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Topic: | 6.2 Mining, Mineral & Metal Processing |
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Session: | Technology in Mining and Metal Processing Industry |
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Keywords: | Nonlinear Systems, Process Identification, Fuzzy Supervision, Industrial Production System, Process Control |
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Abstract
The multiple linear models based piece-wise linearization approach is used to obtain control-oriented non-linear model of the non-linear multivariable wet grinding process of an industrial lead-zinc ore beneficiation plant. The overall process outputs are computed as a weighted sum of outputs from multiple models identified at several operating zones. The output weights of linear models are computed by a pseudo fuzzy supervisor. The linear models are identified using a transfer matrix identification technique using standard TF structures, and genetic algorithm based constrained optimisation formulation for the parameter estimation. A rigorous, plant validated model based wet grinding process simulator is used to obtain the identification and validation data for the proposed approach.