Model-plant mismatch detection for a plant under Model Predictive Control: A grinding mill circuit case study

Heinz K. Mittermaier,Johan D. le Roux, Laurentz E. Olivier,Ian K. Craig

IFAC PAPERSONLINE(2023)

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摘要
This articles investigates two different techniques of identifying model-plant mismatch for a grinding mill circuit under model predictive control. A previous attempt at model-plant mismatch detection for a grinding mill, in the form of a partial cross correlation analysis, is used as a benchmark for model-plant mismatch detection and degraded sub-model isolation. This is followed by an investigation of the plant model ratio technique applied to the same system. The plant model ratio technique is able to isolate the sub-model containing a mismatch as well as detect the specific parameter in a first-order-plus-time-delay model responsible for the mismatch. A simulation study is used to quantify and compare the results between the two model-plant mismatch detection methodologies. The results indicate plant model ratio accurately and timeously detects mismatches in sub-models. This allows for system reidentification or controller adaption to ensure optimal process performance. The advantage above partial cross correlation is the parameter diagnosis within the degraded sub-model coupled with the mismatch direction. Copyright (c) 2023 The Authors.
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关键词
Controller performance monitoring,grinding mill circuit,model predictive control,model-plant mismatch,process performance monitoring
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