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Performance Monitoring and Diagnosis of Multivariable Model Predictive Control Using Statistical Analysis

机译:基于统计分析的多变量模型预测控制的性能监测与诊断

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摘要

A statistic-based benchmark was proposed for performance assessment and momtoring of model predictive control; the benchmark was straightforward and achievable by recording a set of output data only when the control performance was good according to the user's selection. Principal component model was built and an auto-regressive moving average filter was identified to monitor the performance; an improved T~2 statistic was selected as the performance monitor index. When performance changes were detected, diagnosis was done by model validation using recursive analysis and generalized likelihood ratio (GLR) method. This distinguished the fact that the performance change was due to plant model mismatch or due to disturbance term. Simulation was done about a heavy oil fractionator system and good results were obtained. The diagnosis result was helpful for the operator to improve the system performance.
机译:提出了一种基于统计的基准,用于性能评估和模型预测控制的记忆。仅当根据用户的选择控制性能良好时,才记录一组输出数据,从而使基准测试变得简单易行。建立了主成分模型,并确定了一个自回归移动平均滤波器来监视性能;选择改进的T〜2统计量作为性能监视指标。当检测到性能变化时,使用递归分析和广义似然比(GLR)方法通过模型验证进行诊断。这区分了以下事实:性能变化是由于工厂模型不匹配或由于干扰项引起的。对重油分馏系统进行了仿真,取得了良好的效果。诊断结果有助于操作员提高系统性能。

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