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A data-based approach for multivariate model predictive control performance monitoring

机译:基于数据的多模型预测控制性能监控方法

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摘要

An intelligent statistical approach is proposed for monitoring the performance of multivariate model predictive control (MPC) controller, which systematically integrates both the assessment and diagnosis procedures. Model predictive error is included into the monitored variable set and a 2-norm based covariance benchmark is presented. By comparing the data of a monitored operational period with the "golden" user-predefined one, this method can properly evaluate the performance of an MPC controller at the monitored operational stage. Characteristic direction information is mined from the operating data and the corresponding classes are built. The eigenvector angle is defined to describe the similarity between the current data set and the established classes, and an angle-based classifier is introduced to identify the root cause of MPC performance degradation when a poor performance is detected. The effectiveness of the proposed methodology is demonstrated in a case study of the Wood-Berry distillation column system.
机译:提出了一种智能统计方法来监视多元模型预测控制(MPC)控制器的性能,该控制器系统地集成了评估和诊断程序。模型预测误差包含在受监视变量集中,并提出了基于2范数的协方差基准。通过将监视的运行周期的数据与“黄金”用户预定义的数据进行比较,此方法可以在监视的运行阶段正确评估MPC控制器的性能。从运行数据中提取特征方向信息,并建立相应的类别。定义特征向量角度来描述当前数据集和已建立类别之间的相似性,并引入基于角度的分类器来识别检测到不良性能时MPC性能下降的根本原因。在Wood-Berry蒸馏塔系统的案例研究中证明了所提出方法的有效性。

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