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Stochastic Nonlinear Model Predictive Control with Active Model Discrimination: A Closed-Loop Fault Diagnosis Application

机译:具有主动模型辨别的随机非线性模型预测控制:闭环故障诊断应用

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This paper addresses the problem of model predictive control with multiple models for nonlinear systems subject to stochastic disturbances. The multiple models can represent various operating conditions such as system faults or failures, or arise from model structure uncertainty. The paper presents a stochastic nonlinear model predictive control (SNMPC) approach with endogenous learning for active discrimination between the competing models based on closed-loop system observations. The system learning is endogenized through explicit inclusion of a model discrimination measure into the stochastic optimal control problem, which facilitates probabilistic discrimination between the predictions of multiple models. The control approach uses a Bayesian estimation algorithm for recursive estimation of the probabilities that represent the degree to which each model predicts the online system observations. The performance of the proposed SNMPC approach with active model discrimination is demonstrated for closed-loop fault diagnosis.
机译:本文解决了多种模型的模型预测控制问题,用于随机扰动的非线性系统多种模型。多种型号可以代表各种操作条件,例如系统故障或故障,或者从模型结构不确定性出现。本文提出了一种随机非线性模型预测控制(SNMPC)方法,其基于闭环系统观测的竞争模型之间的积极辨别。通过明确包含模型鉴别措施进入随机最佳控制问题的模型鉴别措施来提高系统学习,这有利于多种模型的预测之间的概率辨别。控制方法使用贝叶斯估计算法来归还代表每个模型预测在线系统观测的程度的概率的概率估计。闭环故障诊断证明了具有主动模型鉴别的所提出的SNMPC方法的性能。

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