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Performance-driven optimal design of distributed monitoring for large-scale nonlinear processes

机译:性能驱动的大型非线性过程分布式监控优化设计

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Centralized monitoring generally involves all measured variables in one model. However, the existence of variables without beneficial information may cause redundancy in the monitoring and degrade monitoring performance. This paper proposes a performance-driven distributed monitoring scheme that incorporates kernel principal analysis (KPCA) and Bayesian diagnosis system for large-scale nonlinear processes. First, a stochastic optimization method is utilized to select a subset of variables that provide the best possible performance for each fault and to decompose the process into several sub-blocks. Second, a KPCA model is established in each block to deal with nonlinearity and generate fault signature evidence. Finally, a Bayesian fault diagnosis system is established to identify the fault status of the entire process. Considering the significant calculation amount in Bayesian diagnosis, optimal evidence source selection is performed to reduce the redundancy. Case studies on the Tennessee Eastman benchmark process and a continuous stirred tank reactor process demonstrate the efficiency of the proposed scheme. (C) 2016 Elsevier B.V. All rights reserved.
机译:集中监控通常将所有测量变量包含在一个模型中。但是,没有有益信息的变量的存在可能导致监视中的冗余并降低监视性能。本文提出了一种性能驱动的分布式监控方案,该方案结合了核主分析(KPCA)和贝叶斯诊断系统的大规模非线性过程。首先,采用随机优化方法来选择变量的子集,以为每个故障提供最佳性能,并将过程分解为几个子块。其次,在每个区块中建立一个KPCA模型来处理非线性并生成故障签名证据。最后,建立贝叶斯故障诊断系统以识别整个过程的故障状态。考虑到贝叶斯诊断中的大量计算量,执行了最佳证据源选择以减少冗余。对田纳西州伊士曼基准工艺和连续搅拌釜反应器工艺的案例研究证明了该方案的有效性。 (C)2016 Elsevier B.V.保留所有权利。

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