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首页> 外文期刊>Journal of Process Control >Generating optimal overlapping subsystems for distributed statistical fault detection subject to constraints
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Generating optimal overlapping subsystems for distributed statistical fault detection subject to constraints

机译:生成用于分布式统计故障检测的最佳重叠子系统,受约束

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摘要

Fast and accurate detection of faults is essential for the safe and cost-effective operation of chemical plants. Large scale process systems can potentially be affected by a wide variety of faults. An effective approach for detecting faults in such systems is to first divide or decompose the system's sensors into subsystems and to then implement a statistical monitoring method in each of the subsystems. The detection performance of such distributed multivariate statistical process monitoring methods depends strongly on the decomposition of the system's sensors into subsystems. In our previous work, we developed a simulation optimization method, called Performance Driven Agglomerative Clustering, which uses a greedy search strategy, based on clustering algorithms from graph theory, to find a decomposition of the system's sensors into subsystems for which the detection performance of a distributed monitoring method is near optimal. It is possible that the detection performance can be further improved by allowing a sensor to be part of multiple subsystems in the decomposition. User defined requirements may also place constraints on the decomposition of the sensors into subsystems. In this work, we propose the Extended Performance Driven Agglomerative Clustering method which allows to incorporate constraints and sensors to be allocated to multiple subsystems. To demonstrate its effectiveness, the proposed method is applied to the benchmark Tennessee Eastman Process. (C) 2019 Elsevier Ltd. All rights reserved.
机译:快速准确地检测故障对于化学厂的安全和经济有效运行至关重要。大规模过程系统可能受各种故障的影响。用于检测这种系统中的故障的有效方法首先将系统的传感器分解为子系统,然后在每个子系统中实现统计监视方法。这种分布式多变量统计过程监测方法的检测性能强烈取决于系统传感器分解为子系统的分解。在我们以前的工作中,我们开发了一种仿真优化方法,称为性能驱动的群集聚类,它使用贪婪的搜索策略,基于Graph理论的聚类算法,找到系统传感器的分解成一个子系统的检测性能分布式监测方法在最佳状态附近。通过允许传感器在分解中是多个子系统的一部分,可以进一步提高检测性能。用户定义的要求还可以将传感器分解的约束放入子系统中。在这项工作中,我们提出了扩展的性能驱动的群集聚类方法,其允许将约束和传感器合并到多个子系统中。为了证明其有效性,该方法适用于基准田纳西州伊斯曼进程。 (c)2019年elestvier有限公司保留所有权利。

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