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Data-Driven Distributed Local Fault Detection for Large-Scale Processes Based on the GA-Regularized Canonical Correlation Analysis

机译:基于遗传算法正则相关分析的大规模过程数据驱动分布式局部故障检测

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摘要

Large-scale processes have become common, and fault detection for such processes is imperative. This work studies the data-driven distributed local fault detection problem for large-scale processes with interconnected subsystems and develops a genetic algorithm (GA)-regularized canonical correlation analysis (CCA)-based distributed local fault detection scheme. For each subsystem, the GA-regularized CCA is first performed with its all coupled systems, which aims to preserve the maximum correlation with the minimal communication cost. A CCA-based residual is then generated, and corresponding statistic is constructed to achieve optimal fault detection for the subsystem. The distributed fault detector performs local fault detection for each subsystem using its own measurements and the information provided by its coupled subsystems and therefore exhibits a superior monitoring performance. The regularized CCA-based distributed fault detection approach is tested on a numerical example and the Tennessee Eastman benchmark process. Monitoring results indicate the efficiency and feasibility of the proposed approach.
机译:大规模过程已经变得很普遍,并且对此类过程进行故障检测势在必行。这项工作研究了具有互连子系统的大规模过程的数据驱动的分布式本地故障检测问题,并开发了一种基于遗传算法(GA)规范化规范相关分析(CCA)的分布式本地故障检测方案。对于每个子系统,首先使用其所有耦合系统执行GA规范化的CCA,目的是以最小的通信成本保持最大的相关性。然后生成基于CCA的残差,并构造相应的统计信息以实现子系统的最佳故障检测。分布式故障检测器使用其自身的测量值及其耦合子系统提供的信息对每个子系统执行本地故障检测,因此具有出色的监视性能。在数值示例和田纳西州伊士曼基准过程上测试了基于正则化CCA的分布式故障检测方法。监测结果表明了该方法的有效性和可行性。

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