基于贝叶斯信念网络的局部不可靠观测异常检测平台的综合与优化

Wen-Chiao Lin, H. Garcia
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引用次数: 1

摘要

复杂的工程系统,如核处理系统,需要密切监测以满足特定的操作要求。以前的工作已经开发了用于在离散事件动态系统(DEDS)框架内检测和计数异常模式(例如,物理故障,设施误用)发生的诊断器。这项工作说明了这种通用方法在基于贝叶斯信念网络(bbn)的诊断器设计和优化中的应用。这种方法的两个优点如下。首先,目前使用bbn的监测实现在业界很流行,可以根据本文开发的基于bbn的诊断器轻松扩展和优化。其次,基于bbn的异常模式跟踪诊断程序不需要像基于ded的诊断程序那样多的计算机内存和计算工作量。对于本文设计的基于bbn的诊断器,提出并解决了平衡传感器成本和诊断器性能的传感器配置的优化问题。仿真结果表明,基于bbn的诊断器在检测和计数异常发生方面表现良好,而传感器配置优化结果表明,改进的传感器配置可以在保持可接受的监测性能的同时显着降低传感器成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Synthesis and optimization of a Bayesian belief network based observation platform for anomaly detection under partial and unreliable observations
Complex engineering systems, such as nuclear processing systems, need to be closely monitored to meet given operational requirements. Previous work has developed diagnosers for detecting and counting occurrences of anomaly patterns (e.g., physical faults, facility misuse) in such systems within discrete event dynamic system (DEDS) framework. This work illustrates the application of this general methodology for the design and optimization of a diagnoser based on Bayesian belief networks (BBNs). Two advantages of this approach are as follows. The first is that current monitoring implementations using BBNs, which is popular in the industry, can be easily expanded and optimized based on the BBN-based diagnosers developed here. The second is that BBN-based diagnosers for tracking anomaly patterns do not require as much computer memory and computation effort as DEDS-based diagnosers. For the BBN-based diagnosers designed here, an optimization problem for finding a sensor configuration that balances sensor cost and diagnoser performance is formulated and solved. Simulation results show that a BBN-based diagnoser performs well in detecting and counting the occurrences of anomalies, while sensor configuration optimization results indicate that improved sensor configurations can be found such that sensor cost is significantly reduced while maintaining acceptable monitoring performance.
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