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首页> 外文期刊>Discrete event dynamic systems: Theory and applications >A diagnoser algorithm for anomaly detection in DEDS under partial and unreliable observations: Characterization and inclusion in sensor configuration optimization
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A diagnoser algorithm for anomaly detection in DEDS under partial and unreliable observations: Characterization and inclusion in sensor configuration optimization

机译:在部分和不可靠观察下用于DEDS中异常检测的诊断算法:表征和包括在传感器配置优化中

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摘要

Complex engineering systems have to be carefully monitored to meet demanding performance requirements, including detecting anomalies in their operations. There are two major monitoring challenges for these systems. The first challenge is that information collected from the monitored system is often partial and/or unreliable, in the sense that some occurred events may not be reported and/or may be reported incorrectly (e.g., reported as another event). The second is that anomalies often consist of sequences of event patterns separated in space and time. This paper introduces and analyzes a diagnoser algorithm that meets these challenges for detecting and counting occurrences of anomalies in engineering systems. The proposed diagnoser algorithm assumes that models are available for characterizing plant operations (via stochastic automata) and sensors (via probabilistic mappings) used for reporting partial and unreliable information. Methods for analyzing the effects of model uncertainties on the diagnoser performance are also discussed. In order to select configurations that reduce sensor costs, while satisfying diagnoser performance requirements, a sensor configuration selection algorithm developed in previous work is then extended for the proposed diagnoser algorithm. The proposed algorithms and methods are then applied to a multi-unit-operation system, which is derived from an actual facility application. Results show that the proposed diagnoser algorithm is able to detect and count occurrences of anomalies accurately and that its performance is robust to model uncertainties. Furthermore, the sensor configuration selection algorithm is able to suggest optimal sensor configurations with significantly reduced costs, while still yielding acceptable performance for counting the occurrences of anomalies.
机译:必须仔细监视复杂的工程系统,以满足苛刻的性能要求,包括检测其运行中的异常情况。这些系统在监视方面存在两个主要挑战。第一个挑战是,在某些发生的事件可能不会被报告和/或可能被错误地报告(例如,报告为另一事件)的意义上,从被监视系统收集的信息通常是部分和/或不可靠的。第二个是异常通常由事件模式序列组成,这些事件模式序列在时间和空间上分开。本文介绍并分析了一种诊断算法,该算法可满足在工程系统中检测和计数异常发生的挑战。提出的诊断算法假设模型可用于表征工厂运行(通过随机自动机)和传感器(通过概率映射)来报告部分和不可靠的信息。还讨论了分析模型不确定性对诊断性能的影响的方法。为了选择降低传感器成本的配置,同时满足诊断程序的性能要求,然后将先前工作中开发的传感器配置选择算法扩展为所提出的诊断程序算法。所提出的算法和方法随后被应用于多单元操作系统,该多单元操作系统是从实际设施应用中派生的。结果表明,所提出的诊断算法能够准确地检测和计数异常的发生,并且其性能对于不确定性建模具有鲁棒性。此外,传感器配置选择算法能够以显着降低的成本提出最佳的传感器配置,同时仍能为统计异常的发生产生可接受的性能。

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