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An Agent-Based Implementation of Hidden Markov Models for Gas Turbine Condition Monitoring

机译:基于Agent的燃气轮机状态监测隐马尔可夫模型的实现

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This paper considers the use of a multiagent system (MAS) incorporating hidden Markov models for the condition monitoring of gas turbine (GT) engines. Hidden Markov models utilizing a Gaussian probability distribution are proposed as an anomaly detection tool for GTs components. The use of this technique is shown to allow the modeling of the dynamics of GTs despite a lack of high-frequency data. This allows the early detection of developing faults and avoids costly outages due to asset Failure. These models are implemented as part of an MAS, using a proposed extension of an established power system ontology, for fault detection of gas turbines. The multiagent system is shown to be applicable through a case study and comparison to an existing system utilizing historic data from a combined-cycle gas turbine plant provided by an industrial partner.
机译:本文考虑将包含隐马尔可夫模型的多主体系统(MAS)用于燃气轮机(GT)发动机状态监测。提出了利用高斯概率分布的隐马尔可夫模型作为GTs组件的异常检测工具。尽管缺乏高频数据,但已表明使用该技术可以对GT的动力学进行建模。这样可以及早发现正在发展的故障,并避免由于资产故障而造成的高昂停机。这些模型作为MAS的一部分实施,使用了已建立的电力系统本体的拟议扩展,用于燃气轮机故障检测。通过案例研究和与现有系统的比较,证明多代理系统是适用的,该系统利用了来自工业伙伴提供的联合循环燃气轮机厂的历史数据。

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