Automatic Engine Modeling for Failure Detection

A. Schrempf, L. Re, W. Groißböck, E. Lughofer, E. Klement, G. Frizberg
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引用次数: 3

Abstract

Fast detection of abnormal plant operation is critical for many applications. Fault detection requires some kind of comparison between actual and “normal” behavior, which implies the use of models. Exact modeling of engine systems is probably impossible and even middle-complexity models are very time-consuming. In some few cases, as for on board diagnostics, the very limited amount of cases to be treated and the usually large production volumes allow to develop models suitable to detect an abnormal behavior, but, in general, however, this approach cannot be followed. As fast detection of abnormal plant operation is often critical, alternative low-effort approaches are required. This paper presents a procedure suitable for engine fault detection based on parallel automatic modeling. It is shown that this approach yields a flexible and reliable tool for automatic modeling for this goal, while keeping the effort for the operator rather low.
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用于故障检测的自动发动机建模
对于许多应用来说,快速检测设备的异常运行是至关重要的。故障检测需要在实际行为和“正常”行为之间进行某种比较,这意味着需要使用模型。发动机系统的精确建模可能是不可能的,甚至中等复杂性的模型也非常耗时。在少数情况下,如船上诊断,需要治疗的病例数量非常有限,通常产量很大,因此可以开发适合检测异常行为的模型,但通常不能采用这种方法。由于快速检测异常工厂操作通常是至关重要的,因此需要其他低成本的方法。提出了一种适用于发动机故障检测的并行自动建模方法。结果表明,该方法为该目标的自动建模提供了灵活可靠的工具,同时使操作者的工作量相当低。
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