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Model Based Fault-Detection and -Diagnosis using Active Magnetic Bearings

机译:基于模型的故障检测和 - 使用主动磁轴承的故障检测

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This paper shows how model based fault detection and diagnosis can be integrated into the active magnetic bearing system. It describes two appropriate fault-detection methods on the example of centrifugal pumps in magnetic bearings and shows how typical fault states occurring on these pumps can be detected and diagnosed. Prior to the fault detection the modeling of the magnetic bearing system is described. The investigated multi model method contains a bank of models representing the systems transfer behavior for the different fault. With this method the error between the outputs of the models and the output of the plant are provided as features for the fault diagnosis. Abalancing filter is described helping to separate the different features more clearly. Instead of computing the complete frequency behavior of the plant the transfer factor method uses the Goertzel algorithm to compute only significant discrete frequency points and provides the complex transfer factor as feature. It is shown that fault detection and diagnosis could be integrated within AMB systems. Both methods are well suited to provide reliable information about the system state.
机译:本文显示了基于模型的故障检测和诊断如何集成到主动磁轴承系统中。它描述了在磁轴承中的离心泵的例子上的两个适当的故障检测方法,并显示了在这些泵上发生的典型故障状态是如何检测和诊断。在故障检测之前,描述了磁性轴承系统的建模。调查的多模型方法包含一组模型,代表不同故障的系统传输行为。通过这种方法,模型输出和工厂的输出之间的误差作为故障诊断提供的特征。描述了持久的过滤器有助于更清楚地将不同的功能分开。代替计算工厂的完整频率行为,传输因子方法使用Goertzel算法仅计算显着的离散频率点,并将复杂的转移因子提供为特征。结果表明,故障检测和诊断可以集成在AMB系统中。这两种方法都非常适合提供有关系统状态的可靠信息。

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