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首页> 外文期刊>International Journal of Condition Monitoring >(s2)Application of interacting multiple model-based fault detection method on a hydraulic two-tank system
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(s2)Application of interacting multiple model-based fault detection method on a hydraulic two-tank system

机译:(s2)应用程序的多个交互基于模型的故障检测方法在液压槽式系统

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This paper addresses the problem of designing a fault identification and detection algorithm for non-linear systems. Timely identification and detection of a fault in a system is crucial in condition monitoring systems. However, finding the source of the failure is not trivial in systemswith large numbers of components and complex component relationships. In this paper, an efficient scheme to detect adverse changes in system reliability and find the failed component is proposed, based on the interacting multiple model (IMM) algorithm, with fault detection and diagnosis formulatedas a hybrid multiple model estimation scheme. The proposed approach provides an integrated framework for fault detection, diagnosis and state estimation. Its performance is illustrated for fault detection of a non-linear two-tank system. The proposed method can be used with different kindsof filters, using the confusion matrix and classification accuracy as comparison metrics. A particle filter is used with the IMM algorithm and its performance is compared to the linear Kalman filter as a comparative case concerning the improvement that can be achieved when going beyond theconsideration that the system is linear.
机译:本文解决了设计的问题故障识别和检测算法非线性系统。故障的检测系统是至关重要的状态监测系统。失败是很重要的systemswith和大量的组件关系复杂的组件。一个有效的方案来检测不良变化系统可靠性和找到失败的组件提出基于交互多吗模型(IMM)算法和故障检测诊断formulatedas混合多个模型估计方案。一个集成的框架,用于故障检测,诊断和状态估计。故障检测的说明吗非线性槽式系统。可以使用不同的不同过滤器,使用混淆矩阵和分类精度作为比较指标。与IMM算法及其性能相对于线性卡尔曼滤波器作为比较案例关于改进能取得超越theconsideration系统是线性的。

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