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首页> 外文期刊>International Journal of Fluid Power >DETECTION AND ISOLATION OF LEAKAGE AND VALVE FAULTS IN HYDRAULIC SYSTEMS IN VARYING LOADING CONDITIONS, PART 2: FAULT DETECTION AND ISOLATION SCHEME
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DETECTION AND ISOLATION OF LEAKAGE AND VALVE FAULTS IN HYDRAULIC SYSTEMS IN VARYING LOADING CONDITIONS, PART 2: FAULT DETECTION AND ISOLATION SCHEME

机译:各种负载条件下液压系统中泄漏和阀门故障的检测和隔离,第2部分:故障检测和隔离方案

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摘要

Leakages and valve faults are among the most common faults in hydraulic systems. This paper studies the real-time detection and isolation of certain leakage and valve faults based on the results obtained in part one. In the first part, the mathematical model of a hydraulic test bed was analysed with Global Sensitivity Analysis to facilitate a systematic and verified approach to model-based condition monitoring. In this paper, an Unscented Kalman Filter-based Fault Detection and Isolation scheme for leakage and valve faults of a generic servo valve-controlled hydraulic cylinder is devised. Compared to existing literature, the leakage and valve faults are decoupled from cylinder static and dynamic loading which makes the results generic and applicable to any servo valve-controlled hydraulic cylinder. Moreover, a more comprehensive set of fault patterns for the detection and isolation of leakages and valve faults with experimental and simulation results are presented. We show that detecting an external leakage of as small as 0.17 l/min is possible in some cases, but the accuracy of the method varies considerably. We also report why the isolation of valve faults from leakages is very difficult.
机译:泄漏和阀门故障是液压系统中最常见的故障。本文根据第一部分获得的结果,研究某些泄漏和阀门故障的实时检测和隔离。在第一部分中,使用Global Sensitivity Analysis对液压试验台的数学模型进行了分析,以促进基于模型的状态监测的系统化和经过验证的方法。本文针对通用伺服阀控液压缸,设计了一种基于无味卡尔曼滤波器的故障检测与隔离方案。与现有文献相比,泄漏和阀故障与缸的静载荷和动载荷是分离的,这使得结果通用且适用于任何伺服阀控制的液压缸。此外,还提供了一套更全面的故障模式,用于检测和隔离泄漏和阀门故障,并提供了实验和仿真结果。我们表明,在某些情况下,可以检测到小至0.17 l / min的外部泄漏,但该方法的准确性差异很大。我们还报告了为什么很难将阀故障与泄漏隔离开来。

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