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A rule-based intelligent method for fault diagnosis of rotating machinery

机译:基于规则的旋转机械故障智能诊断方法

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To better equip with a non-expert to carry out the diagnosis operations, a new method for intelligent fault identification of rotating machinery based on the empirical mode decomposition (EMD), dimensionless parameters, fault decision table (FDT), MLEM2 rule induction algorithm and improved rule matching strategy (1RMS) is proposed in this paper. EMD is used to preprocess the vibration signals for mining the fault characteristic information more accurately. Then, dimensionless parameters are extracted from both the decomposed signals in time domain and envelop spectrum in frequency domain respectively to form the conditional attributes of a FDT. Moreover, MLEM2 algorithm is run directly on the FDT to generate decision rules imbedded in the data. To make the following classification process more robust, the IRMS is adopted to resolve the conflicting and non-matching problems. Finally, data of rolling element bearings with four typical working conditions is used to evaluate the performance of the proposed method. The testing result demonstrates that the method has high accuracy and systematically good performance. It is proved to be a convenient, concise, interpretable and reliable way to diagnose bearings' faults. The advantages are also confirmed by the comparisons with the other two approaches, i.e. the principal component analysis (PCA) and probabilistic neural network (PNN) based method as well as the wavelet transform (WT) and genetic algorithm (GA) based one. Furthermore, thank to the FDT working as a data interface, the method is more transplantable, therefore it may be applied to diagnose other types of rotating machines effectively.
机译:为了更好地配备非专家来进行诊断操作,基于经验模态分解(EMD),无量纲参数,故障决策表(FDT),MLEM2规则归纳算法和算法的旋转机械智能故障识别新方法。本文提出了一种改进的规则匹配策略(1RMS)。 EMD用于预处理振动信号,以更准确地挖掘故障特征信息。然后,分别从时域中的分解信号和频域中的包络频谱中提取无量纲参数,以形成FDT的条件属性。此外,MLEM2算法直接在FDT上运行,以生成嵌入在数据中的决策规则。为了使以下分类过程更可靠,采用IRMS来解决冲突和不匹配的问题。最后,使用具有四种典型工作条件的滚动轴承数据来评估该方法的性能。测试结果表明,该方法具有较高的准确性和系统的良好性能。实践证明,这是诊断轴承故障的简便,简明,可解释和可靠的方法。通过与其他两种方法的比较也证实了优点,即基于主成分分析(PCA)和概率神经网络(PNN)的方法以及基于小波变换(WT)和遗传算法(GA)的方法。此外,由于FDT作为数据接口,该方法具有更高的可移植性,因此可以有效地诊断其他类型的旋转机械。

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