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Ant colony clustering analysis based intelligent fault diagnosis method and its application to rotating machinery

机译:基于蚁群聚类分析的智能故障诊断方法及其在旋转机械中的应用

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Fault diagnosis is crucial to improve reliability and performance of machinery. Effective feature extraction and clustering analysis can mine useful information from large amounts of raw data and facilitate fault diagnosis. This paper presents a novel intelligent fault diagnosis method based on ant colony clustering analysis. Vibration signals acquired from equipment are decomposed by wavelet packet transform, after which sub-bands of signals are clustered by ant colony algorithm, and each cluster as a set of data is analyzed from pattern of frequency band perspective for selecting intrinsic features reflecting operation condition of equipment, and thus fault diagnosis model is established to combine the extracted major features with given fault prototypes from historical data. The classification process for fault diagnosis is carried out using Euclidean nearness degree based on the established model. Furthermore, an improved ant colony clustering algorithm is proposed to adjust comparison probability dynamically and detect outliers. When compared with other clustering algorithms, the algorithm has higher convergence speed to meet requirements of real-time analysis as well as further improvement of accuracy. Finally, effectiveness and feasibility of the proposed method is verified by vibration signals acquired from a rotor test bed.
机译:故障诊断对于提高机械的可靠性和性能至关重要。有效的特征提取和聚类分析可以从大量原始数据中挖掘有用的信息,并有助于故障诊断。本文提出了一种基于蚁群聚类分析的新型智能故障诊断方法。通过小波包变换分解从设备获取的振动信号,然后通过蚁群算法对信号的子带进行聚类,然后从频带的角度分析作为数据集的每个聚类,以选择反映操作条件的固有特征。设备,从而建立故障诊断模型,以将提取的主要特征与历史数据中的给定故障原型相结合。在建立的模型的基础上,利用欧几里得接近度对故障进行分类。此外,提出了一种改进的蚁群聚类算法来动态调整比较概率并检测离群值。与其他聚类算法相比,该算法具有更高的收敛速度,可以满足实时分析的要求,并且可以进一步提高精度。最后,通过从转子试验台获得的振动信号验证了该方法的有效性和可行性。

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