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A New Modelling and Feature Extraction Method Based on Complex Network and Its Application in Machine Fault Diagnosis

机译:基于复杂网络的建模与特征提取新方法及其在机械故障诊断中的应用

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The application of the existing complex network in fault diagnosis is usually modelled based on the time domain, resulting in the loss of sign frequency-domain features, and the extracted topology features of network are too macroscopic and insensitive to local changes within the network. This paper proposes a new method of local feature extraction based on frequency complex network (FCN) decomposition and builds a new complex network structure feature on this basis, namely, subnetwork average degree. The variation law of signals in frequency domain is obtained with the aid of the structural features of complex network. The local features that are sensitive to local changes of the network are applied to characterize the whole network, with flexible application and without limitation in mechanism. The average degree of subnetwork could be regarded as feature parameters for rolling bearing fault diagnosis and degradation state recognition. Analysis on the experimental data and bearing life cycle data shows that the method proposed in this paper is effective, revealing that the extracted features have effective separability and high accuracy in fault recognition and the degradation detection of the life cycle of rolling bearings combined with neural networks. Moreover, the proposed method has reference value for the processing and recognition of other nonstationary signals.
机译:现有复杂网络在故障诊断中的应用通常是基于时域建模的,从而导致符号频域特征的丢失,并且所提取的网络拓扑特征过于宏观化,对网络内部的局部变化不敏感。提出了一种基于频率复杂网络(FCN)分解的局部特征提取新方法,并在此基础上建立了一个新的复杂网络结构特征,即子网平均度。借助复杂网络的结构特征,获得了频域信号的变化规律。对网络的本地变化敏感的本地特征被用于表征整个网络,具有灵活的应用且不受机制限制。子网的平均程度可以作为滚动轴承故障诊断和退化状态识别的特征参数。通过对实验数据和轴承寿命周期数据的分析表明,本文提出的方法是有效的,表明所提取的特征在故障识别和滚动轴承寿命周期退化检测中具有有效的可分离性和高精度,并与神经网络相结合。 。此外,该方法对其他非平稳信号的处理和识别具有参考价值。

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