Multichannel intelligent fault diagnosis of hoisting system using differential search algorithm‐variational mode decomposition and improved deep convolutional neural network

Yang Li, Chi-Guhn Lee, Feiyun Xu
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引用次数: 1

Abstract

Nowadays, the feature extraction method of multichannel acoustic emission (AE) signal provides a solid research foundation for digital and intelligent fault diagnosis of the hoisting system. More specifically, AE signal collected from the hoisting system is generally characterized by nonlinear and non‐stationary, thus making the traditional intelligent fault diagnosis methods cannot accurately extract the inherent fault features. To alleviate this problem and improve the accuracy of multichannel fault diagnosis, a new fault diagnosis method for hoisting system based on differential search algorithm‐variational mode decomposition (DSA‐VMD) and improved deep convolutional neural network (IDCNN) is proposed in this paper. Specifically, the proposed DSA‐VMD and IDCNN method is divided into two main components: (i) the inside parameters (K, a) of VMD is optimized to effectively extract the multichannel AE fault feature via DSA‐VMD and (ii) the extracted multichannel fault components are fed into the designed IDCNN algorithm to accomplish fault identification automatically. Experimental results from the hoisting system demonstrate the effectiveness of the proposed approach. Additionally, the superiority of the proposed approach has also been verified in extracting fault information and fault identification compared to the other multichannel fault diagnosis methods.
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基于变分模态分解和改进深度卷积神经网络的提升系统多通道智能故障诊断
目前,多通道声发射(AE)信号的特征提取方法为提升系统的数字化、智能化故障诊断提供了坚实的研究基础。更具体地说,从提升系统采集的声发射信号通常具有非线性和非平稳的特征,这使得传统的智能故障诊断方法无法准确提取其固有的故障特征。为了解决这一问题,提高多通道故障诊断的准确性,本文提出了一种基于差分搜索算法-变分模态分解(DSA - VMD)和改进深度卷积神经网络(IDCNN)的提升系统故障诊断新方法。具体而言,本文提出的DSA‐VMD和IDCNN方法分为两个主要部分:(1)对VMD内部参数(K, a)进行优化,通过DSA‐VMD有效提取多通道声发射故障特征;(2)将提取的多通道故障分量输入到设计的IDCNN算法中,实现故障自动识别。对某提升系统的实验结果验证了该方法的有效性。此外,与其他多通道故障诊断方法相比,该方法在故障信息提取和故障识别方面的优越性也得到了验证。
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