首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science >A new framework for intelligent simultaneous-fault diagnosis of rotating machinery using pairwise-coupled sparse Bayesian extreme learning committee machine
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A new framework for intelligent simultaneous-fault diagnosis of rotating machinery using pairwise-coupled sparse Bayesian extreme learning committee machine

机译:使用成对耦合稀疏贝叶斯极端学习委员会旋转机械智能同步故障诊断框架

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摘要

This paper proposes a new diagnostic framework, namely, probabilistic committee machine, to diagnose simultaneous-fault in the rotating machinery. The new framework combines a feature extraction method with ensemble empirical mode decomposition and singular value decomposition, multiple pairwise-coupled sparse Bayesian extreme learning machines (PCSBELM), and a parameter optimization algorithm to create an intelligent diagnostic framework. The feature extraction method is employed to find the features of single faults in a simultaneous-fault pattern. Multiple PCSBELM networks are built as different signal committee members, and each member is trained using vibration or sound signals respectively. The individual diagnostic result from each fault detection member is then combined by a new probabilistic ensemble method, which can improve the overall diagnostic accuracy and increase the number of detectable fault as compared to individual classifier acting alone. The effectiveness of the proposed framework is verified by a case study on a gearbox fault detection. Experimental results show the proposed framework is superior to the existing single probabilistic classifier. Moreover, the proposed system can diagnose both single- and simultaneous-faults for the rotating machinery while the framework is trained by single-fault patterns only.
机译:本文提出了一种新的诊断框架,即概率委员会机器,诊断旋转机械中的同步故障。新框架将具有集合经验模式分解和奇异值分解的特征提取方法组合,多个成对耦合稀疏贝叶斯极端学习机(PCSBELM)和参数优化算法,创建智能诊断框架。采用特征提取方法来在同时故障模式中找到单个故障的特征。多个PCSbelm网络作为不同的信号委员会成员构建,并且每个成员分别使用振动或声音训练。然后通过新的概率集合方法组合每个故障检测构件的各个诊断结果,该方法可以提高整体诊断精度并增加与单独的单独作用的单独分类器相比的可检测故障的数量。通过齿轮箱故障检测的案例研究验证了所提出的框架的有效性。实验结果表明,所提出的框架优于现有的单一概率分类器。此外,所提出的系统可以诊断旋转机械的单一和同时故障,而框架仅由单故障模式训练。

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