An Improved Fault Diagnosis Framework Based on Deep Belief Networks

Jing Ma, Hongquan Wen, M. E, Zengqiang Jiang, Qi Li
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引用次数: 1

Abstract

Real-time and accurate fault diagnosis can provide early warning of system failure and support decision-making of maintenance and replacement processes, enhancing reliability of the dynamic system and reducing costs for maintenance. Deep belief networks, as one of the deep learning methods, can extract features from monitoring data and establish nonlinear relationship between extracted features and comprehensive system conditions. It has potentials for fault diagnosis. In this paper, a complete fault diagnosis framework starting from FFT(Fast Fourier Transform) to health condition prediction is proposed. Bearing vibration data is employed to verify the proposed approach. The results show that the proposed model has high and stable prediction accuracy. These results demonstrate the effectiveness, stability, and robustness of the fault diagnosis framework based on deep belief networks.
基于深度信念网络的改进故障诊断框架
实时、准确的故障诊断可以为系统故障提供早期预警,支持维护和更换过程的决策,提高动态系统的可靠性,降低维护成本。深度信念网络作为一种深度学习方法,可以从监测数据中提取特征,并在提取的特征与系统综合条件之间建立非线性关系。具有故障诊断的潜力。本文提出了一个从快速傅立叶变换到健康状态预测的完整故障诊断框架。采用轴承振动数据验证了该方法。结果表明,该模型具有较高且稳定的预测精度。这些结果证明了基于深度信念网络的故障诊断框架的有效性、稳定性和鲁棒性。
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