基于长短期记忆递归神经网络的旋转机械故障预测

Yuan Xie, Tao Zhang
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引用次数: 4

摘要

随着现代工业的发展,系统或设备的预测与健康管理(PHM)变得越来越重要。通常PHM需要大量的先验信息或统计特征来预测未来的系统状态,然而在实践中通常无法获得专家或准确的物理模型。长短期记忆(LSTM)递归神经网络(RNN)作为深度神经网络算法的一个重要发展方向,在自然语言处理(NLP)和时间序列预测等机器学习问题中已被证明具有显著的实用性和准确性。提出了一种基于旋转机械振动信号的LSTM故障预测方法。结果表明,在较短时间内有限的可用数据下,LSTM算法提高了机械性能预测的能力。与其他预测方法相比,所提出的LSTM方法取得了成功的结果,可以提高健康管理和机器状态监测的能力。实践证明,该方法对复杂轴承系统的预测具有优越性和实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Long Short Term Memory Recurrent Neural Network Approach for Rotating Machinery Fault Prognosis
System or equipment prognosis and health management (PHM) has become more important than ever as modern industry develop. Normally PHM requires abundant prior information or statistic features to predict future system states, however an expert or accurate physical model is usually unavailable in practice. As an important trend of deep neural network algorithms, long short term memory (LSTM) recurrent neural network (RNN) has been proven significantly practical and accurate in machine learning problems such as natural language processing (NLP) and time serial prediction. In this paper a novel fault prognosis approach using LSTM based on vibration signal of rotating machinery is presented. It is proven that the capacity of machinery performance prediction with LSTM algorithm is improved with limited data available in a relatively short time period. The proposed LSTM approach, compared with other prognosis methods, gives a successful outcomes that may enhance the ability of health management and machine condition monitoring. It is proven that the proposed approach is superior and more practical for machine prognosis in complex bearing systems.
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