首页> 外文期刊>Chinese Journal of Mechanical Engineering >DIAGNOSTICS OF FATIGUE CRACK IN ULTERIOR PLACES OF LARGER- SCALE OVERLOADED SUPPORTING SHAFT BASED ON TIME SERIES AND NEURAL NETWORKS
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DIAGNOSTICS OF FATIGUE CRACK IN ULTERIOR PLACES OF LARGER- SCALE OVERLOADED SUPPORTING SHAFT BASED ON TIME SERIES AND NEURAL NETWORKS

机译:基于时间序列和神经网络的大型超载支撑轴疲劳裂纹诊断

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摘要

To improve the diagnosis accuracy and self-adaptability of fatigue crack in ulterior place of the supporting shaft, time series and neural network are attempted to be applied in research on diagnosing the fatigue crack's degree based on analyzing the vibration characteristics of the supporting shaft. By analyzing the characteristic parameter which is easy to be detected from the supporting shaft's exterior, the time series model parameter which is hypersensitive to the situation of fatigue crack in ulterior place of the supporting shaft is the target input of neural network, and the fatigue crack's degree value of supporting shaft is the output. The BP network model can be built and network can be trained after the structural parameters of network are selected. Furthermore, choosing the other two different group data can test the network. The test result will verify the validity of the BP network model. The result of experiment shows that the method of time series and neural network are effective to diagnose the occurrence and the development of the fatigue crack's degree in ulterior place of the supporting shaft.
机译:为了提高疲劳裂纹在支轴后部的诊断精度和自适应性,在分析支轴振动特性的基础上,尝试将时间序列和神经网络应用于疲劳裂纹程度的诊断研究。通过分析易于从支撑轴外部检测到的特征参数,将对支撑轴末端疲劳裂纹情况敏感的时间序列模型参数作为神经网络的目标输入,并将疲劳裂纹支撑轴的度值是输出。选择网络的结构参数后,可以建立BP网络模型并训练网络。此外,选择其他两个不同的组数据可以测试网络。测试结果将验证BP网络模型的有效性。实验结果表明,采用时间序列和神经网络方法可以有效地诊断出支撑轴下部疲劳裂纹的发生和发展。

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