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Artificial Neural Network Based Prediction of Fatigue Crack Propagation

机译:基于人工神经网络的疲劳裂纹传播预测

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Failure analysis and prevention are important to all of the engineering disciplines, especially for the aerospace industry. Aircraft accidents are remembered by the public because of the unusually high loss of life and broad extent of damage. In this paper, the artificial neural network (ANN) technique for the data processing of on-line fatigue crack growth monitoring is proposed after analyzing the general technique for fatigue crack growth data. A model for predicting the fatigue crack growth by ANN is presented, which does not need all kinds of materials and environment parameters, and only needs to measure the relation between a (length of crack) and N (cyclic times of loading) in-service. The feasibility of this model was verified by some examples. It makes up the inadequacy of data processing for current technique and on-line monitoring. Hence it has definite realistic meaning for engineering application.
机译:失败分析和预防对所有工程学科都很重要,特别是对于航空航天工业而言。由于生活中的异常高,损害程度非常高,因此公众记住了飞机事故。本文提出了在分析疲劳裂纹生长数据的一般技术之后,提出了在线疲劳裂纹生长监测数据处理的人工神经网络(ANN)技术。提出了一种用于预测ANN的疲劳裂纹增长的模型,这不需要各种材料和环境参数,并且只需要测量(裂缝长度)和N(加载循环时间)之间的关系。通过一些示例验证了该模型的可行性。它弥补了当前技术和在线监控的数据处理的不足。因此,它对工程应用具有明确的现实意义。

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