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Determining the stress intensity factor of a material with an artificial neural network from acoustic emission measurements

机译:通过声发射测量,使用人工神经网络确定材料的应力强度因子

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An artificial neural (ANN) network was trained to recognize the stress intensity factor in the interval from microcrack to fracture from acoustic emission (AE) measurements on compact tension specimens. The specimens were made from structural steel SWS490B whilst the ANN had a 5-14-1 structure. The number of neurons in the input layers was five inputs of the AE parameters such as ring-down counts, rise time, energy, event duration and peak amplitude. The performance of the ANN was tested using a specific set of the AE data. The ANN is a promising tool for predicting the stress intensity factor of material using AE data.
机译:训练了一个人工神经(ANN)网络,以从紧凑的张力样本上的声发射(AE)测量中识别从微裂纹到断裂的时间间隔内的应力强度因子。标本由结构钢SWS490B制成,而人工神经网络的结构则为5-14-1。输入层中神经元的数量是AE参数的五个输入,例如振铃次数,上升时间,能量,事件持续时间和峰值幅度。使用一组特定的AE数据测试了ANN的性能。人工神经网络是一种使用AE数据预测材料应力强度因子的有前途的工具。

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