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Failure strength prediction of unidirectional tensile coupons using acoustic emission peak amplitude and energy parameter with artificial neural networks

机译:基于声发射峰幅度和能量参数的人工神经网络预测单向拉伸试件的破坏强度

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Acoustic emission studies have been carried out on 18 numbers of ASTM-3039 unidirectional carbon/ epoxy tensile specimens, while loading to failure with a 100 kN Universal Testing Machine. AE response from each of the specimens was filtered and the data acquired up to 50% of actual failure load was only considered for further analysis. Significant AE parameters like peak amplitude, event duration and energy were utilized for analyzing different failure modes in composites viz, matrix crazing, fiber fracture and delamination. The Back propagation neural network structured as 66-45-1 was able to predict the failure load of tensile specimens within 1.22% error tolerance. Only amplitude frequencies and corresponding failure loads of each of the specimens in the training set was taken as input and output vectors of the network, respectively. Another network structured as 66-38-1, along with cumulative energy of each of the amplitude at 1 dB interval as input and the failure strength as output, was able to predict the failure strength of test specimens within 5.75% error tolerances. The prediction accuracy of earlier network was found better, however both the networks were having good correlation in predicting failure strengths.
机译:在使用100 kN万能试验机加载至失效的同时,已经对18个ASTM-3039单向碳/环氧拉伸样品进行了声发射研究。过滤每个样本的AE响应,仅考虑获取高达实际破坏载荷的50%的数据进行进一步分析。诸如峰值幅度,事件持续时间和能量之类的重要AE参数被用于分析复合材料的不同破坏模式,即基体开裂,纤维断裂和分层。构造为66-45-1的反向传播神经网络能够在1.22%的误差容限范围内预测拉伸试样的破坏载荷。仅将训练集中每个样本的振幅频率和相应的破坏载荷分别作为网络的输入和输出向量。另一个结构为66-38-1的网络,加上每隔1 dB的幅度的累积能量作为输入,而破坏强度作为输出,则能够在5.75%的误差容限范围内预测试样的破坏强度。发现早期网络的预测准确性更好,但是两个网络在预测故障强度方面都具有良好的相关性。

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