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Using Artificial Neural Networks to Predict the Fatigue Life of Different Composite Materials Including the Stress Ratio Effect

机译:使用人工神经网络预测包括应力比效应在内的不同复合材料的疲劳寿命

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摘要

Artificial Neural Networks (ANN) have been successfully used in predicting the fatigue behavior of fiber-reinforced composite materials. In most cases, the predictions were obtained for the same material used in training subjected to different loading conditions. The method would be of greater value if one could predict the failure of materials other than those used for training the network. In a recent paper, ANN trained using the experimental fatigue data obtained for composites subjected to a constant stress ratio (R=s_(min)=s_(max))Twas successfully used to predict the cyclic behavior of a composite made of a different material. In this work, this method is extended to include the stress ratio effect. The results show that ANN can provide accurate fatigue life prediction for different materials under different values of the stress ratio. These results can allow for the development of a materials smart database that can be used for various engineering applications.
机译:人工神经网络(ANN)已成功用于预测纤维增强复合材料的疲劳行为。在大多数情况下,获得的预测是针对在不同负载条件下用于训练的相同材料进行的。如果可以预测用于训练网络的材料以外的其他材料的失效,则该方法将具有更大的价值。在最近的一篇论文中,使用获得的复合材料承受恒定应力比(R = s_(min)= s_(max))T的实验疲劳数据训练的ANN已成功用于预测由不同材料制成的复合材料的循环行为。在这项工作中,此方法已扩展为包括应力比效应。结果表明,人工神经网络可以为不同材料在不同的应力比值下提供准确的疲劳寿命预测。这些结果可以允许开发可用于各种工程应用的材料智能数据库。

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