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Prediction on wear properties of polymer composites with artificial neural networks

机译:用人工神经网络预测聚合物复合材料的磨损性能

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摘要

An artificial neural network (ANN) technique is applied to predict the wear properties of polymer-matrix composites. Based on an experimental database for short fiber reinforced polyamide 4.6 composites, the specific wear rate, frictional coefficient and furthermore some mechanical properties, such as compressive strength and modulus, were successfully calculated by a well-trained ANN. 3-D plots for the predicted wear and mechanical characteristics as a function of material compositions and testing conditions were established. The results are in good agreement with measured data. It shows that the prediction accuracy is reasonable, and the network has potential to be improved if the experimental database for network training could be expanded.
机译:人工神经网络(ANN)技术被应用于预测聚合物基复合材料的磨损性能。在短纤维增强聚酰胺4.6复合材料的实验数据库的基础上,通过训练有素的ANN成功地计算出比磨损率,摩擦系数以及一些机械性能,例如抗压强度和模量。建立了预测的磨损和机械特性随材料成分和测试条件而变化的3-D图。结果与实测数据吻合良好。结果表明,该方法的预测精度是合理的,如果可以扩展网络训练的实验数据库,则具有改善网络的潜力。

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