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A Machine Learning Technique to Predict Biaxial Failure Envelope of Unidirectional Composite Lamina

机译:一种预测单向复合板双轴破坏包络的机器学习技术

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A machine learning technique was used to predict static, failure envelopes ofunidirectional composite laminas under combined normal (longitudinal or transverse)and shear loading at different biaxial ratios. An artificial neural network was chosen forthis purpose due to their superior computational efficiency and ability to handlenonlinear relationships between inputs and outputs. Training and test data for the neuralnetwork were taken from the experimental composite failure data for glass- and carbonfiberreinforced epoxies provided by the world-wide failure exercise (WWFE) program.A quadratic, stress interactive Tsai-Wu failure theory was calibrated based on thereported strength values, as well as optimized from the experimental failure data points.The prediction made by the neural network was compared against the Tsai-Wu failurecriterion predictions and it was observed that the trained neural network provides abetter representation of the experimental data.
机译:机器学习技术被用来预测静态的,失效的包络线。 组合法向(纵向或横向)下的单向复合层板 和在不同双轴比下的剪切载荷。选择了人工神经网络用于 由于其卓越的计算效率和处理能力,因此达到了此目的 输入和输出之间的非线性关系。神经的训练和测试数据 网络是从玻璃纤维和碳纤维的实验性复合材料破坏数据中获得的 全球故障演习(WWFE)计划提供的增强环氧树脂。 二次应力交互的蔡-吴破坏理论是基于 报告的强度值,以及根据实验失败数据点进行了优化。 将神经网络的预测与蔡-吴故障进行了比较 标准预测,并观察到训练后的神经网络提供了一个 更好地表示实验数据。

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