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ANN model for predicting the intergranular corrosion susceptibility of friction stir processed aluminium alloy AA5083

机译:预测搅拌摩擦铝合金AA5083晶间腐蚀敏感性的ANN模型。

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Aluminium alloy AA5083 was subjected to friction stir processing with an objective to increase the intergranular corrosion resistance of the alloy. Experimental trials were performed by varying the friction stir process parameters namely Tool Rotation Speed, Tool Traverse Speed and Shoulder Diameters as per Taguchi's L18 orthogonal array. The base specimen and friction stir processed specimens were subjected to intergranular corrosion susceptibility test according to the standard ASTM G67-04. Artificial Neural Network model was developed with cascade forward propagation network architecture to predict the intergranular corrosion susceptibility of the friction stir processed specimens. The network was trained with 80% experimental data using Levenberg Marquardt algorithm and the remaining data was used for testing and validation. Least root mean squared error value and prediction error indicated high accuracy of the developed model.
机译:为了提高合金的耐晶界腐蚀性,对AA5083铝合金进行了摩擦搅拌处理。根据Taguchi的L18正交阵列,通过改变摩擦搅拌工艺参数(即工具旋转速度,工具横向速度和肩部直径)进行了实验性试验。根据标准ASTM G67-04对基础样品和摩擦搅拌处理过的样品进行晶间腐蚀敏感性测试。利用级联前向传播网络架构开发了人工神经网络模型,以预测搅拌摩擦处理后的试样的晶间腐蚀敏感性。该网络使用Levenberg Marquardt算法使用80%的实验数据进行了训练,其余数据用于测试和验证。最小均方根误差值和预测误差表明所开发模型的准确性较高。

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