基于人工神经网络的al -6061扩孔能耗及表面粗糙度预测

S. Pervaiz, I. Deiab, S. Zafar, S. Shams
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引用次数: 5

摘要

扩眼作业是对已钻井进行精加工的常用工序。精加工是必需的,因为孔的表面粗糙度对部件的功能起着重要的作用。表面粗糙度是影响零件疲劳寿命的重要参数。切削力是切削任务所需功率消耗的重要指标。建立了基于人工神经网络(ANN)的Al 6061在扩孔工况下的表面粗糙度与能耗模型。利用反向传播神经网络对表面粗糙度和功耗进行预测。利用扩孔测试数据对人工神经网络进行训练和测试。在本研究中,我们将实际的实验值与神经网络的输出值进行了比较研究,得到了很好的一致性。
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Prediction of energy consumption and surface roughness in reaming operation of Al-6061using ANN based models
Reaming operation is a commonly used finishing phase for already drilled hole. Finishing is required because surface roughness of hole plays a significant role towards the functionality of the component. Surface roughness is a critical parameter for fatigue life of the component. Cutting forces are important indicator for power consumption required for cutting task. An artificial neural network (ANN) based surface roughness and power consumption model was established for Al 6061 under reaming operation. Back propagation neural networks were utilized for prediction of surface roughness and power consumption. Reaming test data was used to train and test the ANN network. In this presented study comparative investigation has been performed between the actual experimental values and neural network outputs to achieve good agreement.
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