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首页> 外文期刊>Journal of Intelligent Manufacturing >Neural network based modeling and optimization of deep drawing - extrusion combined process
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Neural network based modeling and optimization of deep drawing - extrusion combined process

机译:基于神经网络的拉深-挤压组合工艺建模与优化。

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摘要

A combined deep drawing-extrusion process is modeled with artificial neural networks (ANN's). The process is used for manufacturing synchronizer rings and it combines sheet and bulk metal forming processes. Input-output data relevant to the process was collected. The inputs represent geometrical parameters of the synchronizer ring and the outputs are the total equivalent plastic strain (TEPS), contact ratio and forming force. This data is used to train the ANN which approximates the input-output relation well and therefore can be relied on in predicting the process input parameters that will result in desired outputs provided by the designer. The complex method constrained optimization is applied to the ANN model to find the inputs or geometrical parameters that will produce the desired or optimum values of TEPS, contact ratio and forming force. This information will be very hard to obtain by just looking at the available historical input-output data. Therefore, the presented technique is very useful for selection of process design parameters to obtain desired product properties.
机译:利用人工神经网络(ANN)对组合的深冲拉伸过程进行建模。该工艺用于制造同步器环,并将板材和块状金属成型工艺结合在一起。收集了与该过程有关的投入产出数据。输入代表同步器环的几何参数,输出是总等效塑性应变(TEPS),接触比和成形力。该数据用于训练能够很好地近似输入-输出关系的ANN,因此可以依赖于预测过程输入参数,该过程输入参数将导致设计人员提供所需的输出。将复杂的方法约束优化应用于ANN模型,以找到可产生所需或最佳TEPS值,接触比和成形力的输入或几何参数。仅查看可用的历史输入输出数据将很难获得此信息。因此,提出的技术对于选择工艺设计参数以获得所需的产品特性非常有用。

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