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Preform tool shape optimization and redesign based on neural network response surface methodology

机译:基于神经网络响应面方法的瓶坯模具形状优化与重新设计

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Preform tool shape optimization using response surface method (RSM) was developed in this work. Neural network approximation model was employed for response surface construction in order to overcome the limitation of quadratic polynomial model in solving non-linear problems. A two-step axisymmetric forging problem was studied as an example using proposed method. Optimum was achieved by using pattern search optimization method to search response surface describing relationship between preform shape and die cavity fill ratio. In addition to that, with respect to the complexity of the optimum solution, the knowledge-based redesign concept was proposed. Simplified preform shape description model was built based on the knowledge extracted from previous optimization and additional shape optimization in terms of a new optimization objective was conducted to obtain a better redesign preform shape. Finally, comparison was made between the original optimal shape and redesigned one; better result was achieved by using the concept proposed.
机译:在这项工作中开发了使用响应面法(RSM)的瓶坯工具形状优化。为了克服二次多项式模型在解决非线性问题中的局限性,将神经网络逼近模型用于响应面构建。以提出的方法为例,研究了两步轴对称锻造问题。通过使用模式搜索优化方法搜索描述预成型件形状与模腔填充率之间关系的响应面来实现最佳效果。除此之外,关于最佳解决方案的复杂性,提出了基于知识的重新设计概念。基于从先前优化中提取的知识,构建了简化的瓶坯形状描述模型,并针对新的优化目标进行了额外的形状优化,以获取更好的重新设计瓶坯形状。最后,比较了原始的最佳形状和重新设计的形状。通过使用提出的概念可以达到更好的结果。

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