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首页> 外文期刊>Journal of manufacturing science and engineering: Transactions of the ASME >Development of Evolutionary Method for Optimizing a Roll Forming Process of Aluminum Parts
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Development of Evolutionary Method for Optimizing a Roll Forming Process of Aluminum Parts

机译:优化铝合金零件的轧制工艺的演化方法的发展

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This paper presents the development of the knowledge-based neural network (KBNN) and genetic algorithm (GA) in modeling and optimization of the roll forming (RF) process of aluminum parts. The idea of a KBNN using multifidelity finite element (FE) models was developed to model the mechanical behaviors of the aluminum sheet. Initially, the less costly but less accurate FE model was used to build the response surface functions for the knowledge path of the KBNN. After that, a small number of the more accurate but expensive finite element analysis (FEA) of the high fidelity FE model were utilized in a multilayer perceptron (MLP) neural network with the prior knowledge to produce the KBNN prediction results. Two powerful optimization algorithms, the LevenbergMarquadrt (LM) and GA, were applied to train the KBNN. The trained KBNN was used to perform the parametric study for investigating the effects of process parameters on the part quality. After that, the optimization of the process parameters was carried out by employing the combination of the GA and KBNN. The optimization objective was minimizing the overall damage in the aluminum part while keeping the longitudinal strain and spring back angle less than allowable limits to prevent the existence of defects. The modeling and optimization results by using the KBNN and GA were compared with the results from other methods to prove the advantages of the developed one against others.
机译:本文介绍了基于知识的神经网络(KBNN)和遗传算法(GA)在铝零件轧制(RF)过程建模和优化中的发展。开发了使用多保真有限元(FE)模型的KBNN的思想,以对铝板的力学行为进行建模。最初,使用成本较低但准确性较差的有限元模型来构建KBNN知识路径的响应面函数。此后,在具有先验知识的多层感知器(MLP)神经网络中,利用了少量的更精确但昂贵的高保真FE模型的有限元分析(FEA)来产生KBNN预测结果。两种强大的优化算法LevenbergMarquadrt(LM)和GA被应用于训练KBNN。训练有素的KBNN用于进行参数研究,以研究工艺参数对零件质量的影响。之后,通过结合GA和KBNN进行工艺参数的优化。优化目标是使铝部件的整体损坏最小化,同时保持纵向应变和回弹角小于允许的极限值,以防止缺陷的存在。将使用KBNN和GA进行的建模和优化结果与其他方法的结果进行比较,以证明所开发方法相对于其他方法的优势。

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