通过多目标代用辅助算法确定机械加工建模的构成模型和摩擦模型参数--应用于 Ti6Al4V 的 ALE 正交切削

F. Ducobu, Nithyaraaj Kugalur Palanisamy, G. Briffoteaux, M. Gobert, Daniel Tuyttens, Pedro Arrazola Arriola, E. Rivière-Lorphèvre
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引用次数: 0

摘要

高性能计算的发展促进了制造过程的模拟。切削过程数值模型的预测精度与构成模型和摩擦模型的选择密切相关。这些模型的可靠性和准确性在很大程度上取决于切削过程定义中所涉及的参数值。这些模型参数可通过直接法或逆向法确定。然而,这些确定程序往往忽略了材料参数与摩擦模型之间的联系。本文介绍了一种新方法,通过在优化程序中考虑多种切削条件,同时反向确定两种模型的最佳参数值。本文开发了一个人工智能(AI)框架,将有限元建模与自适应贝叶斯多目标进化算法(AB-MOEA)相结合,目标是最大限度地减小实验结果与数值结果之间的偏差。为证明其适用性,选择了任意拉格朗日欧拉(ALE)公式和 Ti6Al4V 合金。研究表明,所开发的人工智能平台能以较少的计算时间和资源确定最佳参数值。在本研究中考虑的所有切削条件下,所确定的参数值预测的切削力和进给力与实验结果的偏差均小于 4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of the Constitutive and Friction Models Parameters via a Multi-Objective Surrogate-Assisted Algorithm for the Modeling of Machining - Application to ALE orthogonal cutting of Ti6Al4V
The evolution of high-performance computing facilitates the simulation of manufacturing processes. The prediction accuracy of a numerical model of the cutting process is closely associated with the selection of constitutive and friction models. The reliability and the accuracy of these models highly depend on the value of the parameters involved in the definition of the cutting process. These model parameters are determined using a direct method or an inverse method. However, these identification procedures often neglect the link between the parameters of the material and the friction models. This paper introduces a novel approach to inversely identify the best parameters value for both models at the same time and by taking into account multiple cutting conditions in the optimization routine. An Artificial Intelligence (AI) framework that combines the finite element modeling with an Adaptive Bayesian Multi-objective Evolutionary Algorithm (AB-MOEA) is developed, where the objective is to minimize the deviation between the experimental and the numerical results. The Arbitrary Lagrangian Eulerian (ALE) formulation and the Ti6Al4V alloy are selected to demonstrate its applicability. The investigation shows that the developed AI platform can identify the best parameters values with low computational time and resources. The identified parameters values predicted the cutting and feed forces within a deviation of less than 4% from the experiments for all the cutting conditions considered in this work.
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