金属切削工艺参数动态优化的数字孪生模型

Zhiyong Luo, Honglei Deng, Qing Xia, Jiping Yang, Chuan Yang, Chun-Xu Jiang, Xiaorong Gong
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引用次数: 0

摘要

金属切削工艺优化问题在过去的几十年里得到了广泛的研究,研究人员通过实验设计、开发启发式算法或设计专家系统来优化工艺参数。过去研究的主要思路是在执行整个工艺步骤之前对一组工艺参数进行优化,不能有效地响应动态制造环境的需求。然而,对工艺参数动态优化的研究却很少。数字孪生通常被称为解决工业部门动态问题的使能技术。提出了一种新的数字孪生框架,用于金属切削过程的动态优化。分析了该框架的数字孪生模型的五个特点。在此框架下,提出了金属切削过程数字孪生模型,该模型在加工过程中与物理孪生模型相互作用,并动态推断出最优工艺参数。提出了金属切削过程数字孪生的信息模型,以形式化数字孪生与物理孪生之间的综合信息的表示。以铣削加工为例,验证了所提出的数字孪生模型的有效性和可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Digital Twin Model for Dynamic Optimization of Metal Cutting Process Parameters
Metal cutting process optimization problem has been extensively studied in the past few decades, researchers either conduct experimental design, develop heuristic algorithms or design expert system to optimize process parameters. The main idea of the past research is to optimize a set of process parameters before executing the entire process steps, which fails to effectively respond to the needs of dynamic manufacture environment. However, very little research has focused on the dynamic optimization of process parameters during the process. Digital twin is commonly known as the enabling technology to solve the dynamic problem in the industrial sector. This paper proposes a novel digital twin framework for metal cutting process dynamic optimization during the metal cutting process. Five characteristics of digital twin model of the proposed framework are analyzed. In this framework, a metal cutting process digital twin model is proposed to dynamically infer the optimal process parameters while interacting with its physical counterpart during the process. An information model for the metal cutting process digital twin is put forward to formalize the representation of the comprehensive information between the digital twin and its physical counterpart. The effectiveness and feasibility of the proposed digital twin model are tested in a case study on a milling process.
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