基于遗传算法的增材制造激光束路径优化

IF 0.6 4区 材料科学 Q4 MATERIALS SCIENCE, MULTIDISCIPLINARY Materiali in tehnologije Pub Date : 2024-04-02 DOI:10.17222/mit.2023.989
P. Potočnik, A. Jeromen, E. Govekar
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引用次数: 0

摘要

本研究介绍了一种基于遗传算法的激光束路径优化方法,用于改进激光增材制造(AM)。研究人员开发了一个简单的热模型,用于模拟一层制造过程中激光诱导热输入对基底内部温度分布的影响。优化方法旨在找到具有更均匀温度特性的解决方案,最大限度地减少激光增材制造对基底造成的热梯度。激光束,即工具路径规划,被表述为寻找最小化适配函数的最佳单元沉积序列,该适配函数由两部分组成,即热适配和工艺适配。热适配性表示为平均热梯度,而工艺适配性则调节所建议的工具路径是否适合 AM 工艺的实施。为了初始化工具路径解决方案的初始群体,提出了各种工具路径生成器。提出了基于遗传算法的工具路径优化方法,其中开发了定制初始化、交叉和突变算子,以应用于激光基 AM。仿真研究表明,基于遗传算法的优化方法能有效地找到使适应度函数最小化的解决方案,从而提供更合适的热激光束路径解决方案,并为 AM 工艺的实施提供更合适的激光束路径解决方案。
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GENETIC ALGORITHM-BASED OPTIMIZATION OF THE LASER-BEAM PATH IN ADDITIVE MANUFACTURING
This study presents a methodology of genetic-algorithm-based optimization of the laser-beam path for improving laser-based additive manufacturing (AM). A simple thermal model was developed to simulate the effects of laser-induced heat input on the temperature distribution within the substrate during the fabrication of one layer. The optimization approach aims to find solutions with more homogeneous temperature properties that minimize the thermal gradient on the substrate caused by laser-based AM. The laser beam, i.e., the tool-path planning, is formulated as the search for the optimal sequence of cell depositions that minimize the fitness function, which is composed of two components, i.e., the thermal fitness and process fitness. The thermal fitness is expressed as the average thermal gradient, and the process fitness regulates the suitability of the proposed tool path for the implementation of the AM process. Various tool-path generators are proposed to initialize the initial population of tool-path solutions. Genetic-algorithm-based tool-path optimization is proposed, where custom initialization, crossover and mutation operators are developed for application in laser-based AM. Simulation studies demonstrate the effectiveness of the genetic-algorithm-based optimization in finding solutions that minimize the fitness function and therefore provide both thermally and, for the AM process implementation, more suitable laser-beam-path solutions.
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来源期刊
Materiali in tehnologije
Materiali in tehnologije 工程技术-材料科学:综合
CiteScore
1.30
自引率
0.00%
发文量
73
审稿时长
4-8 weeks
期刊介绍: The journal MATERIALI IN TEHNOLOGIJE/MATERIALS AND TECHNOLOGY is a scientific journal, devoted to original papers and review scientific papers concerned with the areas of fundamental and applied science and technology. Topics of particular interest include metallic materials, inorganic materials, polymers, vacuum technique and lately nanomaterials.
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