探索将多臂匪帮(MAB)作为优化 GMA-WAAM 路径规划的人工智能工具

IF 3.3 Q2 ENGINEERING, MANUFACTURING
Rafael Pereira Ferreira, Emil Schubert, Américo Scotti
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引用次数: 0

摘要

在打印复杂形状的构建物时,GMA-WAAM 的传统路径规划策略可能会遇到与几何特征相关的挑战。为减少与几何特征相关的缺陷,一种替代方法是使用优化轨迹选择的算法--例如,使用启发式算法找到最有效的轨迹。该算法可以评估多种轨迹策略,如等高线、之字形、光栅甚至空间填充,根据具体情况寻找最佳策略。然而,用这种方法处理复杂的几何图形会带来计算效率方面的问题。本研究旨在探索机器学习技术作为提高此类算法计算效率的解决方案的潜力。首先,引入了强化学习(RL)概念,并与监督加工学习概念进行了比较。此外,还解释了多臂匪徒(MAB)问题,并证明该问题可作为 RL 技术中的一种选择。作为一个案例研究,在 GMA-AM 印刷算法中选择了空间填充策略作为加工学习优化工具。计算和实验验证表明,在算法中添加 MAB 有助于实现更短的轨迹,使用的迭代次数比原始算法更少,从而有可能缩短印刷时间。这些发现将 RL 技术(尤其是 MAB)定位为一种有前途的加工学习解决方案,以解决所应用的空间填充策略中存在的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Multi-Armed Bandit (MAB) as an AI Tool for Optimising GMA-WAAM Path Planning
Conventional path-planning strategies for GMA-WAAM may encounter challenges related to geometrical features when printing complex-shaped builds. One alternative to mitigate geometry-related flaws is to use algorithms that optimise trajectory choices—for instance, using heuristics to find the most efficient trajectory. The algorithm can assess several trajectory strategies, such as contour, zigzag, raster, and even space-filling, to search for the best strategy according to the case. However, handling complex geometries by this means poses computational efficiency concerns. This research aimed to explore the potential of machine learning techniques as a solution to increase the computational efficiency of such algorithms. First, reinforcement learning (RL) concepts are introduced and compared with supervised machining learning concepts. The Multi-Armed Bandit (MAB) problem is explained and justified as a choice within the RL techniques. As a case study, a space-filling strategy was chosen to have this machining learning optimisation artifice in its algorithm for GMA-AM printing. Computational and experimental validations were conducted, demonstrating that adding MAB in the algorithm helped to achieve shorter trajectories, using fewer iterations than the original algorithm, potentially reducing printing time. These findings position the RL techniques, particularly MAB, as a promising machining learning solution to address setbacks in the space-filling strategy applied.
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来源期刊
Journal of Manufacturing and Materials Processing
Journal of Manufacturing and Materials Processing Engineering-Industrial and Manufacturing Engineering
CiteScore
5.10
自引率
6.20%
发文量
129
审稿时长
11 weeks
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