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Intelligent 3D tool path planning for optimized 3-axis sculptured surface CNC machining through digitized data evaluation and swarm-based evolutionary algorithms

机译:智能3D刀具路径规划,通过数字化数据评估和基于群的进化算法进行优化的3轴雕刻表面CNC加工

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摘要

This work suggests the trajectory optimization of three well-known 3-axis surface machining tool-paths available to commercial computer-aided manufacturing systems by means of a genetic algorithm. The toolpaths are Optimized-Z; Raster and 3D-Offset. An original approach involving digitized information derived from solid features of complex sculptured surfaces and cutting-edge machining modeling tools is presented; emphasizing to a Pareto multi-objective optimization problem formulated by considering two optimization criteria; surface deviation for quality and tool-path time for productivity. The antagonizing criteria are simultaneously examined whilst the variations owing to different cutting tool selections as well as several radial pass interval values are investigated to understand how these tool-paths influence machining efficiency during process planning stage. An L-27 full factorial design of experiments addressing the examination of the aforementioned parameters and tool paths was established to study the effects and regression models were questioned to formulate the objective functions for evaluating the results using four modern meta-heuristics namely, multi-objective grey-wolf (MOGWO); multi-objective multi-universe; (MOMVO); multi-objective ant lion; (MOALO); multi-objective dragonfly (MODA); NSGA-II and evMOGA. Results have shown that all algorithms can efficiently contribute to the problem and support decision making with several non-dominated solutions with regard to the requirements for the simultaneous benefit of productivity and quality. (C) 2020 Published by Elsevier Ltd.
机译:这项工作表明,通过遗传算法,三种公知的3轴表面加工工具路径可用于商业计算机辅助制造系统的轨迹优化。刀具路径优化-Z;光栅和3D偏移。提出了一种涉及从复杂雕刻表面的固体特征和尖端加工建模工具衍生的数字化信息的原始方法;通过考虑两种优化标准,强调帕累托多目标优化问题;高质量和工具路径时间的表面偏差。同时检查拮抗标准,同时研究由于不同的切削刀具选择以及几个径向通过间隔值,以了解这些工具路径在过程规划阶段期间的加工效率。建立了解研究上述参数和工具路径的实验的L-27完整因子设计,以研究效果和回归模型,以制定使用四个现代元启发式的评估结果的目标功能即,多目标灰狼(摩娃);多目标多宇宙; (MOMVO);多目标蚂蚁狮子; (马拉);多目标蜻蜓(Moda); NSGA-II和EVMOGA。结果表明,所有算法都可以有效地促进解决问题的问题,并支持决策,其中有几种非主导解决方案,了解生产力和质量的同时效益的要求。 (c)2020年由elestvier有限公司发布

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