基于粒子群算法的自由曲面工件定位

Ce Han, Dinghua Zhang, Baohai Wu, Kun Pu, M. Luo
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引用次数: 11

摘要

提出了一种基于粒子群优化算法的自由曲面工件定位方法。本研究首次尝试将粒子群算法作为基于原位测量技术的定位匹配算法。通过一组仿真研究了该算法的性能,并给出了最优参数设置。为了测试粒子群算法的性能,并将其与经典的迭代最近点(ICP)算法进行比较,本研究使用了叶片模型和自由曲面模型。仿真结果表明,所提参数设置的粒子群算法适用于不同自由曲面工件的定位,定位精度高,且不依赖于预定位条件。该算法具有较强的全局搜索能力,是一种有效的自由曲面工件定位新算法。
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Localization of freeform surface workpiece with particle swarm optimization algorithm
A localization method for freeform surface workpiece with particle swarm optimization (PSO) algorithm is proposed in this paper. This study is the first attempt to use PSO as a matching algorithm in localization based on in situ measuring technology. The performance of the algorithm is studied by a set of simulations and optimal parameters settings are given. To test the performance of PSO and compare it with the classical Iterative Closest Point (ICP) algorithm, a blade model and a free-form surface model are used in this study. Simulation results show that PSO with the proposed parameter settings is appropriate to the localization of different freeform surface workpieces with high accuracy and not dependent on pre-localization condition. This study proves that PSO is a new effective algorithm for the localization of freeform surface workpiece because of its advantage of high global search ability over most existing algorithms.
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