基于GPU的五轴加工快速碰撞检测方法

Cheng-Yan Siao, Jhe-Wei Lin, Rong-Guey Chang
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引用次数: 0

摘要

近年来,五轴加工得到了广泛的应用。由于机床的昂贵成本,如何实时检测碰撞已成为一个关键问题。的确,为了保证g码不会造成碰撞,开发人员可能会在阶段前使用一些工具对五轴机床进行离线加工。此外,为了减少离线执行时间长,本文提出了一种并行方法来弥补这一缺陷。该方法旨在利用图形处理单元(GPU)的功能来提高并行碰撞检测的性能。我们通过在两个三角形网格中引入6个平面分离轴和11个非平面分离轴来解决上述问题。然后,我们提出了一种基于GPU实现CUDA(计算统一设备架构)程序的并行方法。最后,根据我们的领域知识和经验,我们尝试使用循环展开和预取技术来优化所提出的工作,以提高性能。结果表明,使用这两种技术,我们的工作效率很高。
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A Fast Method to Detect Collision for Five-axis Machining with GPU
The applications of five-axis machining have been used widely recently. Owing to the expensive cost of machine tools, how to detect the collision in real time has become a critical issue. Indeed, in order to ensure that G-codes will not result in the collision, the developers may use some tools before the stage to process the five-axis machine tool on off line. Moreover, to reduce long execution time on off line, we propose a parallel method to remedy it in this paper. The objective of the proposed approach aims at improving the performance to detect collision in parallel by utilizing the functions of a GPU (Graphics Processing Unit).We address the issue above by inducing six separating axis in plan and 11 separating axis in non-plan for two triangle meshes. Then we propose a parallel approach by implementing a CUDA ( Compute Unified Device Architecture ) program based on a GPU. Finally, with our domain knowledge and experiences, we attempt to optimize the proposed work with loop unrolling and prefetching techniques to improve performance.. The result shows that our work is very efficiently by using the two techniques.
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