Deep Neural Implicit Representation of Accessibility for Multi-Axis Manufacturing

IF 3 3区 计算机科学 Q2 COMPUTER SCIENCE, SOFTWARE ENGINEERING
George Harabin, Amir M. Mirzendehdel, Morad Behandish
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引用次数: 0

Abstract

One of the main concerns in design and process planning for multi-axis additive and subtractive manufacturing is collision avoidance between moving objects (e.g., tool assemblies) and stationary objects (e.g., part unified with fixtures). The collision measure for various pairs of relative rigid translations and rotations between the two pointsets can be conceptualized by a compactly supported scalar field over the 6D non-Euclidean configuration space. Explicit representation and computation of this field is costly in both time and space. If we fix O(m) sparsely sampled rotations (e.g., tool orientations), computation of the collision measure field as a convolution of indicator functions of the 3D pointsets over a uniform grid (i.e., voxelized geometry) of resolution O(n3) via fast Fourier transforms (FFTs) scales as in O(mn3logn) in time and O(mn3) in space. In this paper, we develop an implicit representation of the collision measure field via deep neural networks (DNNs). We show that our approach is able to accurately interpolate the collision measure from a sparse sampling of rotations, and can represent the collision measure field with a small memory footprint. Moreover, we show that this representation can be efficiently updated through fine-tuning to more efficiently train the network on multi-resolution data, as well as accommodate incremental changes to the geometry (such as might occur in iterative processes such as topology optimization of the part subject to CNC tool accessibility constraints).

Abstract Image

多轴制造可达性的深度神经隐式表示
在多轴加减法制造的设计和工艺规划中,主要关注的问题之一是避免移动物体(如工具组件)和固定物体(如与夹具统一的零件)之间的碰撞。两个点集之间的各种相对刚性平移和旋转对的碰撞测度可以通过6D非欧几里得配置空间上的紧支撑标量场来概念化。该字段的显式表示和计算在时间和空间上都是昂贵的。如果我们固定O(m)稀疏采样的旋转(例如,工具方向),则通过快速傅立叶变换(FFT)标度,将碰撞测量场计算为分辨率为O(n3)的均匀网格(即体素化几何体)上的3D点集的指示函数的卷积,如时间上的O(mn3logn)和空间中的O(mn3)。在本文中,我们通过深度神经网络(DNN)开发了碰撞测量场的隐式表示。我们表明,我们的方法能够从稀疏的旋转采样中准确地插值碰撞测量,并且可以用小的内存占用来表示碰撞测量场。此外,我们表明,可以通过微调来有效地更新该表示,以更有效地在多分辨率数据上训练网络,并适应几何结构的增量变化(例如可能发生在迭代过程中,如受CNC工具可访问性约束的零件的拓扑优化)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Computer-Aided Design
Computer-Aided Design 工程技术-计算机:软件工程
CiteScore
5.50
自引率
4.70%
发文量
117
审稿时长
4.2 months
期刊介绍: Computer-Aided Design is a leading international journal that provides academia and industry with key papers on research and developments in the application of computers to design. Computer-Aided Design invites papers reporting new research, as well as novel or particularly significant applications, within a wide range of topics, spanning all stages of design process from concept creation to manufacture and beyond.
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