基于神经网络的增材制造并行构建方向、零件分割和拓扑优化

IF 2.9 3区 工程技术 Q2 ENGINEERING, MECHANICAL Journal of Mechanical Design Pub Date : 2023-06-23 DOI:10.1115/1.4062663
Hongrui Chen, Aditya Joglekar, Kate S. Whitefoot, Levent Burak Kara
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引用次数: 1

摘要

如果没有明确的公式来最小化支撑结构,拓扑优化可能会产生复杂的形状,在增材制造时需要大量使用支撑材料。我们提出了一种基于神经网络的拓扑优化方法,旨在减少增材制造中支撑结构的使用。我们的方法使用网络架构,允许同时确定优化的:(1)部分分割,(2)每个部分的拓扑结构,(3)每个部分的构建方向,共同最小化支撑结构的数量。通过训练,网络在连续的三维空间中学习材料密度和分段分类。给定给定载荷和位移边界条件的问题域,神经网络以体素化域的三维坐标作为输入训练样本,输出连续的密度场。由于用于拓扑优化的神经网络学习了密度分布场,因此可以从神经网络的输入输出关系中得到密度梯度的解析解。我们在几个具有体积分数约束的顺应性最小化问题上展示了我们的方法,其中支持体积最小化作为目标函数的附加标准被添加。研究表明,与不进行分割的打印角度和拓扑优化相结合的方法相比,同时进行零件分割优化以及拓扑和拓扑优化可以进一步减少支撑结构。
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Concurrent Build Direction, Part Segmentation, and Topology Optimization for Additive Manufacturing Using Neural Networks
Abstract Without an explicit formulation to minimize support structures, topology optimization may create complex shapes that require an intensive use of support material when additively manufactured. We propose a neural network-based approach to topology optimization that aims to reduce the use of support structures in additive manufacturing. Our approach uses a network architecture that allows the simultaneous determination of an optimized: (1) part segmentation, (2) the topology of each part, and (3) the build direction of each part that collectively minimize the amount of support structure. Through training, the network learns a material density and segment classification in the continuous 3D space. Given a problem domain with prescribed load and displacement boundary conditions, the neural network takes as input 3D coordinates of the voxelized domain as training samples and outputs a continuous density field. Since the neural network for topology optimization learns the density distribution field, analytical solutions to the density gradient can be obtained from the input–output relationship of the neural network. We demonstrate our approach on several compliance minimization problems with volume fraction constraints, where support volume minimization is added as an additional criterion to the objective function. We show that simultaneous optimization of part segmentation along with the topology and print angle optimization further reduces the support structure, compared to a combined print angle and topology optimization without segmentation.
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来源期刊
Journal of Mechanical Design
Journal of Mechanical Design 工程技术-工程:机械
CiteScore
8.00
自引率
18.20%
发文量
139
审稿时长
3.9 months
期刊介绍: The Journal of Mechanical Design (JMD) serves the broad design community as the venue for scholarly, archival research in all aspects of the design activity with emphasis on design synthesis. JMD has traditionally served the ASME Design Engineering Division and its technical committees, but it welcomes contributions from all areas of design with emphasis on synthesis. JMD communicates original contributions, primarily in the form of research articles of considerable depth, but also technical briefs, design innovation papers, book reviews, and editorials. Scope: The Journal of Mechanical Design (JMD) serves the broad design community as the venue for scholarly, archival research in all aspects of the design activity with emphasis on design synthesis. JMD has traditionally served the ASME Design Engineering Division and its technical committees, but it welcomes contributions from all areas of design with emphasis on synthesis. JMD communicates original contributions, primarily in the form of research articles of considerable depth, but also technical briefs, design innovation papers, book reviews, and editorials.
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