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Generating significant subassemblies from 3D assembly models for design reuse

机译:从3D装配模型生成重要的子装配以进行设计重用

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Significant subassemblies are defined as the reusable regions of pre-existing 3D assembly models. A significant subassembly has great significances for design reuse as it aggregates abundant knowledge in a vivid 3D CAD model and enables designers to reuse existing mature designs from a high-level perspective. Consequently, this paper contributes to significant subassembly generation from pre-existing 3D assembly models for design reuse. The paper first gives an explicit definition of significant subassemblies and further explores the multilevel knowledge embedded in these significant subassemblies. Based on the above definition and multilevel knowledge, a knowledge-based approach is then proposed for significant subassembly generation, which includes three phases: (1) identifying candidate subassemblies with high cohesion inside and low coupling outside using the Markov clustering process; (2) removing normal candidate subassemblies with low reusability and less information, and generating filtered subassemblies using the proposed assembly frequency - inverse mean subassembly frequency based scheme; and (3) determining significant subassemblies by measuring the complexity of the filtered subassemblies. Finally, a computer numerical control honing machine model is taken as an application example to demonstrate the effectiveness of the proposed approach.
机译:重要的子装配定义为预先存在的3D装配模型的可重用区域。一个重要的子组件对于设计重用具有重要意义,因为它在生动的3D CAD模型中聚集了丰富的知识,并使设计师能够从高层角度重用现有的成熟设计。因此,本文通过现有的3D装配模型为设计重用做出了巨大贡献,从而为大量子装配做出了贡献。本文首先给出了重要子装配的明确定义,然后进一步探讨了嵌入在这些重要子装配中的多层知识。基于以上定义和多层次知识,提出了一种基于知识的重要子装配生成方法,包括三个阶段:(1)利用马尔可夫聚类过程识别内部具有高内聚力而外部耦合低的候选子装配体; (2)去除可重用性低且信息量少的正常候选子装配,并使用建议的装配频率-基于平均子装配频率的逆方案生成滤波子装配; (3)通过测量过滤后的子组件的复杂度来确定重要的子组件。最后,以计算机数控珩磨机模型为应用实例,说明了该方法的有效性。

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