Form Features in Non-manifold Shapes: A First Classification and Analysis

Chiara Crovetto, L. Floriani, F. Giannini
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引用次数: 2

Abstract

During the industrial design process, a product model undergoes several analyses. One of the most common ones is the finite element analysis. This kind of analysis needs a simplified model, which can include idealised parts, and thus it is usually non-manifold and non-regular. During the idealisation process, the semantic information attached to the CAD model, such as features or surface types, or information used for model simplification, e.g. assumptions on the behavior type, is usually lost, thus making more difficult re-using, or, at least taking advantage, of performed simulations and models. This would be made easier if a meaningful interpretation of the object subparts is available. To this aim, in this paper, we provide a taxonomy of form features in non-manifold shapes and we describe an approach for their identification based on a decomposition of a non-manifold shapes into uniformly dimensional components proposed in [DHH06]. The process presented is the first step towards the identification of form features, since it analyzes those features containing non-manifold singularities.
非流形形状的形状特征:第一个分类与分析
在工业设计过程中,产品模型要经过多次分析。其中最常见的是有限元分析。这种分析需要一个简化的模型,其中可以包括理想化的部分,因此它通常是非流形和不规则的。在理想化过程中,附加到CAD模型上的语义信息,例如特征或表面类型,或用于模型简化的信息,例如对行为类型的假设,通常会丢失,从而使重用变得更加困难,或者至少利用已执行的模拟和模型。如果可以对对象子部分进行有意义的解释,这将变得更容易。为此,在本文中,我们提供了一种非流形形状的形状特征分类,并描述了一种基于[DHH06]中提出的将非流形形状分解为均匀维度组件的识别方法。所提出的过程是识别形状特征的第一步,因为它分析了那些包含非流形奇异点的特征。
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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