Spatial Parameterization of Non-Semantic CAD Elements for Supporting Automated Disassembly Planning

C. Rausch, B. Sanchez, C. Haas
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引用次数: 7

Abstract

Digital data and associated semantics play a fundamental role in supporting the vision of Construction 4.0. Advancements in digitization workflows such as scan-to-BIM and automated meta-data generation are being used for data-driven decision making. A challenge with collecting and processing raw, non-semantic data is the process of integrating intelligence into and characterizing data automatically. This paper demonstrates how spatial parameterization (i.e., extracting, modifying and analysing parameters that define the spatial properties of a component) can be used as a method for automating steps in disassembly planning for buildings. The potential use cases of disassembly planning include adaptive building reuse, robotic assembly programming, reconfigurable prefabricated assemblies and selective disassembly for rehabilitation and repairs. This paper presents spatial parameterization in a framework to disassemble building components via a rule-based algorithm that comprises three dimensional Cartesian properties and clash detection between non-semantic CAD elements. Demonstration of the framework is carried out using a case study where the interior wall of a building on the University of Waterloo campus was disassembled for adaptive reuse purposes. Comparison of the case study results to the actual disassembly sequence demonstrates how spatial parameterization is effective for automating key steps in disassembly planning. A discussion is provided to identify key barriers to increased automation which relate to modelling accuracy, Level of Development (LOD) for Building Information Modelling (BIM), and global spatial constraints for disassembly.
支持自动拆卸规划的非语义CAD元素空间参数化
数字数据和相关语义在支持建筑4.0的愿景中发挥着重要作用。数字化工作流程的进步,如扫描到bim和自动元数据生成,正在用于数据驱动的决策制定。收集和处理原始、非语义数据的一个挑战是将智能集成到数据中并自动描述数据的过程。本文演示了如何将空间参数化(即提取、修改和分析定义组件空间属性的参数)用作自动化建筑物拆卸规划步骤的方法。拆卸规划的潜在用例包括适应性建筑再利用、机器人装配编程、可重构预制组件以及用于修复和维修的选择性拆卸。本文提出了一个框架中的空间参数化,通过一种基于规则的算法来拆卸建筑部件,该算法包括三维笛卡尔属性和非语义CAD元素之间的冲突检测。该框架通过一个案例研究进行了演示,在该案例中,滑铁卢大学校园内的一栋建筑的内墙被拆解,用于适应性再利用。案例研究结果与实际拆卸顺序的比较表明,空间参数化对于自动化拆卸规划中的关键步骤是有效的。讨论了提高自动化的关键障碍,这些障碍与建模精度、建筑信息模型(BIM)的开发水平(LOD)和拆卸的全球空间限制有关。
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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