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Modeling and problem solving of building defects using point clouds and enhanced case-based reasoning

机译:使用点云和增强的基于案例的推理对建筑缺陷进行建模和问题解决

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摘要

Many factors, including improper maintenance and material aging, may lead to the occurrence of defects during the operation of the various functions of buildings. Building defect information is normally stored in a discrete and unstructured way, and for this reason, building a case-based reasoning framework regarding building defects to enhance the level of building maintenance management has become an important field in the related research. At present, there is limited research available on the integration of geometric data models that are built by means of scanning and multi-attribute selection strategies. This study proposes an integrated information management framework for superficial defects in buildings, which is compatible with a point clouds model as a central data source. It features the attributes of defects used in multi-criteria decision analysis. A CBR (case-based reasoning) approach that considers case-based distance is used to enhance the performance of similarity calculations and case retrieval. A case-based distance model is utilized for the data processing stage and concentrates on a smaller case set that contains best alternatives. The potential benefit offered by this approach is that more efficient results can be obtained from classified cases during the retrieval phase process. A comparison of a CBR query with ungrouped sample data is performed to establish patterns to verify the effectiveness of the calculation method of determining case similarity, which is supported by the pre-processing of classified information about the building defects. The analytical results show that the proposed method performs well in solving the multi attribute classification of building defects and avoiding ambiguous answers retrieved from unrelated subsets. This approach might be capable of investigating the practical problems involved in building maintenance in the AEC domains.
机译:许多因素,包括不当的维护和材料老化,都可能导致建筑物各种功能运行期间发生缺陷。建筑缺陷信息通常以离散且非结构化的方式存储,因此,构建有关建筑缺陷的基于案例的推理框架以提高建筑维护管理水平已成为相关研究的重要领域。目前,关于通过扫描和多属性选择策略构建的几何数据模型的集成的研究有限。这项研究提出了一个针对建筑物表面缺陷的集成信息管理框架,该框架与作为中心数据源的点云模型兼容。它具有多准则决策分析中使用的缺陷属性。考虑到基于案例的距离的CBR(基于案例的推理)方法用于增强相似度计算和案例检索的性能。基于案例的距离模型用于数据处理阶段,并集中于包含最佳替代方案的较小案例集。这种方法提供的潜在好处是,在检索阶段过程中,可以从分类案例中获得更有效的结果。进行CBR查询与未分组样本数据的比较以建立模式,以验证确定案例相似性的计算方法的有效性,该方法得到有关建筑物缺陷的分类信息的预处理的支持。分析结果表明,所提出的方法在解决建筑物缺陷的多属性分类以及避免从不相关子集中检索出模棱两可的答案方面表现良好。这种方法可能能够调查AEC域中建筑物维护中涉及的实际问题。

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