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Clustering Information Types for Semantic Enrichment of Building Information Models to Support Automated Code Compliance Checking

机译:群集信息类型用于建筑信息模型的语义丰富,以支持自动代码合规性检查

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摘要

Missing, incomplete, implicit, and/or incorrect information are major obstacles to automated code compliance checking in the construction industry. All existing platforms for automated code checking require users to extensively preprocess their input models to supplement missing information before checking can begin. Semantic enrichment using artificial intelligence (AI) can automate much of this normalization process. Progress in the field of semantic enrichment, in turn, requires identification and specification of the information types that must be made explicit, and of the procedures appropriate for each type. After characterizing a broad set of clauses from five diverse building codes, a two-stage clustering process with the k-means algorithm was used to derive a hierarchical classification of semantic enrichment task types. The resulting classification defines 10 tasks that are typically needed for automated code compliance checking. Future research can build on the classification to formalize a knowledge base to inform selection of appropriate approaches for semantic enrichment tasks.
机译:丢失,不完整,隐式和/或不正确的信息是自动化代码合规性检查建筑业的主要障碍。所有现有的自动代码检查平台都要求用户在检查开始之前,用户可以广泛地预处理其输入模型以补充缺失的信息。使用人工智能(AI)的语义富集可以自动化这种归一化过程。反过来,语义富集领域的进展需要识别和规范必须明确的信息类型,以及适用于每种类型的程序。在从五个不同的建筑码中表征广泛的条款后,使用K-Means算法的两阶段聚类过程用于导出语义富集任务类型的分层分类。生成的分类定义了10个任务,通常需要自动代码合规性检查。未来的研究可以建立在分类上,以便正式化知识库,以便为选择对语义丰富任务的适当方法提供信息。

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