基于中文-NLP 和知识图谱的 BIM 模型合规性自动检查:一个综合概念框架

Sihao Li, Jiali Wang, Zhao Xu
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引用次数: 0

摘要

目的 建筑信息模型(BIM)模型的合规性检查在整个建筑生命周期中至关重要。BIM 模型所承载信息的数量和复杂性不断增加,使得合规性检查更具挑战性,而人工方法很容易出错。因此,本研究旨在为 BIM 模型的自动合规性检查提出一个综合概念框架,以便识别 BIM 模型中的错误。本研究首先分析了建筑和消防领域的典型建筑标准,然后开发了这些元素的本体。在此基础上,建立建筑标准语料库,并训练深度学习模型来自动标注建筑标准文本。利用 Neo4j 进行知识图谱的构建和存储,并设计了基于 Dynamo 的数据提取方法来获取检查数据文件。案例验证结果表明,该理论框架可以实现领域知识图谱的自动构建和 BIM 模型合规性的自动检查。原创性/价值本研究将知识图谱和自然语言处理技术引入 BIM 模型检查领域,完成了构建领域知识图谱和检查 BIM 模型数据的自动化过程。通过在自主开发的 BIM 检查平台上进行两个案例研究,验证了其功能性和可用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated compliance checking for BIM models based on Chinese-NLP and knowledge graph: an integrative conceptual framework
PurposeThe compliance checking of Building Information Modeling (BIM) models is crucial throughout the lifecycle of construction. The increasing amount and complexity of information carried by BIM models have made compliance checking more challenging, and manual methods are prone to errors. Therefore, this study aims to propose an integrative conceptual framework for automated compliance checking of BIM models, allowing for the identification of errors within BIM models.Design/methodology/approachThis study first analyzed the typical building standards in the field of architecture and fire protection, and then the ontology of these elements is developed. Based on this, a building standard corpus is built, and deep learning models are trained to automatically label the building standard texts. The Neo4j is utilized for knowledge graph construction and storage, and a data extraction method based on the Dynamo is designed to obtain checking data files. After that, a matching algorithm is devised to express the logical rules of knowledge graph triples, resulting in automated compliance checking for BIM models.FindingsCase validation results showed that this theoretical framework can achieve the automatic construction of domain knowledge graphs and automatic checking of BIM model compliance. Compared with traditional methods, this method has a higher degree of automation and portability.Originality/valueThis study introduces knowledge graphs and natural language processing technology into the field of BIM model checking and completes the automated process of constructing domain knowledge graphs and checking BIM model data. The validation of its functionality and usability through two case studies on a self-developed BIM checking platform.
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