基于NLP和深度学习的建筑法规分析支持自动规则检查系统

Jaeyeol Song, Jinsung Kim, J. Lee
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引用次数: 17

摘要

本文旨在描述一种基于自然语言处理(NLP)和深度学习的支持自动规则检查系统的方法。自动化规则检查以多种方式发展,提高了建筑设计审查过程的效率。然而,由于人类语言的性质,将人类可读的建筑规则转换为计算机可读的格式仍然是耗时且容易出错的。在NLP领域已经有了一些独立的研究,本文主要研究计算机如何能够理解构建规则的语义,从而智能地自动化规则解释过程。本文提出了一种规则句的语义分析过程及其在规则检查系统中的应用。该过程包括以下几个步骤:1)学习单词和句子的语义;2)利用语义分析。在语义分析方面,我们采用了词嵌入技术,将词的意义转换为数值形式。通过使用这些值,计算机可以提取相关单词并对句子的主题进行分类。语义分析的结果可以用特定于领域的知识来细化解释。本文还对所提出的方法进行了验证
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NLP and Deep Learning-based Analysis of Building Regulations to Support Automated Rule Checking System
This paper aims to describe a natural language processing (NLP) and deep learning-based approach for supporting automated rule checking system. Automated rule checking has been developed in various ways and enhanced the efficiency of building design review process. Converting human-readable building regulations to computer-readable format is, however, still time-consuming and error-prone due to the nature of human languages. Several domainindependent efforts have been made for NLP, and this paper focuses on how computers can be able to understand semantic meaning of building regulations to intelligently automate rule interpretation process. This paper proposes a semantic analysis process of regulatory sentences and its utilization for rule checking system. The proposed process is composed of following steps: 1) learning semantics of words and sentences, 2) utilization of semantic analysis. For semantic analysis, we use word embedding technique which converts meaning of words in numerical values. By using those values, computers can extract related words and classify the topic of sentences. The results of the semantic analysis can elaborate the interpretation with domain-specific knowledge. This paper also shows a demonstration of the proposed
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