4.7 Article

Natural language generation and deep learning for intelligent building codes

期刊

ADVANCED ENGINEERING INFORMATICS
卷 52, 期 -, 页码 -

出版社

ELSEVIER SCI LTD
DOI: 10.1016/j.aei.2022.101557

关键词

Intelligent building code; Natural language generation; Deep learning; Automated compliance checking; Requirement representation

资金

  1. National Science Foundation (NSF)
  2. NSF [1827733]

向作者/读者索取更多资源

This paper proposes the concept of intelligent building code to address the challenges in the information extraction and transformation processes of automated compliance checking systems. By connecting natural-language requirements with computer-understandable semantic information, intelligent code is generated to improve the accuracy and comprehensibility of compliance checking.
Many existing automated compliance checking (ACC) systems require the processes of extracting regulatory information from natural-language building-code requirements and transforming the extracted information into computer-processable semantic representations. These processes could, however, be jeopardized by the ambiguous nature of the natural language and the hierarchically complex structures of building-code requirements. To address this problem, this paper proposes the concept of intelligent building code for bypassing the error-prone information extraction and transformation processes. In the proposed intelligent code, the natural-language requirements in the code are connected with highly structured computer-understandable semantic information, which is represented in the form of semantic requirement hierarchies and can be readily used by computers for ACC. The paper also proposes a deep learning-based method to automatically generate such intelligent code. The method leverages the requirement hierarchy representation, a proposed deep learning unit-to-text model for generating requirement sentence segments, and a proposed semantic correspondence score for configuring the segments into requirement sentences. The method was implemented and tested on a dataset from multiple regulatory documents. The generated intelligent requirements were evaluated in terms of both natural-language requirement comprehensibility and correspondence between the natural language and the semantic representation, with the results indicating high performance for the proposed representation and method. The proposed intelligent code will help reduce ACC errors, improve requirement comprehensibility, and facilitate intelligent code analytics.

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