基于点云数据和启发式算法的复杂龙骨-面板结构智能数字化施工方法
CSTR:
作者:
作者单位:

1.重庆大学 山地城镇建设与新技术教育部重点实验室; 土木工程学院,重庆 400045;2.广州葛洲坝建设工程有限公司,广州 511466

作者简介:

廖岳(1997- ),男,博士生,主要从事智能建造研究,E-mail:Hill_Liao@stu.cqu.edu.cn。
LIAO Yue (1997- ), PhD candidate, main research interest: intelligent construction, E-mail: Hill_Liao@stu.cqu.edu.cn.

通讯作者:

曾焱(通信作者),男,博士生,E-mail:yanzg@ stu.cqu.edu.cn。

中图分类号:

TU398.9

基金项目:

国家自然科学基金(52130801)


Intelligent digital construction for complex frame-panel structures based on point cloud data and heuristic algorithms
Author:
Affiliation:

1.Key Laboratory of New Technology for Construction of Cities in Mountain Area; School of Civil Engineering, Chongqing University, Chongqing 400045, P. R. China;2.Guangzhou Gezhouba Group Construction Engineering CO., LTD., Guangzhou 511466, P. R. China

Fund Project:

National Natural Science Foundation of China (No. 52130801)

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    摘要:

    大型复杂龙骨-面板结构建造过程中,龙骨发生弯曲且扭转,影响面板安装;传统面板深化设计过程存在效率不高、智能化程度低等缺点。以广州南沙国际金融论坛会址为工程背景,开展基于点云数据和启发式算法的大型复杂龙骨-面板结构智能建造技术研究:针对采光顶深化设计需求,提出适用于龙骨的逆向建模方法;针对骨架几何描述困难的问题,提出多边形弯扭构件轴线提取算法;针对手动划分面板效率低等问题,提出智能化的单元提取方法;基于Guillotine算法,采用不同策略生成面板排布方案并进行评估。研究结果表明:该逆向建模方法能以给定采样间距获取截面几何信息,所建立的龙骨模型重建偏差在6 mm以内,可用于面板深化设计;面板单元划分方法能自动提取各类面板尺寸信息,减少人工选点工作量;基于Guillotine算法生成的面板排布方案能将材料损耗率控制在15%以下。

    Abstract:

    In the construction of large and intricate frame-panel structures, the curvature and twists of the backbone present a challenge in the assessment of the installation quality and the attachment of the panels.The classic method for panel detail design is associated with several drawbacks, such as low efficiency and the need for greater automation. In the context of the Nansha International Finance Forum project, we investigated intelligent construction techniques for large and intricate frame-panel structures, based on point cloud data (PCD) and heuristic algorithms. A backward modelling method applicable to the frame was proposed to meet the demand for the detailed design of the daylighting roof, and to build the reconstruction model for detailed design. An algorithm for extracting the axes of a polygon’s curved and twisted components was developed to assist in the geometric description. An intelligent cell extraction method was introduced to address the low efficiency of manual panel segmentation. Different strategies were used to generate and evaluate panel layout plans, based on the Guillotine algorithm. The results show that the proposed inverse modeling approach allows for the acquisition of profile geometry information with a defined sampling interval. Furthermore, the established frame model exhibits an accuracy better than 6 mm, making it suitable for panel deepening design applications. Panel cell partitioning methods could automatically extract information about various panel sizes, reducing manual point selection efforts. The material waste rate of the panel layout plan generated by the Guillotine algorithm could be limited to 15%.

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引用本文

廖岳,李汉涛,刘界鹏,曾焱,李来安,马晓晓,崔娜.基于点云数据和启发式算法的复杂龙骨-面板结构智能数字化施工方法[J].土木与环境工程学报(中英文),2026,48(1):174-183. LIAO Yue, LI Hantao, LIU Jiepeng, ZENG Yan, LI Laian, MA Xiaoxiao, CUI Na. Intelligent digital construction for complex frame-panel structures based on point cloud data and heuristic algorithms[J]. JOURNAL OF CIVIL AND ENVIRONMENTAL ENGINEERING,2026,48(1):174-183.10.11835/j. issn.2096-6717.2023.147

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  • 收稿日期:2023-08-29
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  • 在线发布日期: 2026-02-26
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