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Research on assembly sequence planning and optimization of precast concrete buildings

    Yaowu Wang Affiliation
    ; Zhenmin Yuan Affiliation
    ; Chengshuang Sun Affiliation

Abstract

Due to more complex structure and increasing prefabrication rate of precast concrete buildings, the assembly order between their constituent components is getting more and more attention. In order to solve the assembly sequence planning and optimization (ASPO) problem in precast concrete buildings, Building Information Modelling (BIM) and Improved Genetic Algorithm (IGA) are organically combined to propose a new method called BIM-IGA-based ASPO method. This method uses BIM for parametric modelling, uses IGA to search for an optimal assembly sequence, and then uses BIM again for visual simulation to further test the assembly sequence. Besides, IGA, which is improved in coding mode, crossover operation and mutation operation, is also used to achieve the dynamic adjustment of assembly sequence in construction process. A full-text example is used to explain the detailed operating principle of BIM-IGA-based ASPO method. The results indicate that the method can effectively find an optimal assembly sequence to reduce the assembly difficulty of a precast concrete building.

Keyword : precast concrete buildings, ASPO, BIM, IGA

How to Cite
Wang, Y., Yuan, Z., & Sun, C. (2018). Research on assembly sequence planning and optimization of precast concrete buildings. Journal of Civil Engineering and Management, 24(2), 106-115. https://doi.org/10.3846/jcem.2018.458
Published in Issue
Mar 30, 2018
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This work is licensed under a Creative Commons Attribution 4.0 International License.

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