Abstract
In the process of urbanization, the number of construction projects is increasing, so it is necessary to optimize the design of project management. A project management method based on BIM is proposed. The fuzzy balanced scheduling method is used to optimize and cluster the information data of the construction project, and the parameterized identification model is used for the adaptive configuration of the construction project in the whole life cycle process. The dynamic data analysis model of project management is constructed by using 3D rendering method, the basic data of project management is obtained by using BIM technology, and the adaptive query and configuration of project management data is realized by database optimization access technology. Improve the artificial intelligence of project management. The simulation results show that the model has good retrieval ability and high efficiency of database access to the relevant information data of the project, and the intelligent level of project management is improved.
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This paper is one of the achievements of the low-carbon and energy-saving technology integration demonstration of major science and technology projects in Guangdong province – the low-carbon and energy-saving technology integration demonstration of Chengchuang building in Nanhai district, Foshan (02532290234909148).
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Li, D. (2021). Exploration and Research on Project Engineering Management Mode Based on BIM. In: Sugumaran, V., Xu, Z., Zhou, H. (eds) Application of Intelligent Systems in Multi-modal Information Analytics. MMIA 2020. Advances in Intelligent Systems and Computing, vol 1234. Springer, Cham. https://doi.org/10.1007/978-3-030-51556-0_27
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DOI: https://doi.org/10.1007/978-3-030-51556-0_27
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