COMPUTER TECHNOLOGIES FOR NUMERICAL MODELLING OF BUILDING CONSTRUCTIONS USING ARTIFICIAL INTELLGENCE
DOI:
https://doi.org/10.32782/apcmj.2024.3.10Keywords:
computer technologies, artificial intelligence, building constructions, finite element method, quasi-linear regression, method of least squares, airfield rigid pavementAbstract
The paper is devoted to the issue of using artificial intelligence in computer technologies for numerical modeling of building constructions. Artificial intelligence (AI) is a technology that allows machines to think, learn and act independently. It can be used to automate tasks and provide information to optimize construction processes and projects. The role of artificial intelligence in the construction industry is analyzed, the advantages of its use are listed. The method of using AI ChatGPT for regression analysis in airfield rigid pavement design is considered. Computer technologies for numerical modelling of building constructions and artificial intelligence have great potential for improving the building and civil engineering. With these technologies, engineers can improve as construction projects and ensure the sustainability and stability of structures in the future. But it should be remembered that computer technologies and AI should be used as an auxiliary tool, not as a replacement for human expertise and professional qualification.
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