Application of Artificial Intelligence (AI) in Civil Engineering
This research tackles the problem of limitations in traditional hard computing methods in civil engineering, providing a solution for whom are civil engineers and researchers in need of more accurate and efficient analysis tools.
The application of artificial intelligence in civil engineering has led to significant advancements in various sub-fields, including slope stability analysis and water quality treatment, by providing innovative solutions and improved analysis capabilities. Artificial Neural Networks, Fuzzy Logic, Genetic Algorithms, and Probabilistic Reasoning have been used to offer more precise assessments and accurate estimates.
Hard computing generally deals with precise data, which provides ideal solutions to problems. However, in the civil engineering field, amongst other disciplines, that is not always the case as real-world systems are continuously changing. Here lies the need to explore soft computing methods and artificial intelligence to solve civil engineering shortcomings. The integration of advanced computational models, including Artificial Neural Networks (ANNs), Fuzzy Logic, Genetic Algorithms (GAs), and Probabilistic Reasoning, has revolutionized the domain of civil engineering. These models have significantly advanced diverse sub-fields by offering innovative solutions and improved analysis capabilities. Sub-fields such as: slope stability analysis, bearing capacity, water quality and treatment, transportation systems, air quality, structural materials, etc. ANNs predict non-linearities and provide accurate estimates. Fuzzy logic uses an efficient decision-making process to provide a more precise assessment of systems. Lastly, while GAs optimizes models (based on evolutionary processes) for better outcomes, probabilistic reasoning lowers their statistical uncertainties.