Application Of Genetic Algorithm Classification Approach to Study Urban Streets Morphology at Neighborhood Scale

Authors

  • Mariame Chahbi International University of Rabat (UIR), Center for global studies/ ESAR/ College of Engineering and Architecture, Rabat, Morocco

DOI:

https://doi.org/10.38027/ICCAUA2022EN0130

Keywords:

Machine Learning, Genetic Algorithm, Urban Street Morphology

Abstract

Today’s cities worldwide are facing several new challenges with the spread of advanced digitalization and information technologies. As science and innovation are going digital, urban planning is highly concerned and should follow up with this global numerical transition. Urban planners should make use of the potential of new technologies to develop better and smarter urban forms responding to the new challenges and issues. The study uses artificial intelligence techniques based on genetic algorithms and supported by statistical data upon 20 indicators applied on 450 street segments in different urban fabrics in Fez city aiming to classify and simulate urban street morphology. Machine learning can have the power of solving complex issues that humans alone cannot. The results using the potential of Machine Learning techniques can be a framework for decision-makers to help them thinking about an intelligent planning process matching today challenges while taking advantages of new technologies.

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Published

2022-05-15

How to Cite

Chahbi, M. (2022). Application Of Genetic Algorithm Classification Approach to Study Urban Streets Morphology at Neighborhood Scale. Proceedings of the International Conference of Contemporary Affairs in Architecture and Urbanism-ICCAUA, 5(1), 628–635. https://doi.org/10.38027/ICCAUA2022EN0130