Abstract
Transportation data in a smart city environment is increasingly becoming
available. This data availability allows building smart solutions that
are viewed as meaningful by both city residents and city management
authorities. Our research work was based on Lisbon mobility data
available through the local municipality, where we integrated and
cleaned different data sources and applied a CRISP-DM approach using
Python. We focused on mobility problems and interdependence and
cascading-effect solutions for the city of Lisbon. We developed
data-driven approaches using artificial intelligence and visualization
methods to understand traffic and accident problems, providing a big
picture to competent authorities and supporting the city in being more
prepared, adaptable, and responsive, and better able to recover from
such events.
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Keywords:
transportation; traffic; accidents; data-driven; data visualization; smart cities
Master in Integrated Business Intelligence Systems (MIBIS) - ISCTE-IUL
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