Smart City Gnosys

Smart city article details

Title State Of The Art Survey Of Deep Learning And Machine Learning Models For Smart Cities And Urban Sustainability
ID_Doc 52939
Authors Nosratabadi S.; Mosavi A.; Keivani R.; Ardabili S.; Aram F.
Year 2020
Published Lecture Notes in Networks and Systems, 101
DOI http://dx.doi.org/10.1007/978-3-030-36841-8_22
Abstract Deep learning (DL) and machine learning (ML) methods have recently contributed to the advancement of models in the various aspects of prediction, planning, and uncertainty analysis of smart cities and urban development. This paper presents the state of the art of DL and ML methods used in this realm. Through a novel taxonomy, the advances in model development and new application domains in urban sustainability and smart cities are presented. Findings reveal that five DL and ML methods have been most applied to address the different aspects of smart cities. These are artificial neural networks; support vector machines; decision trees; ensembles, Bayesians, hybrids, and neurofuzzy; and deep learning. It is also disclosed that energy, health, and urban transport are the main domains of smart cities that DL and ML methods contributed in to address their problems.
Author Keywords Big data; Cities of future; Data science; Deep learning; Internet of things (IoT); Machine learning; Smart cities; Urban sustainability


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