Knowledge Agora



Similar Articles

Title PRISMA on Machine Learning Techniques in Smart City Development
ID_Doc 38126
Authors Ionescu, SA; Jula, NM; Hurduzeu, G; Pauceanu, AM; Sima, AG
Title PRISMA on Machine Learning Techniques in Smart City Development
Year 2024
Published Applied Sciences-Basel, 14, 16
Abstract This article investigates the innovative role of machine learning (ML) in the development of smart cities, emphasizing the critical interrelationship between ML and urban environments. While existing studies address ML and urban settings separately, this work uniquely examines their intersection, highlighting the transformative potential of ML in urban development. Utilizing the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) methodology, a systematic and reproducible approach was employed to review 42 relevant studies. The analysis reveals four key themes: transportation and traffic optimization, people and event flow tracking, sustainability applications, and security use cases. These findings underscore ML's ability to revolutionize smart city initiatives by enhancing efficiency, sustainability, and security. This review identifies significant research gaps and proposes future directions, positioning ML as a cornerstone in the evolution of intelligent urban environments.
PDF https://doi.org/10.3390/app14167378

Similar Articles

ID Score Article
39513 Dou, XN; Chen, WJ; Zhu, L; Bai, YM; Li, Y; Wu, XX Machine Learning for Smart Cities: A Comprehensive Review of Applications and Opportunities(2023)International Journal Of Advanced Computer Science And Applications, 14, 9
44247 Ullah, A; Anwar, SM; Li, JQ; Nadeem, L; Mahmood, T; Rehman, A; Saba, T Smart cities: the role of Internet of Things and machine learning in realizing a data-centric smart environment(2024)Complex & Intelligent Systems, 10, 1
38494 Sarker, IH Smart City Data Science: Towards data-driven smart cities with open research issues(2022)
40308 Mahamuni, CV; Sayyed, Z; Mishra, A Machine Learning for Smart Cities: A Survey(2022)
44061 Hammoumi, L; Maanan, M; Rhinane, H Characterizing Smart Cities Based on Artificial Intelligence(2024)Smart Cities, 7, 3
40091 Hurbean, L; Danaiata, D; Militaru, F; Dodea, AM; Negovan, AM Open Data Based Machine Learning Applications in Smart Cities: A Systematic Literature Review(2021)Electronics, 10, 23
41067 Yan, ZJ; Jiang, L; Huang, XL; Zhang, LF; Zhou, XX Intelligent urbanism with artificial intelligence in shaping tomorrow's smart cities: current developments, trends, and future directions(2023)Journal Of Cloud Computing-Advances Systems And Applications, 12, 1
42719 Yigitcanlar, T; Desouza, KC; Butler, L; Roozkhosh, F Contributions and Risks of Artificial Intelligence (AI) in Building Smarter Cities: Insights from a Systematic Review of the Literature(2020)Energies, 13, 6
33280 Tao, XY; Cheng, L; Zhang, RH; Chan, WK; Chao, H; Qin, J Towards Green Innovation in Smart Cities: Leveraging Traffic Flow Prediction with Machine Learning Algorithms for Sustainable Transportation Systems(2024)Sustainability, 16.0, 1
78853 Wang, J; Nguyen, DQ; Bonkalo, T; Grebennikov, O Smart governance of urban data(2021)
Scroll