Smart City Gnosys

Smart city article details

Title Machine Learning For Smart City Ai Systems
ID_Doc 35980
Authors Logani M.; Makkar S.
Year 2024
Published Handbook of Artificial Intelligence for Smart City Development: Management Systems and Technology Challenges
DOI http://dx.doi.org/10.1201/9781003225317-1
Abstract Due to continued urbanization and modernization, smart cities have become our future. In smart cities, it is of significance to harness the technologies to create advanced lifestyles at an affordable cost sustainably. For reaching this level of growth, a huge volume of data is required, i.e., big data which is prone to errors and can be of labelled and unlabelled type. To leverage this data for development, machine learning plays a huge role. The use of machine learning depends on the data being labelled for supervised learning to find specific solutions in the collected raw data or unlabelled for unsupervised learning to find solutions by recognizing underlying patterns/anomalies. This chapter focuses on advanced machine learning algorithms and their ability to handle the diverse data collected efficiently to provide solutions. Also, the applications of these algorithms in a smart city like traffic management, pollution control, energy conservation, healthcare and public security will be of concern here. © 2024 selection and editorial matter, Sandhya Makkar, Gobinath Ravindran, Ripon Kumar Chakrabortty, Arindam Pal; individual chapters, the contributors.
Author Keywords


Similar Articles


Id Similarity Authors Title Published
35981 View0.997Logani M.; Makkar S.Machine Learning For Smart City Ai SystemsHandbook of Artificial Intelligence for Smart City Development: Management Systems and Technology Challenges (2025)
5160 View0.91Saranya M.; Amutha B.A Survey Of Innovative Machine Learning Approaches In Smart City ApplicationsInnovative Machine Learning Applications for Cryptography (2024)
35978 View0.909Dou X.; Chen W.; Zhu L.; Bai Y.; Li Y.; Wu X.Machine Learning For Smart Cities: A Comprehensive Review Of Applications And OpportunitiesInternational Journal of Advanced Computer Science and Applications, 14, 9 (2023)
8953 View0.907França R.P.; Monteiro A.C.B.; Arthur R.; Iano Y.An Overview Of The Machine Learning Applied In Smart CitiesLecture Notes in Intelligent Transportation and Infrastructure, Part F1386 (2021)
32035 View0.904Mrabet M.; Sliti M.Integrating Machine Learning For The Sustainable Development Of Smart CitiesFrontiers in Sustainable Cities, 6 (2024)
35883 View0.904Oladipo I.D.; AbdulRaheem M.; Awotunde J.B.; Bhoi A.K.; Adeniyi E.A.; Abiodun M.K.Machine Learning And Deep Learning Algorithms For Smart Cities: A Start-Of-The-Art ReviewEAI/Springer Innovations in Communication and Computing (2022)
40125 View0.904Hurbean L.; Danaiata D.; Militaru F.; Dodea A.-M.; Negovan A.-M.Open Data Based Machine Learning Applications In Smart Cities: A Systematic Literature ReviewElectronics (Switzerland), 10, 23 (2021)
36039 View0.903Althabahi M.H.; Ahmad Jan M.; Brik B.; Foufou S.Machine Learning-Based Big Data Analytics In Smart Cities: A Survey Of Current Trends And Future Research DirectionsProceedings - 2024 IEEE/ACM International Conference on Big Data Computing, Applications and Technologies, BDCAT 2024 (2024)
10208 View0.903Varshney H.; Khan R.A.; Khan U.; Verma R.Approaches Of Artificial Intelligence And Machine Learning In Smart Cities: Critical ReviewIOP Conference Series: Materials Science and Engineering, 1022, 1 (2021)
61761 View0.902Band S.S.; Ardabili S.; Sookhak M.; Chronopoulos A.T.; Elnaffar S.; Moslehpour M.; Csaba M.; Torok B.; Pai H.-T.; Mosavi A.When Smart Cities Get Smarter Via Machine Learning: An In-Depth Literature ReviewIEEE Access, 10 (2022)