
Smart City Computational Paradigms: A Sustainable Approach
Author(s): Mohit Kumar PhD (Editor), Aditi Sharma PhD (Editor), Ketan Kotecha PhD (Editor), Victor Sheng PhD (Editor)
- Publisher finelybook 出版社: Elsevier
- Publication Date 出版日期: February 11, 2026
- Edition 版本: 1st
- Language 语言: English
- Print length 页数: 460 pages
- ISBN-10: 0443277265
- ISBN-13: 9780443277269
Book Description
This convergence of computational intelligence and IoT not only transforms data into actionable knowledge but also fosters the development of autonomous, efficient, and adaptive systems across diverse domains, ranging from smart cities to healthcare and industrial applications. The integration of computational intelligence with IoT enhances the capabilities of connected systems, making them smarter, more efficient, and better equipped to handle the complexities of the modern world.
- Explores the concept of the smart city, and explains how smart cities can improve sustainability, transport, and healthcare
- Demonstrates how computing paradigm technologies can be integrated with artificial intelligence and internet of things
- Applies inter-disciplinary themes and applications (AI, IoT, Blockchain, Decision Making, Computational Paradigm, Uncertainty) to sustainable smart cities
- Includes case studies of successful applications of the smart city computational paradigms
About the Author
Mohit Kumar, PhD is Assistant Professor in the Department of Information Technology at Dr. B R Ambedkar National Institute of Technology, Jalandhar, India. He received his Ph.D. degree from Indian Institute of Technology Roorkee in the field of Artificial Intelligence and Cloud Computing, 2018, and M. Tech degree in Computer Science and Engineering from ABV-Indian Institute of Information Technology Gwalior, India in 2013. He has received his B. Tech degree in Computer Science and Engineering from MJP Rohilkhand University Bareilly, 2009. His research topics cover the areas of Cloud computing, Fog/ Edge Computing, Internet of Things, federated learning, Blockchain, and Artificial Intelligence. Dr Mohit received best faculty award in NIT Jalandhar for academic session 2022-2023. He has published more than 100 research articles in reputed journals, IEEE Transactions and international conferences. He has been Session chair and keynotes Speaker of many International conferences, webinars, FDP, STC in India. He has guided six M. Tech Thesis and guiding 6 Ph.D. Scholars. He has been listed in the prestigious Top 2% of Scientists in the world (2023, 2024) announced by Elsevier and Stanford University, United States. He is editorial board member of several reputed journals such as scientific report (SCIE), discover computing (SCIE) and Discover Artificial Intelligence (Scopus indexed). He is an active reviewer of several reputed journals and international conferences. He is a member of the IEEE.
Aditi Sharma, Ph.D (Senior Member, IEEE) received the B.Tech. degree in Computer Science and engineering from Mody Institute of Technology and Science, Lakshmangarh, India in 2008. She received her Ph.D. degree from MBM Engineering College, JNVU, India in Computer Science and Engineering in 2018. She has worked as Post Doctoral Fellow in School of Engineering and Digital Sciences at Nazarbayev University Kazakhstan in the area of Intelligent Cryptosystems, IoT and cloud in Robotics. She is the visiting faculty at Astana IT University, Kazakhstan and University of Uyo Nigeria. She has published 65 research papers in international journals SCI, ESCI, Scopus and national/international conferences and authored four books. She has published ten patents and also having 19 patents grant in her credit. Her research area includes Cryptography, Block chaining, VLSI, Cellular Automata, Machine Learning, AI chatbots, IOT and artificial intelligence. She is the Life Member of Professional Bodies such as Cryptology Society of India, IEANG and N2women society. She is serving as Conference Chair, General Chair, Technical Programme Committee (TPC) Member and a Reviewer in various Springer, IEEE international conferences. She achieved many awards and scholarships including Nav Shakti Award by North Eastern Council, Ministry of DoNER, Government of India and Best Teacher award.
Ketan Kotecha is currently Director and a Professor with the Symbiosis Centre for Applied Artificial Intelligence, Symbiosis International (Deemed University), Pune, India. His research interests include artificial intelligence, computer algorithms, machine learning, and deep-learning. He has expertise and experience in cutting-edge research and projects in AI and deep learning for the last 25 years. He has published more than 200 papers widely in several excellent peer-reviewed journals on various topics ranging from cutting edge AI, education policies, teaching-learning practices, and AI. He was a recipient of the two SPARC projects worth INR 166 lakhs from MHRD Government of India in AI in collaboration with Arizona State University, USA, and The University of Queensland, Australia. He was also a recipient of numerous prestigious awards, like the Erasmus+ Faculty Mobility Grant to Poland, the DUO-India Professors Fellowship for research in responsible AI in collaboration with Brunel University, U.K., the LEAP Grant at Cambridge University, U.K., the UKIERI Grant with Aston University, U.K., and a Grant from the Royal Academy of Engineering, U.K., under Newton Bhabha Fund. He has published three patents and delivered keynote speeches at various national and international forums, including the Machine Intelligence Laboratory, USA, IIT Bombay, under the World Bank Project, and the International Indian Science Festival organized by the Department of Science and Technology, Government of India. He is an Associate Editor of the IEEE ACCESS. He has listed in the prestigious Top 2% of Scientists in the world (2023) announced by Elsevier and Stanford University, United States.
Victor S. Sheng (Senior Member, IEEE) received the master’s degree in computer science from the University of New Brunswick, Canada, in 2003, and the Ph.D. degree in computer science from Western University, Ontario, Canada, in 2007. He was an Associate Research Scientist and NSERC Post-Doctoral Fellow in information systems with the Stern Business School, New York University, after he obtained the Ph.D. degree. He is currently an Associate Professor of computer science with Texas Tech University and the Founding Director of the Data Analytics Laboratory (DAL). His research interests include data mining, machine learning, and related applications. He is a Lifetime Member of the ACM. He received the Test-of-Time Award for research from KDD 2020, the Best Paper Award Runner-Up from KDD 2008, and the Best Paper Award from ICDM 2011. He is an area chair and a SPC/PC member of a number of international conferences. He is a reviewer of several international journals.
finelybook
