This book contains high-quality and original research on computational intelligence for green smart cities research. In recent years, the use of smart city technology has rapidly increased through the successful development and deployment of Internet of Things (IoT) architectures. The citizens' quality of life has been improved in several sensitive areas of the city, such as transportation, buildings, health care, education, environment, and security, thanks to these technological advancesComputational intelligence techniques and algorithms enable a computational analysis of enormous data sets to reveal patterns that recur. This information is used to inform and improve decision-making at the municipal level to build smart computational intelligence techniques and sustainable cities for their citizens. Machine intelligence allows us to identify trends (patterns). The smart city could better integrate its transportation network, for example. By offering a better public transportation network adapted to the demand, we could reduce personal vehicles and energy consumption. A smart city could use models to predict the consequences of a change, such as pedestrianizing a street or adding a bike lane. A city can even create a 3D digital twin to test hypothetical projects. This book comprises many state-of-the-art contributions from scientists and practitioners working in machine intelligence and green smart cities. It aspires to provide a relevant reference for students, researchers, engineers, and professionals working in this area or those interested in grasping its diverse facets and exploring the latest advances in machine intelligence for green and sustainable smart city applications.
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This book contains high-quality and original research on computational intelligence for green smart cities research.
Recent trends of  Artificial Intelligence Techniques.- An Overview of Smart Green Cities Based on XAIMachine Learning for Green Smart Health.- Deep Learning Models for Green Smart Health.- On natural language processing to attack COVID-19 pandemic.- Evolutionary Algorithms for Smart Green Transportation.- Analysis and design of the Bus Transport Network.- Traffic sign detection system for Smart City Transportation.- Green Smart Transportation solutions for combating Covid-19.- The Utilization of Forecasting Methods of Solar Radiation.- Machine learning for Green Smart Environment.- Deep learning for green smart environment.- Machine Learning & Fuzzy Technique for Environmental Time Series.- A new Fuzzy Clustering Algorithm based on Maximum Likelihood Estimation.- Optimal Environmental-Economic Scheduling of a smart home.- Smart Home Application based on Evolutionary Algorithm: a Transfer Learning Approach.- Machine learning for Green Home.- Machine learning for green smart video surveillance.- Green Learning Solutions for Human Trafficking Victims in Rural Communities During the COVID-19.- A comparative analysis on object detection accuracy of cloud-based image processing services.
Les mer
This book contains high-quality and original research on computational intelligence for green smart cities research. In recent years, the use of smart city technology has rapidly increased through the successful development and deployment of Internet of Things (IoT) architectures. The citizens' quality of life has been improved in several sensitive areas of the city, such as transportation, buildings, health care, education, environment, and security, thanks to these technological advances Computational intelligence techniques and algorithms enable a computational analysis of enormous data sets to reveal patterns that recur. This information is used to inform and improve decision-making at the municipal level to build smart computational intelligence techniques and sustainable cities for their citizens. Machine intelligence allows us to identify trends (patterns). The smart city could better integrate its transportation network, for example. By offering a better public transportation network adapted to the demand, we could reduce personal vehicles and energy consumption. A smart city could use models to predict the consequences of a change, such as pedestrianizing a street or adding a bike lane. A city can even create a 3D digital twin to test hypothetical projects. This book comprises many state-of-the-art contributions from scientists and practitioners working in machine intelligence and green smart cities. It aspires to provide a relevant reference for students, researchers, engineers, and professionals working in this area or those interested in grasping its diverse facets and exploring the latest advances in machine intelligence for green and sustainable smart city applications.
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Proposes the latest discoveries of machine intelligence techniques and methods for green smart cities Presents high-quality and original research on computational intelligence for green smart cities research Provides many case studies and applications of machine intelligence in various green smart city aspects
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Produktdetaljer

ISBN
9783030964283
Publisert
2022-04-23
Utgiver
Vendor
Springer Nature Switzerland AG
Høyde
235 mm
Bredde
155 mm
Aldersnivå
Research, P, 06
Språk
Product language
Engelsk
Format
Product format
Innbundet

Om bidragsyterne

Mohamed Lahby is an Associate Professor at the Higher Normal School (ENS) University Hassan II of Casablanca, Morocco. His PhD in Computer Science from the Faculty of Sciences and Technology of Mohammedia, University Hassan II of Casablanca, in 2013. His research interests are wireless communication and network, mobility management, QoS/QoE, Internet of things, Smart cities, Optimization and Machine learning. He has published more than 35 papers (book chapters, international journals, and conferences), 3 edited books, and 2 authored books. He has served and continues to serve on executive and technical program committees of numerous international conferences such as IEEE PIMRC, ICC, NTMS, IWCMC, WINCOM, ISNCC. He also serves as a referee of many prestigious Elsevier journals : Ad Hoc Networks, Applied Computing and Informatics and International journal of disaster risk reduction. He organized and participated in more than 40 conferences and workshops. He is the chair of manyinternational workshops and special sessions such as MLNGSN’19, CSPSC’19, MLNGSN’20, AI2SC ’20, WCTCP’20, CIOT’2022.

Ala Al-Fuqaha is a professor at the Computer Science department, Hamad Bin Khalifa University, Qatar. His research interests include the use of machine learning in general and deep learning in particular in support of the data-driven and self-driven management of large-scale deployments of Internet of Things and smart city infrastructure and services, Wireless Vehicular Networks, cooperation and spectrum access etiquette in cognitive radio networks, and management and planning of software defined networks. He is a senior member of the IEEE and an ABET commissioner. He serves on editorial boards of multiple journals including IEEE Communications Letter, IEEE Network Magazine, and Springer AJSE. He also served as chair, co-chair, and technical program committee member of multiple international conferences including IEEE VTC, IEEE Globecom, IEEE ICC, and IWCMC.

Yassine Maleh is an Associate Professor at the National School of Applied Sciences at Sultan Moulay Slimane University, Morocco. He received his PhD degree in Computer Science from Hassan 1st University, Morocco. He is a cybersecurity and Information Technology researcher and practitioner with industry and academic experience. He worked for the National Ports Agency in Morocco as an IT manager from 2012 to 2019. He is a Senior Member of IEEE, Member of the International Association of Engineers IAENG and The Machine Intelligence Research Labs. Dr Maleh has made contributions in the fields of information security and privacy, Internet of Things Security, Wireless and Constrained Networks Security. His research interests include Information Security and Privacy, Internet of Things, Networks Security, Information system and IT Governance. He has published over than 50 papers (Book chapters, international journals and conferences/workshops), 7 edited books and 3 authoredbooks. He is the editor in chief of the International Journal of Smart Security Technologies (IJSST). He serves as an Associate Editor for IEEE Access (2019 Impact Factor 4.098), the International Journal of Digital Crime and Forensics (IJDCF) and the International Journal of Information Security and Privacy (IJISP). He was also a Guest Editor of a special issue on Recent Advances on Cyber Security and Privacy for Cloud-of-Things of the International Journal of Digital Crime and Forensics (IJDCF), Volume 10, Issue 3, July-September 2019. He has served and continues to serve on executive and technical program committees and as a reviewer of numerous international conference and journals such as Elsevier Ad Hoc Networks, IEEE Network Magazine, IEEE Sensor Journal, ICT Express, and Springer Cluster Computing. He was the Publicity chair of BCCA 2019 and the General Chair of the MLBDACP 19 symposium. and Data Management.