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Deep Learning Based Solutions for Vehicular Adhoc Networks / edited by Jitendra Bhatia, Sudeep Tanwar, Joel J. P. C. Rodrigues, Malaram Kumhar.

Springer eBooks EBA - Engineering Collection 2025 Available online

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Format:
Book
Author/Creator:
Bhatia, Jitendra.
Contributor:
Tanwar, Sudeep.
Rodrigues, Joel J. P. C.
Kumhar, Malaram.
Series:
Studies in Computational Intelligence, 1860-9503 ; 1207
Language:
English
Subjects (All):
Computer networks.
Machine learning.
Computational intelligence.
Computer Networks.
Machine Learning.
Computational Intelligence.
Local Subjects:
Computer Networks.
Machine Learning.
Computational Intelligence.
Physical Description:
1 online resource (470 pages)
Edition:
1st ed. 2025.
Place of Publication:
Singapore : Springer Nature Singapore : Imprint: Springer, 2025.
Summary:
This book provides a holistic and comprehensive approach to deep learning for vehicular ad hoc networks (VANETs), covering various aspects such as applications, agency involvement, and potential ethical and legal issues. It begins with discussions on how the transportation system has been converted into Intelligent Transportation System (ITS). The use of VANETs is increasing in the development of ITS to enhance road safety, traffic efficiency, and driver comfort. However, the dynamic nature of vehicular environments and the high mobility of vehicles pose significant challenges to designing and implementing VANETs and ensuring reliable and efficient communication. Deep learning, a subset of machine learning, has the potential to revolutionize vehicular ad hoc networks (VANETs) to enable various applications such as traffic management, collision avoidance, and infotainment. DL has demonstrated great potential in addressing various challenges involved in VANETs by leveraging its ability to learn from vast data and make accurate predictions. It reviews the state-of-the-art DL-based approaches for various applications in VANETs, including routing, congestion control, autonomous driving, and security. In addition, this book provides a comprehensive analysis of these approaches' advantages and limitations and discusses their future research directions. The study in this book shows that DL-based techniques can significantly improve the performance and reliability of VANETs. Still, in-depth research is required to address the challenges of deploying these methods in real-world scenarios. Finally, the book discusses the potential of DL-based VANETs in supporting other emerging technologies, such as autonomous driving and smart cities. It explores the simulation/emulation tools for practical exposure to the vehicular ad hoc network.
Contents:
Overview of Vehicular Ad Hoc Networks
Architecture and Protocols for data transmission in VANETs
Applications and Challenges in VANETs
Deep Learning Architectures for VANET
Deep Learning for Security in VANET Secure Data Transmission in VANET
Deep Learning for Resource Allocation in VANET
Deep Learning for Traffic Prediction in VANET
Traffic Prediction and modeling in Vehicular Ad Hoc Networks
Traffic Data Collection and Processing in VANETs
Deep Learning for Autonomous VANETs
Implementation and Deployment of Deep Learning in Vehicular Ad Hoc Networks
Deployment Strategies for Deep Learning in VANETs
Energy Efficiency Deep Learning techniques in VANETs
Case Studies and Real-World Deployment Examples
Future Research Directions in Deep Learning for VANET
Emerging Trends in VANETs
Research Challenges and Open Issues in deploying deep learning models in VANETs
Simulation/Emulation Platforms for Deep Learning in VANETs
A framework to simulate VANETs.
Notes:
Description based on publisher supplied metadata and other sources.
ISBN:
981-9651-90-5
OCLC:
1523376344

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