Learning-based VANET Communication and Security Techniques
eBook - Engineering (R0)
Xiao, Liang/Zhuang, Weihua/Zhou, Sheng et al
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Zusatztext
<p></p><p>This timely book provides broad coverage of vehicular ad-hoc network (VANET) issues, such as&nbsp;security, and network selection. Machine learning based methods are&nbsp;applied to solve these issues. This book also includes four rigorously refereed&nbsp;chapters from prominent international researchers working in this subject&nbsp;area. The material serves as a useful reference for researchers, graduate&nbsp;students, and practitioners seeking solutions to VANET communication and&nbsp;security related issues. This book will also help readers understand how to use&nbsp;machine learning to address the security and communication challenges in VANETs.</p>&nbsp;Vehicular ad-hoc networks (VANETs) support vehicle-to-vehicle&nbsp;communications and vehicle-to-infrastructure communications to improve&nbsp;the transmission security, help build unmanned-driving, and support&nbsp;booming applications of onboard units (OBUs). The high mobility of OBUs&nbsp;and the large-scale dynamic network with fixed roadside units (RSUs) make&nbsp;the VANET vulnerable to jamming.&nbsp;<p></p><p>&nbsp;The anti-jamming communication of VANETs can be significantly improved&nbsp;by using unmanned aerial vehicles (UAVs) to relay the OBU message. UAVs help relay the OBU message to improve the signal-to-interference-plus-noise-ratio of the OBU signals, and thus reduce the bit-error-rate of&nbsp;the OBU message, especially if the serving RSUs are blocked by jammers&nbsp;and/or interference, which is also demonstrated in this book.</p><p>This book serves as a useful reference for researchers, graduate students, and practitioners seeking solutions&nbsp;to VANET communication and security related issues.</p><p></p>
Weitere Details
Erschienen: 29.10.2018
Umfang: 7.03 MB
Sprache: ENG
ISBN/EAN: 9783030017316
Umbreit-Nr.: 5879900
