Title: Exploring the role of edge computing on the legal effect of secure collaborative download protocol

Authors: Peifang Zhong

Addresses: Department of Humanities and Law, College of Science and Technology, Gannan Normal University, Ganzhou 341000, Jiangxi, China

Abstract: To make people's car driving experience safer and more comfortable, the architecture of intrusion recognition model based on the K-nearest neighbour classification Deep Neural Networks (K-DNN) is proposed to classify and identify various network intrusion factors, thereby strengthening the security level of Internet of Vehicles (IoV) and alleviating the hardware resource scarcity for IoV. Then, a secure collaborative download system based on edge computing is proposed, which can accurately and timely collect the information of roads, vehicles and nearby infrastructure in the driving process and facilitate people to safely and quickly download the required content. In the proposed system, the vehicle encrypts the content download request and sends it to the Roadside Unit (RSU) and the content server, respectively. The content server sends the content corresponding to the download request to the vehicle through the RSU.

Keywords: edge computing; collaborative download; legal effect; internet of vehicles; roadside unit.

DOI: 10.1504/IJGUC.2022.124400

International Journal of Grid and Utility Computing, 2022 Vol.13 No.2/3, pp.173 - 182

Received: 31 May 2021
Accepted: 29 Jul 2021

Published online: 26 Jul 2022 *

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