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Task Scheduling of Real-Time Traffic Information Processing Based on Digital Twins

Yang Liu, Ang Yang, Qingcheng Zeng, Yuhui Sun, Jing Gao, Zhihan Lv

2022IEEE Transactions on Intelligent Transportation Systems21 citationsDOI

Abstract

The Intelligent Transportation System under Digital Twins can provide accurate data sources for traffic control. The present work focuses on the real-time information processing and task scheduling problems of the Internet of Vehicles (IoV) system based on Virtual Reality. They are the Quality/Distance Algorithm (QDA), Task Density Algorithm, Distance Balance Algorithm (DBA), and Bionic-DBA (B-DBA). The simulation experiment analysis suggests that the DBA algorithm takes the balance of travel distance into account and effectively improves task quality. The Utility Function in B-DBA and the Biological Heuristic Search Algorithm in Pareto Ant Colony Optimization play a critically important role in enhancing the overall task quality. In addition, a Transmission based on Privacy Protection (TPP) algorithm is designed to protect the attribute-based privacy information in the traffic information transmission system. This algorithm ensures that the real-time traffic information processing system resists various attacks from malicious nodes. It has been verified that when the number of selfish nodes accounts for 30%, the transmission efficiency of the TPP algorithm reaches 0.77. The research content has a practical reference value for providing users with continuous and high-quality IoV network services.

Topics & Concepts

Computer scienceScheduling (production processes)Task (project management)Real-time computingALARMThe InternetComputer networkDistributed computingEngineeringWorld Wide WebAerospace engineeringOperations managementSystems engineeringTraffic Prediction and Management TechniquesTransportation Systems and LogisticsDigital Transformation in Industry
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