An Incentive Mechanism for Vehicular Crowdsensing With Security Protection and Data Quality Assurance
【Author】 Cai, Xuelian; Zhou, Lingling; Li, Fan; Fu, Yuchuan; Zhao, Pincan; Li, Changle; Yu, F. Richard
【Source】IEEE TRANSACTIONS ON VEHICULAR TECHNOLOGY
【影响因子】6.239
【Abstract】With the increase of on-board sensors, as a new paradigm of mobile crowdsensing (MCS), vehicular crowdsensing (VCS) shows great potential in realizing low-cost, large-scale sensing tasks. In order to improve the user engagement and task completion quality of VCS, an appropriate incentive mechanism can promote enough users to participate in the sensing activities and further provide high-quality sensing data. However, due to the contradiction between personal interests and user data security protection, the development of the incentive mechanism is seriously affected. To deal with these challenges, this article aims to propose a security protection incentive mechanism with data quality assurance (SPIM-DQA) for the VCS system. First, we adopt the blockchain-enabled VCS framework, and propose a series of smart contracts to ensure the automatic execution of the incentive mechanism, which solves the user data security issues existing in the traditional incentive mechanism. Then, based on this framework and these smart contracts, a data quality-aware incentive mechanism is proposed from the perspective of data quality. After selecting low-cost and high-quality users to perform the crowdsensing task, user reputation is updated by evaluating the quality of the provided data. In particular, there is a correlation between user reputation and reward distribution, which incentivizes users to consistently provide high-quality data to increase their rewards. Finally, extensive simulation results show that SPIM-DQA can effectively improve data quality while meeting security requirements.
【Keywords】Vehicular crowdsensing; incentive mechanism; blockchain; security; data quality
【发表时间】2023 AUG
【收录时间】2023-09-22
【文献类型】实验仿真
【主题类别】
区块链技术-核心技术-激励机制
【DOI】 10.1109/TVT.2023.3262800
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