Efficient and Privacy-Preserving Carpooling Using Blockchain-Assisted Vehicular Fog Computing
- Li, M; Zhu, LH; Lin, XD
- 2019
- 点赞
- 收藏
【Author】 Li, Meng; Zhu, Liehuang; Lin, Xiaodong
【Source】IEEE INTERNET OF THINGS JOURNAL
【影响因子】10.238
【Abstract】Carpooling enables passengers to share a vehicle to reduce traveling time, vehicle carbon emissions, and traffic congestion. However, the majority of passengers lean to find local drivers, but querying a remote cloud server leads to an unnecessary communication overhead and an increased response delay. Recently, fog computing is introduced to provide local data processing with low latency, but it also raises new security and privacy concerns because users' private information (e.g., identity and location) could be disclosed when these information are shared during carpooling. While they can be encrypted before transmission, it makes user matching a challenging task and malicious users can upload false locations. Moreover, carpooling records should be kept in a distributed manner to guarantee reliable data auditability. To address these problems, we propose an efficient and privacy-preserving carpooling scheme using blockchain-assisted vehicular fog computing to support conditional privacy, one-to-many matching, destination matching, and data auditability. Specifically, we authenticate users in a conditionally anonymous way. Also, we adopt private proximity test to achieve one-to-many proximity matching and extend it to efficiently establish a secret communication key between a passenger and a driver. We store all location grids into a tree and achieve get-off location matching using a range query technique. A private blockchain is built to store carpooling records. Finally, we analyze the security and privacy properties of the proposed scheme, and evaluate its performance in terms of computational costs and communication overhead.
【Keywords】Blockchain; carpooling; fog computing; security and privacy; user matching
【发表时间】2019 JUN
【收录时间】2022-01-02
【文献类型】
【主题类别】
--
评论