Abstract

Location-based services has been widely applied in cloud-enabled Internet of vehicles. Within these services, location privacy issues have captured significant attention. Vehicles use the technology of anonymity to implement occultation, the location is not revealed. In this process, large-scale data transmissions can reduce the quality of services. In order to ensure location privacy and high-quality services, the cloud manager customizes virtual machines for vehicles to support location-based services according to the vehicles’ demands. To achieve better performance, this article presents a conditional anonymity method that does not use bilinear pairings to address the problem of privacy disclosure by using discrete logarithm problem and Diffie–Hellman problem. Moreover, asymmetric key algorithms are used in the Internet of vehicles environment to reduce the cost. To guarantee secure data transmission in Internet of vehicles, the batch validation technique is used to address data integrity. Our theoretical security analysis and experiments show that the proposed scheme is secure in compared attack models, such as impersonation attacks, replay attacks, the man-in-the-middle attacks, and so on. Our proposed scheme ensures the security requirements such as message authentication, location privacy protection, and traceability, while lowering transmission and computation cost.

Highlights

  • We propose a quality of services (QoS)–based location privacy protection method (QBPP) for Location-based services (LBS) in cloud-enabled Internet of vehicles (IoV)

  • In wireless communication service market, IoV is considered as an important domain

  • LBS is featured with a supporting technology in vehicular networks

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Summary

Introduction

There are a variety of methods available for location privacy protection, for example,[5] focused on the anonymity-based approaches that can mitigate the location tracking of a target by providing the target with an anonymity set. Such approaches consider anonymity in terms of unlink-ability. We propose a quality of services (QoS)–based location privacy protection method (QBPP) for LBS in cloud-enabled IoV. In the ‘‘Definition’’ section, we summarize some definitions including network model, security requirements, and challenges that are faced within the location privacy protection in IoV. The ‘‘Conclusion’’ section concludes the article and highlights our future work

Related work
Initialization definitions
Vehicle location anonymity and SP message signature
Proof of Lemma
O O O O
X NRn À
Conclusion
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