Abstract

Modern vehicles are equipped with a plethora of on-board sensors and large on-board storage, which enables them to gather and store various local-relevant data. However, the wide application of vehicular sensing has its own challenges, among which location-privacy preservation and data query accuracy are two critical problems. In this paper, we propose a novel range query scheme, which helps the data requester to accurately retrieve the sensed data from the distributive on-board storage in vehicular ad hoc networks (VANETs) with location privacy preservation. The proposed scheme exploits structured scalars to denote the locations of data requesters and vehicles, and achieves the privacy-preserving location matching with the homomorphic Paillier cryptosystem technique. Detailed security analysis shows that the proposed range query scheme can successfully preserve the location privacy of the involved data requesters and vehicles, and protect the confidentiality of the sensed data. In addition, performance evaluations are conducted to show the efficiency of the proposed scheme, in terms of computation delay and communication overhead. Specifically, the computation delay and communication overhead are not dependent on the length of the scalar, and they are only proportional to the number of vehicles.

Highlights

  • Nowadays, the fast development of automotive industry and the wide deployment of on-board sensors have created a huge opportunity of vehicular sensing [1]

  • To overcome the above challenges, we propose a novel privacy-preserving range query scheme from the distributive on-board storage in vehicular ad hoc networks (VANETs) in a practical scenario: acquiring the data harvested by the on-board air pollution sensors within the defined query area, i.e., an industrial area, to monitor the air quality

  • We present the proposed range query scheme in a practical vehicular sensing application: help the data requester to acquire the data generated by vehicles located within the target query area during a past short-time period, which can help to investigate the air quality of the given industrial district

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Summary

Introduction

The fast development of automotive industry and the wide deployment of on-board sensors have created a huge opportunity of vehicular sensing [1]. Since vehicles are dynamically and opportunistically moving, the sensory data maintained in their on-board storage captured during a past time period may or may not be generated within the target query area. It is highly possible that the queried sensory data are partially generated within the target query area It is difficult for the data requester to accurately identify and acquire the wanted data from the on-board storage of the massive and dynamically moving vehicles. To overcome the above challenges, we propose a novel privacy-preserving range query scheme from the distributive on-board storage in vehicular ad hoc networks (VANETs) in a practical scenario: acquiring the data harvested by the on-board air pollution sensors within the defined query area, i.e., an industrial area, to monitor the air quality.

System Model
Security Requirements
Design Goals
Proposed Scheme
Preliminaries
System Initialization
Query Area Construction
Data Query Generation
Data Report Generation
Privacy Preserving Data Filtering
Data Report Aggregation
Security Analysis
Parameter Setup
Computation Complexity
Communication Overhead
Secure Scalar Product Computation
Secure Location-Based Query
Conclusions
Full Text
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