Privacy-aware Traffic Flow Prediction based on Multi-party Sensor Data with Zero Trust in Smart City

Author:

Wang Fan1,Li Guangshun1,Wang Yilei1,Rafique Wajid2,Khosravi Mohammad R.3,Liu Guanfeng4,Liu Yuwen1,Qi* Lianyong1

Affiliation:

1. School of Computer Science, Qufu Normal University, China

2. Department of Computer Science and Operations Research, University of Montreal, Canada

3. Department of Computer Engineering, Persian Gulf University, Iran and Department of Electrical and Electronic Engineering, Shiraz University of Technology, Iran

4. Department of computing, QMacquarie University, Australia

Abstract

With the continuous increment of city volume and size, a number of traffic-related urban units (e.g., vehicles, roads, buildings, etc.) are emerging rapidly, which plays a heavy burden on the scientific traffic control of smart cities. In this situation, it is becoming a necessity to utilize the sensor data from massive cameras deployed at city crossings for accurate traffic flow prediction. However, the traffic sensor data are often distributed and stored by different organizations or parties with zero trust, which impedes the multi-party sensor data sharing significantly due to privacy concerns. Therefore, it requires challenging efforts to balance the tradeoff between data sharing and data privacy to enable cross-organization traffic data fusion and prediction. In light of this challenge, we put forward an accurate LSH (locality-sensitive hashing)-based traffic flow prediction approach with the ability to protect privacy. Finally, through a series of experiments deployed on a real-world traffic dataset, we demonstrate the feasibility of our proposal in terms of prediction accuracy and efficiency while guaranteeing sensor data privacy.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications

Reference45 articles.

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3. Generating semantically enriched user profiles for Web personalization

4. A spatiotemporal correlative k-nearest neighbor model for short-term traffic multistep forecasting

5. Network Coding Based Privacy Preservation against Traffic Analysis in Multi-Hop Wireless Networks

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