On the Impact of Sybil-based Attacks on Mobile Crowdsensing for Transportation
Alexander S\"oderh\"all, Zahra Alimadadi, Panos Papadimitratos

TL;DR
This paper investigates how Sybil-based attacks can manipulate mobile crowdsensing systems for transportation, showing that such attacks can significantly increase travel times by falsifying road data.
Contribution
The study designs and evaluates a simulation framework to quantify the impact of Sybil attacks on transportation N-MCS, highlighting factors influencing attack success.
Findings
Sybil attacks can increase travel time by 20%.
Attacks are more effective depending on network location and data contribution.
A small percentage of Sybils (3%) can cause significant disruption.
Abstract
Mobile Crowd-Sensing (MCS) enables users with personal mobile devices (PMDs) to gain information on their surroundings. Users collect and contribute data on different phenomena using their PMD sensors, and the MCS system processes this data to extract valuable information for end users. Navigation MCS-based applications (N-MCS) are prevalent and important for transportation: users share their location and speed while driving and, in return, find efficient routes to their destinations. However, N-MCS are currently vulnerable to malicious contributors, often termed Sybils: submitting falsified data, seemingly from many devices that are not truly present on target roads, falsely reporting congestion when there is none, thus changing the road status the N-MCS infers. The attack effect is that the N-MCS returns suboptimal routes to users, causing late arrival and, overall, deteriorating road…
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