Credible fusion of evidence in distributed system subject to cyberattacks
Chaoxiong Ma, Yan Liang

TL;DR
This paper introduces a credible evidence fusion algorithm for distributed systems under cyberattacks, ensuring privacy, attacker identification, and conflict resolution, with lower complexity and privacy guarantees demonstrated through simulations.
Contribution
It proposes a novel WAVCCME algorithm that enhances evidence credibility, privacy preservation, and attack detection in distributed systems facing cyber threats.
Findings
WAVCCME achieves credible evidence fusion with lower computational complexity.
The algorithm effectively identifies and excludes attacker evidence.
Simulations confirm convergence and privacy preservation in distributed unmanned systems.
Abstract
Given that distributed systems face adversarial behaviors such as eavesdropping and cyberattacks, how to ensure the evidence fusion result is credible becomes a must-be-addressed topic. Different from traditional research that assumes nodes are cooperative, we focus on three requirements for evidence fusion, i.e., preserving evidence's privacy, identifying attackers and excluding their evidence, and dissipating high-conflicting among evidence caused by random noise and interference. To this end, this paper proposes an algorithm for credible evidence fusion against cyberattacks. Firstly, the fusion strategy is constructed based on conditionalized credibility to avoid counterintuitive fusion results caused by high-conflicting. Under this strategy, distributed evidence fusion is transformed into the average consensus problem for the weighted average value by conditional credibility of…
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Taxonomy
TopicsDigital and Cyber Forensics · Image Processing and 3D Reconstruction · Advanced Malware Detection Techniques
