Distributed Inference with M-ary Quantized Data in the Presence of Byzantine Attacks
V. Sriram Siddhardh (Sid) Nadendla, Yunghsiang S. Han, Pramod K., Varshney

TL;DR
This paper studies how distributed sensor networks can be protected against Byzantine attacks that manipulate quantized data, revealing optimal attack strategies and proposing a reputation-based mitigation scheme to enhance security.
Contribution
It introduces the analysis of optimal Byzantine attack strategies in M-ary quantized data systems and proposes a reputation-based method to identify malicious nodes.
Findings
Increasing quantization alphabet size improves security performance.
Optimal attack strategies significantly degrade inference accuracy.
Reputation-based schemes can mitigate Byzantine attack impacts.
Abstract
The problem of distributed inference with M-ary quantized data at the sensors is investigated in the presence of Byzantine attacks. We assume that the attacker does not have knowledge about either the true state of the phenomenon of interest, or the quantization thresholds used at the sensors. Therefore, the Byzantine nodes attack the inference network by modifying modifying the symbol corresponding to the quantized data to one of the other M symbols in the quantization alphabet-set and transmitting the false symbol to the fusion center (FC). In this paper, we find the optimal Byzantine attack that blinds any distributed inference network. As the quantization alphabet size increases, a tremendous improvement in the security performance of the distributed inference network is observed. We also investigate the problem of distributed inference in the presence of resource-constrained…
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Taxonomy
TopicsDistributed Sensor Networks and Detection Algorithms · Target Tracking and Data Fusion in Sensor Networks · Wireless Communication Security Techniques
