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Zero-Trust Agentic Federated Learning for Secure IIoT Defense Systems

About

Recent attacks on critical infrastructure, including the 2021 Oldsmar water treatment breach and 2023 Danish energy sector compromises, highlight urgent security gaps in Industrial IoT (IIoT) deployments. While Federated Learning (FL) enables privacy-preserving collaborative intrusion detection, existing frameworks remain vulnerable to Byzantine poisoning attacks and lack robust agent authentication. We propose Zero-Trust Agentic Federated Learning (ZTA-FL), a defense in depth framework combining: (1) TPM-based cryptographic attestation achieving less than 0.0000001 false acceptance rate, (2) a novel SHAP-weighted aggregation algorithm providing explainable Byzantine detection under non-IID conditions with theoretical guarantees, and (3) privacy-preserving on-device adversarial training. Comprehensive experiments across three IDS benchmarks (Edge-IIoTset, CIC-IDS2017, UNSW-NB15) demonstrate that ZTA-FL achieves 97.8 percent detection accuracy, 93.2 percent accuracy under 30 percent Byzantine attacks (outperforming FLAME by 3.1 percent, p less than 0.01), and 89.3 percent adversarial robustness while reducing communication overhead by 34 percent. We provide theoretical analysis, failure mode characterization, and release code for reproducibility.

Samaresh Kumar Singh, Joyjit Roy, Martin So• 2025

Related benchmarks

TaskDatasetResultRank
Intrusion DetectionEdge-IIoTset
Accuracy97.2
84
Intrusion DetectionEdge-IIoTset (test)
Accuracy94.2
42
Intrusion DetectionUNSW-NB15 (test)
Accuracy (%)95.2
10
Federated Learning ClassificationEdge-IoT
Label Flip Accuracy93.2
7
Intrusion DetectionCIC-IDS 2017 (test)
Accuracy (%)96.4
6
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