(AGENPARL) - Roma, 20 Marzo 2026 -
ePrint Report: Exploring the Boundary: Discriminative Model-based Parameter Search for Fault Injection
Ju-Hwan Kim, Dong-Guk Han
Fault Injection (FI) attacks are physical attacks designed to induce specific malfunctions in target devices. The reliable induction of intended faults requires precise tuning of fault parameters. However, existing parameter search strategies typically suffer from an imbalance between exploration and exploitation. This limitation frequently leads to premature convergence to local optima or inadequate investigation of high-potential regions. In this paper, we propose a novel parameter search framework that employs an ensemble of discriminative models to efficiently generate parameter candidates with high success probabilities. Our approach integrates a regression model to explore the boundary between normal and mute verdicts-leveraging the boundary hypothesis-and a classification model to exploit discovered intended fault samples. Furthermore, we introduce the Refining Successive Halving Algorithm (RSHA) to efficiently identify the global optimum among the discovered fault parameters with statistical confidence. Extensive validation across eight scenarios, involving Voltage Glitching (VG) and Electromagnetic Fault Injection (EMFI), demonstrates that our method consistently outperforms state-of-the-art techniques. Specifically, it identifies up to $42.2times$ more unique intended fault parameters and improves success rates by up to 20.3 percentage points compared to the best-performing baseline.
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