Enhancing Virtual Physically Unclonable Function Security through Neuron-Criticality Analysis and Lightweight Encryption

Read the full article See related articles

Listed in

This article is not in any list yet, why not save it to one of your lists.
Log in to save this article

Abstract

Physically Unclonable Functions (PUFs) have long been a key component of hardware-based device authentication. They rely on intrinsic manufacturing variability to give unique and tamper-resistant Identifiers for each silicon device. On the other hand, they have significant limitations, including high hardware overhead, aging degradation, and vulnerability to modeling and side-channel attacks. To address these restrictions, we previously presented Virtual Physically Unclonable Functions (VPUFs), a software-based solution that uses neural networks and split learning to improve scalability, flexibility, and deployment feasibility in resource-constrained Internet of Things (IoT) environments. Despite these advancements, VPUFs remain vulnerable to physical extraction and reverse engineering of the deployed model. In this paper, we present a lightweight, neuron-criticality-aware encryption framework that significantly enhances VPUF security. By conducting detailed ablation analysis, we identify the most critical neurons and selectively apply XOR-based encryption, minimizing computational overhead and preserving authentication accuracy. Coupled with a dynamic key generation mechanism based on Rayleigh fading through Jake’s model, our approach achieves up to 99.4% added security with microsecond-scale latency.

Article activity feed