MLMSA: Multi-Label Multi-Side-Channel-Information enabled Deep Learning Attacks on APUF Variants

07/20/2022
by   Yansong Gao, et al.
0

To improve the modeling resilience of silicon strong physical unclonable functions (PUFs), in particular, the APUFs, that yield a very large number of challenge response pairs (CRPs), a number of composited APUF variants such as XOR-APUF, interpose-PUF (iPUF), feed-forward APUF (FF-APUF),and OAX-APUF have been devised. When examining their security in terms of modeling resilience, utilizing multiple information sources such as power side channel information (SCI) or/and reliability SCI given a challenge is under-explored, which poses a challenge to their supposed modeling resilience in practice. Building upon multi-label/head deep learning model architecture,this work proposes Multi-Label Multi-Side-channel-information enabled deep learning Attacks (MLMSA) to thoroughly evaluate the modeling resilience of aforementioned APUF variants. Despite its simplicity, MLMSA can successfully break large-scaled APUF variants, which has not previously been achieved. More precisely, the MLMSA breaks 128-stage 30-XOR-APUF, (9, 9)- and (2, 18)-iPUFs, and (2, 2, 30)-OAX-APUF when CRPs, power SCI and reliability SCI are concurrently used. It breaks 128-stage 12-XOR-APUF and (2, 2, 9)-OAX-APUF even when only the easy-to-obtain reliability SCI and CRPs are exploited. The 128-stage six-loop FF-APUF and one-loop 20-XOR-FF-APUF can be broken by simultaneously using reliability SCI and CRPs. All these attacks are normally completed within an hour with a standard personalcomputer. Therefore, MLMSA is a useful technique for evaluating other existing or any emerging strong PUF designs.

READ FULL TEXT
research
03/29/2022

Systematically Evaluation of Challenge Obfuscated APUFs

As a well-known physical unclonable function that can provide huge numbe...
research
10/03/2021

Design and Evaluate Recomposited OR-AND-XOR-PUF

Physical Unclonable Function (PUF) is a hardware security primitive with...
research
11/23/2020

The Emerging Trends of Multi-Label Learning

Exabytes of data are generated daily by humans, leading to the growing n...
research
05/19/2020

Assertion Detection in Multi-Label Clinical Text using Scope Localization

Multi-label sentences (text) in the clinical domain result from the rich...
research
07/31/2021

T_kML-AP: Adversarial Attacks to Top-k Multi-Label Learning

Top-k multi-label learning, which returns the top-k predicted labels fro...
research
06/18/2023

Semi-Supervised Learning for Multi-Label Cardiovascular Diseases Prediction:A Multi-Dataset Study

Electrocardiography (ECG) is a non-invasive tool for predicting cardiova...
research
12/08/2021

On the Use of Unrealistic Predictions in Hundreds of Papers Evaluating Graph Representations

Prediction using the ground truth sounds like an oxymoron in machine lea...

Please sign up or login with your details

Forgot password? Click here to reset