Crossed-IoT device portability of Electromagnetic Side Channel Analysis: Challenges and Dataset
Tharindu Lakshan Yasarathna, Lojenaa Navanesan, Simon Barque, Assanka, Sayakkara, Nhien-An Le-Khac

TL;DR
This paper investigates the challenges of electromagnetic side-channel analysis (EM-SCA) across different IoT devices, highlighting device variability issues, and introduces a new dataset and transfer learning approach to improve analysis reliability.
Contribution
It provides an empirical analysis of EM-SCA limitations on crossed-IoT devices, especially addressing multi-core processor effects, and introduces a new dataset and transfer learning method for better analysis.
Findings
Device variability significantly affects EM-SCA accuracy.
Transfer learning improves EM-SCA results across devices.
New dataset supports deep learning in IoT forensics.
Abstract
IoT (Internet of Things) refers to the network of interconnected physical devices, vehicles, home appliances, and other items embedded with sensors, software, and connectivity, enabling them to collect and exchange data. IoT Forensics is collecting and analyzing digital evidence from IoT devices to investigate cybercrimes, security breaches, and other malicious activities that may have taken place on these connected devices. In particular, EM-SCA has become an essential tool for IoT forensics due to its ability to reveal confidential information about the internal workings of IoT devices without interfering these devices or wiretapping their networks. However, the accuracy and reliability of EM-SCA results can be limited by device variability, environmental factors, and data collection and processing methods. Besides, there is very few research on these limitations that affects…
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Taxonomy
TopicsDigital Media Forensic Detection · Electrostatic Discharge in Electronics · Cryptographic Implementations and Security
