학술논문

On the Feasibility of using Machine Learning for an Enhanced Physical Security of Embedded Devices
Document Type
Conference
Source
2022 2nd International Conference of Smart Systems and Emerging Technologies (SMARTTECH) SMARTTECH Smart Systems and Emerging Technologies (SMARTTECH), 2022 2nd International Conference of. :206-211 May, 2022
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Robotics and Control Systems
Signal Processing and Analysis
Transportation
Temperature distribution
Machine learning algorithms
Systematics
Prototypes
Machine learning
Silicon
Behavioral sciences
Machine Learning
Physical Attacks
Hardware Security
Language
Abstract
The attack surface on computing devices is becoming very sophisticated, driven by the sheer increase of interconnected devices, reaching 50B in 2025, which makes it easier for adversaries to have direct access and perform well-known physical attacks. The impact of increased security vulnerability of electronic systems is exacerbated for devices that are part of the critical infrastructure or those used in military applications, where the likelihood of being targeted is very high. This continuously evolving landscape of security threats, calls for a new generation of defense methods that are equally effective and adaptive. This paper proposes an intelligent defense mechanism to protect from physical tampering, it consists of a tamper detection system enhanced with machine learning capabilities, which allows it to recognize normal operating conditions, classify known physical attacks and identify new types of malicious behaviors. A prototype of the proposed system has been implemented and its functionality has been successfully verified for two types of normal operating conditions and further four forms of physical attacks. In addition, a systematic threat modeling analysis and security validation was carried out, which indicated the proposed solution provides better protection against including information leakage, loss of data, and disruption of operation.