Considerations, Advances, and Challenges Associated with the Use of Specific Emitter Identification in the Security of Internet of Things Deployments: A Survey

Author:

Tyler Joshua H.1ORCID,Fadul Mohamed K. M.1,Reising Donald R.1ORCID

Affiliation:

1. Electrical Engineering Department, College of Engineering & Computer Science, The University of Tennessee at Chattanooga, Chattanooga, TN 37403, USA

Abstract

Initially introduced almost thirty years ago for the express purpose of providing electronic warfare systems the capabilities to detect, characterize, and identify radar emitters, Specific Emitter Identification (SEI) has recently received a lot of attention within the research community as a physical layer technique for securing Internet of Things (IoT) deployments. This attention is largely due to SEI’s demonstrated success in passively and uniquely identifying wireless emitters using traditional machine learning and the success of Deep Learning (DL) within the natural language processing and computer vision areas. SEI exploits distinct and unintentional features present within an emitter’s transmitted signals. These distinctive and unintentional features are attributed to slight manufacturing and assembly variations within and between the components, sub-systems, and systems comprising an emitter’s Radio Frequency (RF) front end. Although sufficient to facilitate SEI, these features do not hinder normal operations such as detection, channel estimation, timing, and demodulation. However, despite the plethora of SEI publications, it has remained largely a focus of academic endeavors, primarily focusing on proof-of-concept demonstration and little to no use in operational networks for various reasons. The focus of this survey is a review of SEI publications from the perspective of its use as a practical, effective, and usable IoT security mechanism; thus, we use IoT requirements and constraints (e.g., wireless standard, nature of their deployment) as a lens through which each reviewed paper is analyzed. Previous surveys have not taken such an approach and have only used IoT as motivation, a setting, or a context. In this survey, we consider operating conditions, SEI threats, SEI at scale, publicly available data sets, and SEI considerations that are dictated by the fact that it is to be employed by IoT devices or IoT infrastructure.

Funder

Tennessee Higher Education Commission (THEC) through the Center of Excellence in Applied Computational Science and Engineering

Publisher

MDPI AG

Subject

Information Systems

Reference196 articles.

1. Department of Defense (DoD), United States (2018, June 14). DoD Policy Recommendations for the Internet of Things (IoT). Available online: https://www.hsdl.org/?view&did=799676.

2. Gartner Research (2018, June 15). Gartner Says 6.4 Billion Connected “Things” Will Be in Use in 2016, Up 30 Percent from 2015. Available online: https://www.gartner.com/en/newsroom/press-releases/2015-11-10-gartner-says-6-billion-connected-things-will-be-in-use-in-2016-up-30-percent-from-2015#:~:text=Gartner%2C%20Inc.,will%20get%20connected%20every%20day.

3. Juniper Research (2021, July 23). ‘Internet of Things’ Connected Devices to Triple by 2021, Reaching Over 46 Billion Units. Available online: https://www.juniperresearch.com/press/internet-of-things-connected-devices-triple-2021.

4. Statista (2020, May 12). Internet of Things (IoT) Connected Devices Installed Base Worldwide from 2015 to 2025 (in Billions). Available online: https://www.statista.com/statistics/471264/iot-number-of-connected-devices-worldwide/.

5. Rawlinson, K. (2020, May 12). Hp Study Reveals 70 Percent of Internet of Things Devices Vulnerable to Attack. [Online]. Available online: https://www8.hp.com/us/en/hp-news/press-release.html?id=1744676.

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