Skip to main content

GRAVITAS: Graphical Reticulated Attack Vectors for Internet-of-Things Aggregate Security

Author(s): Brown, Jacob; Saha, Tanujay; Jha, Niraj K

To refer to this page use:
Abstract: Internet-of-Things (IoT) and cyber-physical systems (CPSs) may consist of thousands of devices connected in a complex network topology. The diversity and complexity of these components present an enormous attack surface, allowing an adversary to exploit security vulnerabilities of different devices to execute a potent attack. Though significant efforts have been made to improve the security of individual devices in these systems, little attention has been paid to security at the aggregate level. In this article, we describe a comprehensive risk management system, called GRAVITAS, for IoT/CPS that can identify undiscovered attack vectors and optimize the placement of defenses within the system for optimal performance and cost. While existing risk management systems consider only known attacks, our model employs a machine learning approach to extrapolate undiscovered exploits, enabling us to identify attacks overlooked by manual penetration testing (pen-testing). The model is flexible enough to analyze practically any IoT/CPS and provide the system administrator with a concrete list of suggested defenses that can reduce system vulnerability at optimal cost. GRAVITAS can be employed by governments, companies, and system administrators to design secure IoT/CPS at scale, providing a quantitative measure of security and efficiency in a world where IoT/CPS devices will soon be ubiquitous.
Publication Date: 25-May-2021
Citation: Brown, Jacob, Saha, Tanujay, Jha, Niraj K. (2022). GRAVITAS: Graphical Reticulated Attack Vectors for Internet-of-Things Aggregate Security. IEEE Transactions on Emerging Topics in Computing, 10 (3), 1331 - 1348. doi:10.1109/tetc.2021.3082525
DOI: doi:10.1109/tetc.2021.3082525
EISSN: 2168-6750
Pages: 1331 - 1348
Type of Material: Journal Article
Journal/Proceeding Title: IEEE Transactions on Emerging Topics in Computing
Version: Author's manuscript

Items in OAR@Princeton are protected by copyright, with all rights reserved, unless otherwise indicated.