Design of a Novel Information System for Semi-automated Management of Cybersecurity in Industrial Control Systems

Author:

Ameri Kimia1ORCID,Hempel Michael1ORCID,Sharif Hamid1ORCID,Lopez Juan2ORCID,Perumalla Kalyan2ORCID

Affiliation:

1. Department of Electrical & Computer Engineering, University of Nebraska-Lincoln, Omaha NE, USA

2. Oak Ridge National Laboratory, Oak Ridge TN, USA

Abstract

There is an urgent need in many critical infrastructure sectors, including the energy sector, for attaining detailed insights into cybersecurity features and compliance with cybersecurity requirements related to their Operational Technology (OT) deployments. Frequent feature changes of OT devices interfere with this need, posing a great risk to customers. One effective way to address this challenge is via a semi-automated cyber-physical security assurance approach, which enables verification and validation of the OT device cybersecurity claims against actual capabilities, both pre- and post-deployment. To realize this approach, this article presents new methodology and algorithms to automatically identify cybersecurity-related claims expressed in natural language form in ICS device documents. We developed an identification process that employs natural language processing (NLP) techniques with the goal of semi-automated vetting of detected claims against their device implementation. We also present our novel NLP components for verifying feature claims against relevant cybersecurity requirements. The verification pipeline includes components such as automated vendor identification, device document curation, feature claim identification utilizing sentiment analysis for conflict resolution, and reporting of features that are claimed to be supported or indicated as unsupported. Our novel matching engine represents the first automated information system available in the cybersecurity domain that directly aids the generation of ICS compliance reports.

Funder

U.S. Dept of Energy through a subcontract from Oak Ridge National Laboratory

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science,Management Information Systems

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