A Novel Approach to Determining Real-Time Risk Probabilities in Critical Infrastructure Industrial Control Systems

Critical Infrastructure Industrial Control Systems are substantially different from their more common and ubiquitous information technology system counterparts. Industrial control systems, such as distributed control systems and supervisory control and data acquisition systems that are used for cont...

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Main Author: Elrod, Michael
Format: Others
Published: NSUWorks 2017
Subjects:
ICS
Online Access:http://nsuworks.nova.edu/gscis_etd/1006
http://nsuworks.nova.edu/cgi/viewcontent.cgi?article=2001&context=gscis_etd
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spelling ndltd-nova.edu-oai-nsuworks.nova.edu-gscis_etd-20012017-06-07T16:06:55Z A Novel Approach to Determining Real-Time Risk Probabilities in Critical Infrastructure Industrial Control Systems Elrod, Michael Critical Infrastructure Industrial Control Systems are substantially different from their more common and ubiquitous information technology system counterparts. Industrial control systems, such as distributed control systems and supervisory control and data acquisition systems that are used for controlling the power grid, were not originally designed with security in mind. Geographically dispersed distribution, an unfortunate reliance on legacy systems and stringent availability requirements raise significant cybersecurity concerns regarding electric reliability while constricting the feasibility of many security controls. Recent North American Electric Reliability Corporation Critical Infrastructure Protection standards heavily emphasize cybersecurity concerns and specifically require entities to categorize and identify their Bulk Electric System cyber systems; and, have periodic vulnerability assessments performed on those systems. These concerns have produced an increase in the need for more Critical Infrastructure Industrial Control Systems specific cybersecurity research. Industry stakeholders have embraced the development of a large-scale test environment through the Department of Energy’s National Supervisory Control and Data Acquisition Test-bed program; however, few individuals have access to this program. This research developed a physical industrial control system test-bed on a smaller-scale that provided an environment for modeling a simulated critical infrastructure sector performing a set of automated processes for the purpose of exploring solutions and studying concepts related to compromising control systems by way of process-tampering through code exploitation, as well as, the ability to passively and subsequently identify any risks resulting from such an event. Relative to the specific step being performed within a production cycle, at a moment in time when sensory data samples were captured and analyzed, it was possible to determine the probability of a real-time risk to a mock Critical Infrastructure Industrial Control System by comparing the sample values to those derived from a previously established baseline. This research achieved such a goal by implementing a passive, spatial and task-based segregated sensor network, running in parallel to the active control system process for monitoring and detecting risk, and effectively identified a real-time risk probability within a Critical Infrastructure Industrial Control System Test-bed. The practicality of this research ranges from determining on-demand real-time risk probabilities during an automated process, to employing baseline monitoring techniques for discovering systems, or components thereof, exploited along the supply chain. 2017-01-01T08:00:00Z text application/pdf http://nsuworks.nova.edu/gscis_etd/1006 http://nsuworks.nova.edu/cgi/viewcontent.cgi?article=2001&context=gscis_etd CEC Theses and Dissertations NSUWorks Critical Infrastructure Security ICS ICS test-bed Industrial Control Systems Parallel Risk Monitoring Risk Assessment Methodology Computer Sciences
collection NDLTD
format Others
sources NDLTD
topic Critical Infrastructure Security
ICS
ICS test-bed
Industrial Control Systems
Parallel Risk Monitoring
Risk Assessment Methodology
Computer Sciences
spellingShingle Critical Infrastructure Security
ICS
ICS test-bed
Industrial Control Systems
Parallel Risk Monitoring
Risk Assessment Methodology
Computer Sciences
Elrod, Michael
A Novel Approach to Determining Real-Time Risk Probabilities in Critical Infrastructure Industrial Control Systems
description Critical Infrastructure Industrial Control Systems are substantially different from their more common and ubiquitous information technology system counterparts. Industrial control systems, such as distributed control systems and supervisory control and data acquisition systems that are used for controlling the power grid, were not originally designed with security in mind. Geographically dispersed distribution, an unfortunate reliance on legacy systems and stringent availability requirements raise significant cybersecurity concerns regarding electric reliability while constricting the feasibility of many security controls. Recent North American Electric Reliability Corporation Critical Infrastructure Protection standards heavily emphasize cybersecurity concerns and specifically require entities to categorize and identify their Bulk Electric System cyber systems; and, have periodic vulnerability assessments performed on those systems. These concerns have produced an increase in the need for more Critical Infrastructure Industrial Control Systems specific cybersecurity research. Industry stakeholders have embraced the development of a large-scale test environment through the Department of Energy’s National Supervisory Control and Data Acquisition Test-bed program; however, few individuals have access to this program. This research developed a physical industrial control system test-bed on a smaller-scale that provided an environment for modeling a simulated critical infrastructure sector performing a set of automated processes for the purpose of exploring solutions and studying concepts related to compromising control systems by way of process-tampering through code exploitation, as well as, the ability to passively and subsequently identify any risks resulting from such an event. Relative to the specific step being performed within a production cycle, at a moment in time when sensory data samples were captured and analyzed, it was possible to determine the probability of a real-time risk to a mock Critical Infrastructure Industrial Control System by comparing the sample values to those derived from a previously established baseline. This research achieved such a goal by implementing a passive, spatial and task-based segregated sensor network, running in parallel to the active control system process for monitoring and detecting risk, and effectively identified a real-time risk probability within a Critical Infrastructure Industrial Control System Test-bed. The practicality of this research ranges from determining on-demand real-time risk probabilities during an automated process, to employing baseline monitoring techniques for discovering systems, or components thereof, exploited along the supply chain.
author Elrod, Michael
author_facet Elrod, Michael
author_sort Elrod, Michael
title A Novel Approach to Determining Real-Time Risk Probabilities in Critical Infrastructure Industrial Control Systems
title_short A Novel Approach to Determining Real-Time Risk Probabilities in Critical Infrastructure Industrial Control Systems
title_full A Novel Approach to Determining Real-Time Risk Probabilities in Critical Infrastructure Industrial Control Systems
title_fullStr A Novel Approach to Determining Real-Time Risk Probabilities in Critical Infrastructure Industrial Control Systems
title_full_unstemmed A Novel Approach to Determining Real-Time Risk Probabilities in Critical Infrastructure Industrial Control Systems
title_sort novel approach to determining real-time risk probabilities in critical infrastructure industrial control systems
publisher NSUWorks
publishDate 2017
url http://nsuworks.nova.edu/gscis_etd/1006
http://nsuworks.nova.edu/cgi/viewcontent.cgi?article=2001&context=gscis_etd
work_keys_str_mv AT elrodmichael anovelapproachtodeterminingrealtimeriskprobabilitiesincriticalinfrastructureindustrialcontrolsystems
AT elrodmichael novelapproachtodeterminingrealtimeriskprobabilitiesincriticalinfrastructureindustrialcontrolsystems
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