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STAR-TRANS Modeling Language: Risk Modeling in the STAR-TRANS Risk Assessment Framework
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Author(s): Dimitris Zisiadis (Centre for Research & Technology Hellas (CERTH), Thessaloniki, Greece), George Thanos (Centre for Research & Technology Hellas (CERTH), Thessaloniki, Greece), Spyros Kopsidas (Centre for Research & Technology Hellas (CERTH), Thessaloniki, Greece)and George Leventakis (Center for Security Studies (KEMEA), Athens, Greece)
Copyright: 2013
Volume: 5
Issue: 2
Pages: 15
Source title:
International Journal of Information Systems for Crisis Response and Management (IJISCRAM)
Editor(s)-in-Chief: Víctor Amadeo Bañuls Silvera (Universidad Pablo de Olavide, Spain)and Murray E. Jennex (San Diego State University, USA)
DOI: 10.4018/jiscrm.2013040104
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Abstract
Transportation networks are open and accessible, by design, and thus vulnerable to malicious attacks. Transportation networks are integral parts of larger systems, where individual transportation networks form a network-of-networks within a defined geographical region. A security incident on an asset can propagate to new security incidents in interconnected assets of the same or different networks, resulting in cascading failures in the overall network-of-networks. The present work introduces the STAR-TRANS Modeling Language (STML) and provides a reference implementation case. STML is a feature-rich, domain specific, high-level modeling language, capable of expressing the concepts and processes of the Strategic Risk Assessment and Contingency Planning in Interconnected Transportation Networks (STAR- TRANS) framework. STAR-TRANS is a comprehensive transportation security risk assessment framework for assessing related risks that provides cohered contingency management procedures for interconnected, interdependent and heterogeneous transport networks. STML has been used to produce the STAR-TRANS Impact Assessment Tool.
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