WP7 – Security and Privacy Claims
Coordinated by
UMU (M01-M12)
Objective
The main objective of this work package is to develop a security certification methodology combining risk assessment and testing to evaluate a system over a series of security and privacy claims based on objective metrics, allowing harmonisation and mutual recognition based on evidence that quantify the level of trust.
The specific goals of WP7 are to:
- Identify suitable security and privacy metrics and claims to evaluate the security and privacy of a system
- Develop a security certification methodology using the identified security and privacy metrics and claims.
Deliverables
- D7.1 Report on the identified security and privacy metrics and security claims to evaluate the security of a system WP7 (6 – UMU) Report Public M12
- D7.2 Security certification methodology definition WP7 (6 – UMU) Report Public M18
- D7.3 Security certification methodology development WP7 (6 – UMU) Report Public M24
Outcomes
Fail-operation clock synchronization methodology
MENTORS – Monitoring Environment for System of Systems
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