Green Resilience of Cyber-Physical Systems: Doctoral Dissertation
Diaeddin Rimawi

TL;DR
This dissertation develops models, metrics, and policies to enhance the resilience and environmental sustainability of online collaborative AI systems during disruptions.
Contribution
It introduces the GResilience framework and policies that optimize the trade-off between resilience and greenness in cyber-physical systems.
Findings
Resilience model effectively captures performance changes during disruptions.
GResilience policies improve recovery speed and stability while reducing human dependency.
Reinforcement learning policies achieve strong results with slight increases in CO2 emissions.
Abstract
Cyber-physical systems (CPS) combine computational and physical components. Online Collaborative AI System (OL-CAIS) is a type of CPS that learn online in collaboration with humans to achieve a common goal, which makes it vulnerable to disruptive events that degrade performance. Decision-makers must therefore restore performance while limiting energy impact, creating a trade-off between resilience and greenness. This research addresses how to balance these two properties in OL-CAIS. It aims to model resilience for automatic state detection, develop agent-based policies that optimize the greenness-resilience trade-off, and understand catastrophic forgetting to maintain performance consistency. We model OL-CAIS behavior through three operational states: steady, disruptive, and final. To support recovery during disruptions, we introduce the GResilience framework, which provides recovery…
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Taxonomy
TopicsSmart Grid Security and Resilience · Infrastructure Resilience and Vulnerability Analysis · Reinforcement Learning in Robotics
