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Auteurs principaux: Vogel, Elisabeth, Langendörfer, Peter
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2511.17017
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author Vogel, Elisabeth
Langendörfer, Peter
author_facet Vogel, Elisabeth
Langendörfer, Peter
contents Cyber-physical systems of systems (CPSoS) are highly complex, dynamic environments in which technical, cybernetic and organisational subsystems interact closely with one another. Dynamic, continuously adaptable resilience is required to ensure their functionality under variable conditions. However, existing resilience architectures usually only deal with adaptation implicitly and thus remain predominantly static. This paper addresses this gap by introducing a new Adaptive Coordination Layer (ACL) and conceptually redefining the Adaptation & Learning Layer (AL). The ACL acts as an operational control layer that detects risks in real time, prioritises countermeasures and coordinates them dynamically. The AL is reinterpreted as a strategic-cooperative layer that evaluates the operational decisions of the ACL, learns from them, and derives long-term adjustments at the policy, governance, and architecture levels. Together, both layers operationalise the resilience principle of adaptation and combine short-term responsiveness with long-term learning and development capabilities. The paper describes various implementation variants of both levels - from rule-based and KPI-driven approaches to AI-supported and meta-learning mechanisms - and shows how these can be combined depending on system complexity, data availability and degree of regulation. The proposed architecture model no longer understands resilience as a static system property, but as a continuous, data-driven process of mutual coordination and systemic learning. This creates a methodological basis for the next generation of adaptive and resilient CPSoS.
format Preprint
id arxiv_https___arxiv_org_abs_2511_17017
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Continuous Resilience in Cyber-Physical Systems of Systems: Extending Architectural Models through Adaptive Coordination and Learning
Vogel, Elisabeth
Langendörfer, Peter
Systems and Control
Cyber-physical systems of systems (CPSoS) are highly complex, dynamic environments in which technical, cybernetic and organisational subsystems interact closely with one another. Dynamic, continuously adaptable resilience is required to ensure their functionality under variable conditions. However, existing resilience architectures usually only deal with adaptation implicitly and thus remain predominantly static. This paper addresses this gap by introducing a new Adaptive Coordination Layer (ACL) and conceptually redefining the Adaptation & Learning Layer (AL). The ACL acts as an operational control layer that detects risks in real time, prioritises countermeasures and coordinates them dynamically. The AL is reinterpreted as a strategic-cooperative layer that evaluates the operational decisions of the ACL, learns from them, and derives long-term adjustments at the policy, governance, and architecture levels. Together, both layers operationalise the resilience principle of adaptation and combine short-term responsiveness with long-term learning and development capabilities. The paper describes various implementation variants of both levels - from rule-based and KPI-driven approaches to AI-supported and meta-learning mechanisms - and shows how these can be combined depending on system complexity, data availability and degree of regulation. The proposed architecture model no longer understands resilience as a static system property, but as a continuous, data-driven process of mutual coordination and systemic learning. This creates a methodological basis for the next generation of adaptive and resilient CPSoS.
title Continuous Resilience in Cyber-Physical Systems of Systems: Extending Architectural Models through Adaptive Coordination and Learning
topic Systems and Control
url https://arxiv.org/abs/2511.17017