Affiliation:
1. Katholieke Universiteit Leuven Belgium, Linnaeus University Sweden, Belgium
Abstract
Self-adaptation equips a computing system with a feedback loop that enables it to deal with change caused by uncertainties during operation, such as changing availability of resources and fluctuating workloads. To ensure that the system complies with the adaptation goals, recent research suggests the use of formal techniques at runtime. Yet, existing approaches have three limitations that affect their practical applicability: (i) they ignore correctness of the behavior of the feedback loop, (ii) they rely on exhaustive verification at runtime to select adaptation options to realize the adaptation goals, which is time- and resource-demanding, and (iii) they provide limited or no support for changing adaptation goals at runtime. To tackle these shortcomings, we present ActivFORMS (Active FORmal Models for Self-adaptation). ActivFORMS contributes an end-to-end approach for engineering self-adaptive systems, spanning four main stages of the life cycle of a feedback loop: design, deployment, runtime adaptation, and evolution. We also present ActivFORMS-ta, a tool-supported instance of ActivFORMS that leverages timed automata models and statistical model checking at runtime. We validate the research results using an IoT application for building security monitoring that is deployed in Leuven. The experimental results demonstrate that ActivFORMS supports correctness of the behavior of the feedback loop, achieves the adaptation goals in an efficient way, and supports changing adaptation goals at runtime.
Publisher
Association for Computing Machinery (ACM)
Cited by
21 articles.
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1. Adaptive Industrial Control Systems via IEC 61499 and Runtime Enforcement;ACM Transactions on Autonomous and Adaptive Systems;2024-08-31
2. Generative AI for Self-Adaptive Systems: State of the Art and Research Roadmap;ACM Transactions on Autonomous and Adaptive Systems;2024-08-20
3. Self-Adaptive System Implementation Framework Considering Execution Time Uncertainty;2024 IEEE 48th Annual Computers, Software, and Applications Conference (COMPSAC);2024-07-02
4. Formal Synthesis of Uncertainty Reduction Controllers;Proceedings of the 19th International Symposium on Software Engineering for Adaptive and Self-Managing Systems;2024-04-15
5. A Proactive Self-Adaptation Approach Based on Ensemble Prediction for Service-Based Systems;Journal of Circuits, Systems and Computers;2024-03-14