TL;DR
This paper proposes a machine learning approach to efficiently form dynamic ensembles of components in smart system applications, overcoming scalability issues of traditional constraint programming methods.
Contribution
It introduces recasting ensemble formation as a classification problem, enabling scalable and adaptive ensemble creation in complex SSAs.
Findings
Machine learning enables scalable ensemble formation.
Traditional constraint methods do not scale well.
Proposed approach supports runtime self-adaptation.
Abstract
Smart system applications (SSAs) built on top of cyber-physical and socio-technical systems are increasingly composed of components that can work both autonomously and by cooperating with each other. Cooperating robots, fleets of cars and fleets of drones, emergency coordination systems are examples of SSAs. One approach to enable cooperation of SSAs is to form dynamic cooperation groups-ensembles-between components at runtime. Ensembles can be formed based on predefined rules that determine which components should be part of an ensemble based on their current state and the state of the environment (e.g., "group together 3 robots that are closer to the obstacle, their battery is sufficient and they would not be better used in another ensemble"). This is a computationally hard problem since all components are potential members of all possible ensembles at runtime. In our experience…
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