Enhancing Human-in-the-Loop Adaptive Systems through Digital Twins and VR Interfaces
Enes Yigitbas, Kadiray Karakaya, Ivan Jovanovikj, Gregor Engels

TL;DR
This paper explores enhancing human-in-the-loop adaptive systems by integrating digital twins and VR interfaces to improve transparency and controllability, enabling immersive human involvement in decision-making and system adaptation.
Contribution
It introduces a novel approach combining digital twins and VR to support transparent and controllable human-in-the-loop adaptation strategies, including procedural and declarative control methods.
Findings
VR interface enables immersive human involvement in system control
Digital twin representation improves transparency of system context
Both control strategies are effective in an autonomic robot system
Abstract
Self-adaptation approaches usually rely on closed-loop controllers that avoid human intervention from adaptation. While such fully automated approaches have proven successful in many application domains, there are situations where human involvement in the adaptation process is beneficial or even necessary. For such "human-in-the-loop" adaptive systems, two major challenges, namely transparency and controllability, have to be addressed to include the human in the self-adaptation loop. Transparency means that relevant context information about the adaptive systems and its context is represented based on a digital twin enabling the human an immersive and realistic view. Concerning controllability, the decision-making and adaptation operations should be managed in a natural and interactive way. As existing human-in-the-loop adaptation approaches do not fully cover these aspects, we…
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