TL;DR
This paper introduces interoception-based adaptive control for autonomous mobile robots in construction, integrating internal state awareness with shared human-robot control to enhance flexibility and collaboration.
Contribution
It proposes a novel interoception framework for AMRs, combining neuroscience, reinforcement learning, and shared control to improve adaptability and collaborative construction tasks.
Findings
Effective multi-robot path planning in simulation
Velocity profile replication for synchronization
Enhanced adaptability in dynamic environments
Abstract
Building autonomous mobile robots (AMRs) with optimized efficiency and adaptive capabilities-able to respond to changing task demands and dynamic environments-is a strongly desired goal for advancing construction robotics. Such robots can play a critical role in enabling automation, reducing operational carbon footprints, and supporting modular construction processes. Inspired by the adaptive autonomy of living organisms, we introduce interoception, which centers on the robot's internal state representation, as a foundation for developing self-reflection and conscious learning to enable continual learning and adaptability in robotic agents. In this paper, we factorize internal state variables and mathematical properties as "cognitive dissonance" in shared control paradigms, where human interventions occasionally occur. We offer a new perspective on how interoception can help build…
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