Fatigue-Aware Sub-Second Combinatorial Auctions for Dynamic Cycle Allocation in Human-Robot Collaborative Assembly

Abstract

Problem: Existing Human-Robot Collaboration (HRC) allocators cannot react at a sub-second scale while accounting for worker fatigue. Objective: We designed a fatigue-aware combinatorial auction executed every 100 ms. Method: A human and a FANUC robot submit bids combining execution time, predicted energy, and real-time fatigue; a greedy algorithm (<= 1 ms) with a 1-1/e approximation guarantee and O (|Bids| log |Bids|) complexity maximizes utility. Results: In 1000 RoboDK episodes, the framework increases active cycles.min(-1) by 20%, improves robot utilization by +10.2 percentage points, reduces per cycle fatigue by 4%, and raises the collision-free rate to 99.85% versus a static baseline (p < 0.001). Contribution: We provide the first transparent, sub-second, fatigue-aware allocation mechanism for Industry 5.0, with quantified privacy safeguards and a roadmap for physical deployment. Unlike prior auction-based or reinforcement learning approaches, our model uniquely integrates a sub-second ergonomic adaptation with a mathematically interpretable utility structure, ensuring both human-centered responsiveness and system-level transparency.

Más información

Título según WOS: ID WOS:001551063900001 Not found in local WOS DB
Título de la Revista: MATHEMATICS
Volumen: 13
Número: 15
Editorial: MDPI
Fecha de publicación: 2025
DOI:

10.3390/math13152429

Notas: ISI