Auction-Based Task Allocation with Energy-Conscientious Trajectory Optimization for AMR Fleets
arXiv cs.RO / 3/24/2026
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Key Points
- The paper introduces a hierarchical two-stage approach for AMR fleets that combines sequential auction-based task allocation with per-robot optimal-control trajectory optimization targeting energy-minimal motion under a physics-based battery model.
- Collision avoidance is handled via an additional refinement step that applies pairwise proximity penalties after the energy-optimal trajectories are computed.
- An event-triggered warm-start rescheduling strategy updates allocations and trajectories within bounded trigger frequency to respond to robot faults, priority arrivals, and energy deviations efficiently.
- Experiments across 505 scenarios (2–20 robots, up to 100 tasks, three factory layouts) show that auction-based energy and distance variants achieve an average 11.8% energy savings versus nearest-task allocation while keeping rescheduling latency under 10 ms.
- Bid performance depends on operating regime: in near-uniform workspaces distance bids outperform energy bids due to bid-ranking degradation from approximation error, while in sufficiently heterogeneous friction settings a zone-aware energy bid yields 2–2.4% improvements over distance bids, guiding practitioners on when to use each bidding metric.
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