Foresee and Act Ahead: Task Prediction and Pre-Scheduling Enabled Efficient Robotic Warehousing

Published: 2025, Last Modified: 05 Nov 2025ICRA 2025EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: In warehousing systems, to enhance efficiency amid surging demand volumes, much attention has been placed on how to reasonably allocate tasks of delivery to robots. However, the labor of robots is still inevitably wasted to some extent. In this paper, we propose a pre-scheduling enhanced warehousing framework aiming to foresee and act in advance, which consists of task flow prediction and hybrid task allocation. For task prediction, we design the spatio-temporal representations of the task flow and introduce a periodicity-decoupled mechanism tailored for the generation patterns of aggregated orders, and then further extract spatial features of task distribution with a novel combination of graph structures. In hybrid tasks allocation, we consider the known tasks and predicted future tasks simultaneously to optimize the task allocation. In addition, we consider factors such as predicted task uncertainty and sector-level efficiency to realize more balanced and rational allocations. We validate our task prediction model across datasets derived from factories, achieving SOTA performance. Furthermore, we implement our system in a real-world robotic warehouse, demonstrating more than 30% improvements in efficiency.
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