Terraforming -- Environment Manipulation during Disruptions for Multi-Agent Pickup and Delivery
David Vainshtein, Yaakov Sherma, Kiril Solovey, Oren Salzman

TL;DR
This paper introduces Terraforming MAPD (tMAPD), a flexible multi-agent pickup and delivery approach that manipulates pods to improve warehouse efficiency during disruptions, achieving significant throughput and service time improvements.
Contribution
It proposes a novel tMAPD problem allowing dynamic pod relocation, and develops an RHCR-based method to enhance warehouse operations during disruptions.
Findings
Over 10% throughput increase in warehouse simulations
More than 50% reduction in maximum service time
Maintains computational efficiency despite added flexibility
Abstract
In automated warehouses, teams of mobile robots fulfill the packaging process by transferring inventory pods to designated workstations while navigating narrow aisles formed by tightly packed pods. This problem is typically modeled as a Multi-Agent Pickup and Delivery (MAPD) problem, which is then solved by repeatedly planning collision-free paths for agents on a fixed graph, as in the Rolling-Horizon Collision Resolution (RHCR) algorithm. However, existing approaches make the limiting assumption that agents are only allowed to move pods that correspond to their current task, while considering the other pods as stationary obstacles (even though all pods are movable). This behavior can result in unnecessarily long paths which could otherwise be avoided by opening additional corridors via pod manipulation. To this end, we explore the implications of allowing agents the flexibility of…
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Taxonomy
TopicsOptimization and Search Problems · Advanced Manufacturing and Logistics Optimization · Modular Robots and Swarm Intelligence
Methodstravel james
