Decentralized and Asymmetric Multi-Agent Learning in Construction Sites
Yakov Miron, Dan Navon, Yuval Goldfracht, Dotan Di Castro, and Itzik, Klein

TL;DR
This paper introduces DAMALCS, a decentralized multi-agent learning approach for construction site vehicles, which reduces collisions and improves efficiency through prioritized coordination and AI training tested in simulations and real labs.
Contribution
It proposes a novel decentralized and asymmetric multi-agent learning framework specifically designed for construction vehicles, incorporating heuristic experts and prioritization to enhance collaboration.
Findings
Significantly reduces vehicle collision rates.
Improves operational efficiency in simulation and real-world tests.
Effective under noisy and uncertain conditions.
Abstract
Multi-agent collaboration involves multiple participants working together in a shared environment to achieve a common goal. These agents share information, divide tasks, and synchronize their actions. Key aspects of multi agent collaboration include coordination, communication, task allocation, cooperation, adaptation, and decentralization. On construction sites, surface grading is the process of leveling sand piles to increase a specific area's height. In this scenario, a bulldozer grades while a dumper allocates sand piles. Our work aims to utilize a multi-agent approach to enable these vehicles to collaborate effectively. To this end, we propose a decentralized and asymmetric multi-agent learning approach for construction sites (DAMALCS). We formulate DAMALCS to reduce expected collisions for operating vehicles. Therefore, we develop two heuristic experts capable of achieving their…
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