Dynamic AGV Task Allocation in Intelligent Warehouses
Arash Dehghan, Mucahit Cevik, Merve Bodur

TL;DR
This paper presents a neural approximate dynamic programming method to optimize task allocation for mixed human-AGV teams in warehouses, improving efficiency and throughput in hybrid operational environments.
Contribution
It introduces a novel neural approximate dynamic programming approach for coordinating human and AGV workers, addressing a research gap in hybrid warehouse optimization.
Findings
Enhanced order throughput in simulated hybrid warehouse scenarios
Effective coordination strategies for human-AGV teams
Insights into battery management and order batching
Abstract
This paper explores the integration of Automated Guided Vehicles (AGVs) in warehouse order picking, a crucial and cost-intensive aspect of warehouse operations. The booming AGV industry, accelerated by the COVID-19 pandemic, is witnessing widespread adoption due to its efficiency, reliability, and cost-effectiveness in automating warehouse tasks. This paper focuses on enhancing the picker-to-parts system, prevalent in small to medium-sized warehouses, through the strategic use of AGVs. We discuss the benefits and applications of AGVs in various warehouse tasks, highlighting their transformative potential in improving operational efficiency. We examine the deployment of AGVs by leading companies in the industry, showcasing their varied functionalities in warehouse management. Addressing the gap in research on optimizing operational performance in hybrid environments where humans and AGVs…
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Taxonomy
TopicsAdvanced Manufacturing and Logistics Optimization · Elevator Systems and Control · Assembly Line Balancing Optimization
