Logo image
Operational policies and performance analysis for overhead robotic compact warehousing systems with bin reshuffling
Journal article   Peer reviewed

Operational policies and performance analysis for overhead robotic compact warehousing systems with bin reshuffling

Rong Wang, Peng Yang, Yeming Gong and Cheng Chen
International Journal of Production Research, Vol.62(14), pp.5236-5251
17/07/2024

Abstract

Facility logistics robotic warehouse performance evaluation queuing machine learning
This paper studies a novel robotic warehousing system called the overhead robotic compact storage and retrieval system, which can free up the floor space occupation at a low cost. Bins, as basic storage containers, are stacked on top of each other to form a bin stack. Along overhead tracks, bin-picking robots transport bins between storage/retrieval positions and workstations with the aid of track-changing robots. Little research has been done to study operational policies and performance analysis for this new robotic compact warehousing system. We propose a nested queuing network model that considers two transportation resources and performs reinforcement learning using real data to improve the reshuffling efficiency. We find that reinforcement learning based reshuffling policy greatly reduces the reshuffling distance and saves computation time compared to existing policies. We find that the storage policy of stacks affects the optimal width/length ratio regardless of the system height. Interestingly, we obtain the number of robots that can stabilise the system to avoid an explosion of the order queue; two more robots than that number will produce relatively low throughput times. Compared to an AutoStore system, using our system reduces cost by 30% with a slight increase in throughput time.
pdf
GONG 2024 IJPR Operational policies and performance analysis for overhead robotic compact warehousing systems
Restricted Access

Metrics

16 Record Views

Details

InCites Highlights

These are selected metrics from InCites Benchmarking & Analytics tool, related to this contribution

Collaboration types
Domestic collaboration
International collaboration
Citation topics
4 Electrical Engineering, Electronics & Computer Science
4.84 Supply Chain & Logistics
4.84.2450 Warehouse Optimization
Web of Science research areas
Engineering, Industrial
Engineering, Manufacturing
Operations Research & Management Science
Logo image