Back to Search Start Over

Quantum Inspired Optimization for Industrial Scale Problems

Authors :
Banner, William P.
Hadiashar, Shima Bab
Mazur, Grzegorz
Menke, Tim
Ziolkowski, Marcin
Kennedy, Ken
Romero, Jhonathan
Cao, Yudong
Grover, Jeffrey A.
Oliver, William D.
Publication Year :
2023

Abstract

Model-based optimization, in concert with conventional black-box methods, can quickly solve large-scale combinatorial problems. Recently, quantum-inspired modeling schemes based on tensor networks have been developed which have the potential to better identify and represent correlations in datasets. Here, we use a quantum-inspired model-based optimization method TN-GEO to assess the efficacy of these quantum-inspired methods when applied to realistic problems. In this case, the problem of interest is the optimization of a realistic assembly line based on BMW's currently utilized manufacturing schedule. Through a comparison of optimization techniques, we found that quantum-inspired model-based optimization, when combined with conventional black-box methods, can find lower-cost solutions in certain contexts.<br />10 pages, 7 figures

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....33b1320a99df3b92dedbed1229bd1936