Travel time optimization on multi-AGV routing by reverse annealing
- URL: http://arxiv.org/abs/2204.11789v1
- Date: Mon, 25 Apr 2022 17:01:56 GMT
- Title: Travel time optimization on multi-AGV routing by reverse annealing
- Authors: Renichiro Haba, Masayuki Ohzeki and Kazuyuki Tanaka
- Abstract summary: We propose a formulation to control the traveling routes to minimize the travel time.
We validate our formulation through simulation in a virtual plant and authenticate the effectiveness for faster distribution.
This study extends a use of optimization with general problem solvers in the application of multi-AGV systems.
- Score: 0.966840768820136
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Quantum annealing has been actively researched since D-Wave Systems produced
the first commercial machine in 2011. Controlling a large fleet of automated
guided vehicles is one of the real-world applications utilizing quantum
annealing. In this study, we propose a formulation to control the traveling
routes to minimize the travel time. We validate our formulation through
simulation in a virtual plant and authenticate the effectiveness for faster
distribution compared to a greedy algorithm that does not consider the overall
detour distance. Furthermore, we utilize reverse annealing to maximize the
advantage of the D-Wave's quantum annealer. Starting from relatively good
solutions obtained by a fast greedy algorithm, reverse annealing searches for
better solutions around them. Our reverse annealing method improves the
performance compared to standard quantum annealing alone and performs up to 10
times faster than the strong classical solver, Gurobi. This study extends a use
of optimization with general problem solvers in the application of multi-AGV
systems and reveals the potential of reverse annealing as an optimizer.
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