Routing Driverless Transport Vehicles in Car Assembly with Answer Set Programming
Martin Gebser, Philipp Obermeier, Michel Ratsch-Heitmann, Mario Runge,, Torsten Schaub

TL;DR
This paper presents a declarative Answer Set Programming approach to optimize routing for automated guided vehicles in car assembly, offering flexibility, optimality, and efficiency over traditional manual methods.
Contribution
It introduces a novel, formalized ASP-based method for vehicle routing in manufacturing, improving adaptability and optimality compared to manual routing.
Findings
The ASP approach achieves provably optimal routes.
It adapts easily to factory layout changes.
The method is efficient for real-world production tasks.
Abstract
Automated storage and retrieval systems are principal components of modern production and warehouse facilities. In particular, automated guided vehicles nowadays substitute human-operated pallet trucks in transporting production materials between storage locations and assembly stations. While low-level control systems take care of navigating such driverless vehicles along programmed routes and avoid collisions even under unforeseen circumstances, in the common case of multiple vehicles sharing the same operation area, the problem remains how to set up routes such that a collection of transport tasks is accomplished most effectively. We address this prevalent problem in the context of car assembly at Mercedes-Benz Ludwigsfelde GmbH, a large-scale producer of commercial vehicles, where routes for automated guided vehicles used in the production process have traditionally been hand-coded…
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