PT Journal AU Pagani, P Colling, D Furmans, K TI Neural Network-Based Genetic Job Assignment for Automated Guided Vehicles SO Logistics Journal : Proceedings PY 2017 VL 2017 IS 10 DI 10.2195/lj_Proc_pagani_en_201710_01 DE automated guided vehicles AGV; job assignment; neural networks; genetic algorithms AB Automated guided vehicles are designed to autonomously transport material in production and warehouse environments. The loading/unloading process of the material on the vehicles occurs at dedicated stations, called material sources and destinations. Every time a vehicle is idle, a new transportation job, i.e. the transportation of some goods from a material source to a material destination, can be assigned to one of the vehicles, which represents the limiting resource. The policies, which are used for the job assignment, are several. In this paper, a new policy based on neural networks which were trained by genetic algorithms is proposed and evaluated. The results show that this new policy outperforms a policy which is a combination of the so called “First Come First Served” and the “Nearest Vehicle First” policy. ER