Solving the automated guided vehicle problem via a self-organizing neural network

Solving the automated guided vehicle problem via a self-organizing neural network

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Article ID: iaor19972505
Volume: 47
Issue: 12
Start Page Number: 1477
End Page Number: 1493
Publication Date: Dec 1996
Journal: Journal of the Operational Research Society
Authors:
Keywords: production: FMS
Abstract:

Automated Guided Vehicle (AGV-based material handling systems (MHS) are used widely in Flexible Manufacturing Systems (FMS). The problem of AGV consists of the decisions and the operational control strategies of dispatching, routeing and scheduling of a set of AGVs under given system environments and operational objectives. One remaining challenge is to develop effective methods of AGV decisions for improved system productivity. This paper describes a prototype neural network approach for the AGV problem in an FMS environment. A group of neural network models are proposed to perform dispatching and routeing tasks for the AGV under conditions of single or multiple vehicles, and with or without time windows. The goal is to satisfy the transport requests in the shortest time and in a non-conflicting manner, subject to the global manufacturing objectives. Based on Kohonen’s self-organizing feature maps the authors have developed efficient algorithm for the AGVs decisions, and simulation results have been very encouraging.

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