An integrated artificial neural network‐computer simulation for optimization of complex tandem queue systems

An integrated artificial neural network‐computer simulation for optimization of complex tandem queue systems

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Article ID: iaor20121254
Volume: 82
Issue: 4
Start Page Number: 666
End Page Number: 678
Publication Date: Dec 2011
Journal: Mathematics and Computers in Simulation
Authors: , , ,
Keywords: neural networks, queues: theory
Abstract:

This paper presents an integrated artificial neural network‐computer simulation (ANNSim) for optimization of G/G/K queue systems. The ANNSim is a computer program capable of improving its performance by referring to production constraints, system's limitations and desired targets. It is a goal oriented, flexible and integrated approach and produces the optimum solution by utilizing Multi Layer Perceptron (MLP) neural networks. The properties and modules of the prescribed intelligent ANNSim are: (1) parametric modeling, (2) flexibility module, (3) integrated modeling, (4) knowledge‐base module, (5) integrated database and (6) learning module. The integrated ANNSim is applied to 30 distinct tandem G/G/K queue systems. Furthermore, its superiority over conventional simulation approach is shown in two dimensions which are average run time and maximum number of required iterations (scenarios).

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