MODELO DE PREVISÃO DE DEMANDA PARA ATMS UTILIZANDO REDE NEURAL ARTIFICIAL DO TIPO MULTLAYER PERCEPTRON

Authors

  • Marcos Vieira da Silva
  • Ana Carolina Nicolosi da Rocha Gracioso Faculdade de Tecnologia do Estado de São Paulo – FATEC

Keywords:

Redes Neurais Artificias, Multilayer Perceptron, Reposição de Numerários de ATMs, Previsão de Reabastecimento de ATMs

Abstract

The projections of replacement of cash for Automated Teller Machine (ATM)  ATM for bank self-service  provides to a banking network optimization and greater efficiency in all process of replacement of values in ATMs, as a result  providing security, cost reduction, and balance in relation to seasonality. The aim of this work was to develop an Artificial Neural Network (ANN) to estimate the daily withdrawal values, also considering other variables that could influence the seasonality of these movements. The Artificial Neural Network, of the FeedForward Multilayer Perceptron (MLP) type, was trained based on ATM movement data from different location points. In the intermediate and output layers, activation functions of the relu-adam type were used. Thus, the performance of the developed ANN proved to be satisfactory, and it can be considered as a model for the implementation of effective use in the operation of cash replacement in ATMs of the bank networks or in shared ATMs.

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References

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Published

2021-02-23

How to Cite

MODELO DE PREVISÃO DE DEMANDA PARA ATMS UTILIZANDO REDE NEURAL ARTIFICIAL DO TIPO MULTLAYER PERCEPTRON. (2021). Colloquium Exactarum. ISSN: 2178-8332, 12(4), 54-62. https://revistas.unoeste.br/index.php/ce/article/view/3828

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