Using artificial neural network as a meta-modeling technique in supply chains

Abdulaziz Ahmed, Omar Ashour

Research output: Chapter in Book/Report/Conference proceedingConference contribution

1 Citation (Scopus)

Abstract

This paper aims to develop a framework for inventory levels estimation in multi-level supply chains. The framework utilizes artificial neural network (ANN) as a meta-modeling technique for discrete event simulation (DES) to estimate the on-hand inventory levels. A DES models the relationships between the supply chain levels. Then the output of the simulation model is analyzed by an ANN model that estimates the on-hand inventories. In this paper, we assume a four-level supply chain (retailer (R), distributor (DC), manufacturing plant (MP), and supplier (S)), in which each level employs a periodic review inventory system (T, S). Two decision variables are considered: inventory target (S) and time between orders (T). The manufacturer capacity is taken into account as well. A simulation experiment is conducted by varying the values of T and S for the R, DC, and MP, and the manufacturing capacity of the MP. The simulation results are then analyzed using an ANN model. The mean absolute difference between the simulation output and the ANN model (mean absolute error (MAE)) is used to evaluate the ANN model. The results showed that the ANN is a powerful meta-modeling technique for analyzing simulation outputs, since the MAE is less than 6%.

Original languageEnglish (US)
Title of host publicationIIE Annual Conference and Expo 2015
PublisherInstitute of Industrial Engineers
Pages2221-2228
Number of pages8
ISBN (Electronic)9780983762447
StatePublished - Jan 1 2015
EventIIE Annual Conference and Expo 2015 - Nashville, United States
Duration: May 30 2015Jun 2 2015

Publication series

NameIIE Annual Conference and Expo 2015

Other

OtherIIE Annual Conference and Expo 2015
CountryUnited States
CityNashville
Period5/30/156/2/15

Fingerprint

Supply chains
Neural networks
Discrete event simulation
Experiments

All Science Journal Classification (ASJC) codes

  • Control and Systems Engineering
  • Industrial and Manufacturing Engineering

Cite this

Ahmed, A., & Ashour, O. (2015). Using artificial neural network as a meta-modeling technique in supply chains. In IIE Annual Conference and Expo 2015 (pp. 2221-2228). (IIE Annual Conference and Expo 2015). Institute of Industrial Engineers.
Ahmed, Abdulaziz ; Ashour, Omar. / Using artificial neural network as a meta-modeling technique in supply chains. IIE Annual Conference and Expo 2015. Institute of Industrial Engineers, 2015. pp. 2221-2228 (IIE Annual Conference and Expo 2015).
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Ahmed, A & Ashour, O 2015, Using artificial neural network as a meta-modeling technique in supply chains. in IIE Annual Conference and Expo 2015. IIE Annual Conference and Expo 2015, Institute of Industrial Engineers, pp. 2221-2228, IIE Annual Conference and Expo 2015, Nashville, United States, 5/30/15.

Using artificial neural network as a meta-modeling technique in supply chains. / Ahmed, Abdulaziz; Ashour, Omar.

IIE Annual Conference and Expo 2015. Institute of Industrial Engineers, 2015. p. 2221-2228 (IIE Annual Conference and Expo 2015).

Research output: Chapter in Book/Report/Conference proceedingConference contribution

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Ahmed A, Ashour O. Using artificial neural network as a meta-modeling technique in supply chains. In IIE Annual Conference and Expo 2015. Institute of Industrial Engineers. 2015. p. 2221-2228. (IIE Annual Conference and Expo 2015).