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Intelligent approach based on FEM simulations and soft computing techniques for filling system design optimisation in sand casting processes

Article dans une revue avec comité de lecture
Auteur
ccEL MANSORI, Mohamed
211915 Mechanics surfaces and materials processing [MSMP]
301080 Texas A&M University [College Station]
ccKTARI, Ahmed

URI
http://hdl.handle.net/10985/20136
Date
2021
Journal
International Journal of Advanced Manufacturing Technology

Résumé

This paper reports an intelligent approach for modeling and optimisation of filling system design (FSD) in the case of sand casting process of aluminium alloy. In order to achieve this purpose, physics-based process modeling using finite element method (FEM) has been integrated with artificial neural networks (ANN) and genetic algorithm (GA) soft computing techniques. A three dimensional FE model of the studied process has been developed and validated, using experimental literature data, to predict two melt flow behaviour (MFB) indexes named ingate velocity and jet high. Two feed-forward back-propagation ANN-based process models were developed and optimised to establish the relationship between the FSD input parameters and each studied MFB index. Both ANN models were trained, tested and tuned by using database generated from FE computations. It was found that both ANN models could independently predict, with a high accuracy, the values of the ingate velocity and the jet high for training and test data. The developed ANN models were coupled with an evolutionary GA to select the optimal FSD for each one. The validity of the found solutions was tested by comparing ANN-GA prediction with FE computation for both studied MFB indexes. It was found that error between predicted and simulated values does not exceed 5.61% and 6.31% respectively for the ingate velocity and the jet high, which proves that the proposed approach is reliable and robust for FSD optimisation.

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  • Laboratoire Mechanics, Surfaces and Materials Processing (MSMP)

Documents liés

Visualiser des documents liés par titre, auteur, créateur et sujet.

  • Digital twin of functional gating system in 3D printed molds for sand casting using a neural network 
    Article dans une revue avec comité de lecture
    ccEL MANSORI, Mohamed; ccKTARI, Ahmed (Springer Verlag (Germany), 2020)
    The filling stage is a critical phenomenon in sand casting for making reliable castings. Latest research has demonstrated that for most liquid engineering alloys, the critical meniscus velocity of the melt at the ingate ...
  • Bridging FEM and Artificial Neural Network in gating system design for smart 3D sand casting 
    Article dans une revue avec comité de lecture
    ELMANSORI, Mohamed; ccKTARI, Ahmed (Elsevier, 2020)
    A relatively new methodology bridging FEM and Artificial Neural Network (ANN) is proposed and validated in this study to optimize the gating system design for smart 3D sand casting. This methodology was applied on the case ...
  • Thermomechanical shape memory testing of 4D printed novel material rhombus-shape structure 
    Article dans une revue avec comité de lecture
    ccAKBAR, Ijaz; ccEL HADROUZ, Mourad; ccEL MANSORI, Mohamed; ccTARFAOUI, Mostapha (Elsevier BV, 2023-08)
    4D printing of functional energy generation/absorption structures by material extrusion technique can capitalize on the exciting applications in intelligent damping devices and patterns to deform spontaneously. This paper ...
  • Thermal effect on the tribo-mechanical behavior of natural fiber composites at micro-scale 
    Article dans une revue avec comité de lecture
    BUKKAPATNAM, Satish T.S.; EL AMRI, Iskander; ccEL MANSORI, Mohamed; ccCHEGDANI, Faissal (Elsevier, 2019)
    This paper aims to explore the thermal influence on the micro-tribo-mechanical behavior of natural fiber composites. Nanoindentation and scratch-test are used to characterize flax fibers reinforced polypropylene (PP) ...
  • Multiscale Analysis of the Roughness Effect on Lubricated Rough Contact 
    Article dans une revue avec comité de lecture
    DEMIRCI, Ibrahim; MEZGHANI, Sabeur; YOUSFI, Mohammed; EL MANSORI, Mohamed (American Society of Mechanical Engineers, 2014-01)
    Determining friction is as equally essential as determining the film thickness in the lubricated contact, and is an important research subject. Indeed, reduction of friction in the automotive industry is important for ...

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