Thermal Stress Control in Functionally Graded Plates with Artificial Neural Network
Thermal Stress Control in Functionally Graded Plates with Artificial Neural Network

Munise Didem Demirbaş [1] , Didem Sofuoğlu [2]

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In this study, trained models were obtained by using Artificial Neural Network (ANN) in order to determine the equivalent stress levels of one dimensional functionally graded rectangular plates. In this training set, a single layer sensor model was used according to our linear problem. With ANN, the models were trained by changing parameters the number of different iterations, number of neurons and learning algorithms. and the trained model was tested and its performance was measured.

In our study, thermal stress analyses were performed for different compositional gradient exponents using finite difference method to constitute data sets. The data sets were constructed for the smallest value of the largest value of the equivalent stress levels, the greatest value of the greatest value of the equivalent stress levels, the greatest value of the smallest value of the equivalent stress levels, and the smallest value of the smallest value of the equivalent stress levels. Five different training algorithms were used in our training network: Levenberg-Marquardt, Back Propagation Algorithm, Momentum Coefficient Back Propagation Algorithm, Adaptive Back Propagation Algorithm and Momentive Adaptive Back Propagation Algorithm. The Levenberg-Marquardt algorithm is found to be more efficient than the other algorithms.

With this study, trained models have been developed to provide time and job savings to determine equivalent stress levels in functionally graded plates, which are very important for high temperature applications. These educated models will provide important contributions to the literature and will be a source for the work to be done in this regard.

Functionally graded plates, artificial neural network, single layer model, Levenberg-Marquardt algorithm, finite difference method, thermal stress analysis.
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Konular Mühendislik, Makine
Dergi Bölümü Makaleler
Yazarlar

Orcid: 0000-0001-8043-6813
Yazar: Munise Didem Demirbaş (Sorumlu Yazar)
Kurum: ERCİYES ÜNİVERSİTESİ, MÜHENDİSLİK FAKÜLTESİ
Ülke: Turkey


Yazar: Didem Sofuoğlu
Kurum: ERCİYES ÜNİVERSİTESİ, FEN BİLİMLERİ ENSTİTÜSÜ
Ülke: Turkey


Bibtex @araştırma makalesi { bilmes442013, journal = {International Scientific and Vocational Studies Journal}, issn = {2618-5938}, address = {Umut Saray}, year = {}, volume = {2}, pages = {39 - 55}, doi = {}, title = {Thermal Stress Control in Functionally Graded Plates with Artificial Neural Network}, key = {cite}, author = {Demirbaş, Munise Didem and Sofuoğlu, Didem} }
APA Demirbaş, M , Sofuoğlu, D . (). Thermal Stress Control in Functionally Graded Plates with Artificial Neural Network. International Scientific and Vocational Studies Journal, 2 (1), 39-55. Retrieved from http://dergipark.gov.tr/bilmes/issue/38611/442013
MLA Demirbaş, M , Sofuoğlu, D . "Thermal Stress Control in Functionally Graded Plates with Artificial Neural Network". International Scientific and Vocational Studies Journal 2 (): 39-55 <http://dergipark.gov.tr/bilmes/issue/38611/442013>
Chicago Demirbaş, M , Sofuoğlu, D . "Thermal Stress Control in Functionally Graded Plates with Artificial Neural Network". International Scientific and Vocational Studies Journal 2 (): 39-55
RIS TY - JOUR T1 - Thermal Stress Control in Functionally Graded Plates with Artificial Neural Network AU - Munise Didem Demirbaş , Didem Sofuoğlu Y1 - 2019 PY - 2019 N1 - DO - T2 - International Scientific and Vocational Studies Journal JF - Journal JO - JOR SP - 39 EP - 55 VL - 2 IS - 1 SN - 2618-5938- M3 - UR - Y2 - 2018 ER -
EndNote %0 International Scientific and Vocational Studies Journal Thermal Stress Control in Functionally Graded Plates with Artificial Neural Network %A Munise Didem Demirbaş , Didem Sofuoğlu %T Thermal Stress Control in Functionally Graded Plates with Artificial Neural Network %D 2019 %J International Scientific and Vocational Studies Journal %P 2618-5938- %V 2 %N 1 %R %U
ISNAD Demirbaş, Munise Didem , Sofuoğlu, Didem . "Thermal Stress Control in Functionally Graded Plates with Artificial Neural Network". International Scientific and Vocational Studies Journal 2 / 1 39-55.