Publication:
Influence of geometrical factors on performance of thermoelectric material using numerical methods

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2015-06-01

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Springer

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Abstract

Prediction of the performance of thermoelectric cooling material (figure of merit, ZT) was carried out by simulated results obtained from the finite element method (FEM) as a training dataset with an artificial neural network. A total of 87 input vectors for the ZT obtained from the four thermoelectric cooling (TEC) modules modeled using the FEM analysis were available in the training set to a back-propagation artificial neural network. An average correlation and maximum prediction error were found to be 100% and 0.01%, respectively, for the ZT after training. The standard deviation of the values was 0.05%. A set of test data, different from the training dataset was used to investigate the network performance. The average correlation and maximum prediction error were found to be 99.92% and 0.07%, respectively, for the tested TEC module. A thermoelectric module produced based on the numerical results was shown to be a promising device for use in cooling systems.

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Bu çalışma, 06-10, Temmuz 2014 tarihlerinde Nashville[Amerika]’da düzenlenen International Conference on Thermoelectrics (ICT) Kongresi‘nde bildiri olarak sunulmuştur.

Keywords

Thermoelectric cooling, Cooling performance, Figure of merit, Artificial neural network, Science & technology, Technology, Physical sciences, Engineering, electrical & electronic, Materials science, multidisciplinary, Physics, applied, Engineering, Materials science, Physics

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