TY - JOUR
T1 - Fast and Accurate Performance Prediction and Optimization of Thermoelectric Generators with Deep Neural Networks
AU - Wang, Pan
AU - Wang, Kaifa
AU - Xi, Li
AU - Gao, Ruxin
AU - Wang, Baolin
N1 - Publisher Copyright:
© 2021 Wiley-VCH GmbH
PY - 2021/7
Y1 - 2021/7
N2 - Predicting the performance of thermoelectric generators (TEGs) is an essential part of designing high-performance TEGs. However, due to the complexity of the TEG system, the existing methods are either time-consuming or not precise enough, inconvenient for device optimization. In this paper, the deep learning (DL) method to fast and accurately get the performance of TEG devices is presented. First, the key features of a typical TEG device are captured and the training dataset is prepared based on the extracted features and finite element simulations. Next, a proper deep neural network architecture is acquired and the model is trained to converge at a low loss. Finally, the experimental data is used to validate the generalization ability of the presented model. Besides, the device optimization based on the DL solution is performed and an output power enhancement of up to 182% is achieved for the authors’ sample module. The presented DL solution thus can be well applied in designing or optimizing high-performance TEGs. Furthermore, the established framework also sheds considerable light on applying the DL approach to solve general engineering problems.
AB - Predicting the performance of thermoelectric generators (TEGs) is an essential part of designing high-performance TEGs. However, due to the complexity of the TEG system, the existing methods are either time-consuming or not precise enough, inconvenient for device optimization. In this paper, the deep learning (DL) method to fast and accurately get the performance of TEG devices is presented. First, the key features of a typical TEG device are captured and the training dataset is prepared based on the extracted features and finite element simulations. Next, a proper deep neural network architecture is acquired and the model is trained to converge at a low loss. Finally, the experimental data is used to validate the generalization ability of the presented model. Besides, the device optimization based on the DL solution is performed and an output power enhancement of up to 182% is achieved for the authors’ sample module. The presented DL solution thus can be well applied in designing or optimizing high-performance TEGs. Furthermore, the established framework also sheds considerable light on applying the DL approach to solve general engineering problems.
KW - deep neural network
KW - machine learning
KW - performance optimization
KW - thermoelectric generator
KW - thermoelectric performance
UR - http://www.scopus.com/inward/record.url?scp=85106313069&partnerID=8YFLogxK
U2 - 10.1002/admt.202100011
DO - 10.1002/admt.202100011
M3 - Article
AN - SCOPUS:85106313069
SN - 2365-709X
VL - 6
JO - Advanced Materials Technologies
JF - Advanced Materials Technologies
IS - 7
M1 - 2100011
ER -