Structural Engineering and Mechanics
Volume 83, Number 2, 2022, pages 259-272
DOI: 10.12989/sem.2022.83.2.259
Deep neural networks trained by the adaptive momentum-based technique for stability simulation of organic solar cells
Peng Xu, Xiao Qin and Honglei Zhu
Abstract
The branch of electronics that uses an organic solar cell or conductive organic polymers in order to yield electricity
from sunlight is called photovoltaic. Regarding this crucial issue, an artificial intelligence-based predictor is presented to investigate the vibrational behavior of the organic solar cell. In addition, the generalized differential quadrature method (GDQM) is utilized to extract the results. The validation examination is done to confirm the credibility of the results. Then, the deep neural network with fully connected layers (DNN-FCL) is trained by means of Adam optimization on the dataset whose members are the vibration response of the design-points. By determining the optimum values for the biases along with weights of DNN-FCL, one can predict the vibrational characteristics of any organic solar cell by knowing the properties defined as the inputs of the mentioned DNN. To assess the ability of the proposed artificial intelligence-based model in prediction of the vibrational response of the organic solar cell, the authors monitored the mean squared error in different steps of the training the DNN-FCL and they observed that the convergency of the results is excellent.
Key Words
artificial intelligence-based model, discrete singular convolution method, DNN-FCL, Hamilton
Address
Peng Xu, Xiao Qin: School of Electrical Engineerin, Jilin Engineering Normal University, Changchun, 130052, China
Honglei Zhu: Planning Paint Shop Planning Department, FAW-Volkswagen Automotive Co. LTD, Changchun, 130001, China