Classification of Electronic Components Based on Convolutional Neural Network Architecture

被引:16
作者
Atik, Ipek [1 ]
机构
[1] Gaziantep Islam Sci & Technol Univ, Dept Elect & Elect Engn, TR-27000 Gaziantep, Turkey
关键词
deep learning; convolutional neural networks; classification; electronic components; MACHINES; ART;
D O I
10.3390/en15072347
中图分类号
TE [石油、天然气工业]; TK [能源与动力工程];
学科分类号
0807 ; 0820 ;
摘要
Electronic components are basic elements that are widely used in many industrial and technological fields. With the development of technology, their dimensions are being produced in smaller and smaller sizes. As a result, making fast distinctions becomes difficult. Being able to classify electronic components quickly and accurately will save labor and time in all areas where these elements are used. Recently, deep learning algorithms have become preferential in product classification studies due to their high accuracy and speed. In this paper, a classification study of electronic components was carried out with the deep learning method. A new convolutional neural network (CNN) model is proposed in the study. The model has six convolution layers, four pooling layers, two fully connected layers, softmax, and a classification layer. The training parameters of the network were determined as an ensemble size of 16, maximum period of 100, initial learning rate of 1 x 10(-3), and the optimizing method sgdm. While determining the CNN model layers and training parameters, the values with the highest predictive values were selected as a result of the trials. Classification research was conducted using the pre-trained networks AlexNet, ShuffleNet, SqueezeNet, and GoogleNet for the same data, and their performance success parameters were compared to those of the proposed CNN model. The proposed CNN model showed higher performance than the other methods, and an accuracy value of 98.99% was obtained.
引用
收藏
页数:14
相关论文
共 34 条
[1]   A novel approach based on integration of convolutional neural networks and deep feature selection for short-term solar radiation forecasting [J].
Acikgoz, Hakan .
APPLIED ENERGY, 2022, 305
[2]  
Agarap A.F., 2018, DEEP LEARNING USING, P1
[3]   A New CNN-Based Method for Short-Term Forecasting of Electrical Energy Consumption in the Covid-19 Period: The Case of Turkey [J].
Atik, Ipek .
IEEE ACCESS, 2022, 10 :22586-22598
[4]  
Bosch A, 2007, IEEE I CONF COMP VIS, P1863
[5]   Fine-tuning Convolutional Neural Networks for fine art classification [J].
Cetinic, Eva ;
Lipic, Tomislav ;
Grgic, Sonja .
EXPERT SYSTEMS WITH APPLICATIONS, 2018, 114 :107-118
[6]   Support vector machines for histogram-based image classification [J].
Chapelle, O ;
Haffner, P ;
Vapnik, VN .
IEEE TRANSACTIONS ON NEURAL NETWORKS, 1999, 10 (05) :1055-1064
[7]  
Ciresan D.C., 2011, P 22 INT JO C ART IN
[8]   Deep convolutional extreme learning machines: Filters combination and error model validation [J].
dos Santos, Michel M. ;
da Silva Filho, Abel G. ;
dos Santos, Wellington R. .
NEUROCOMPUTING, 2019, 329 :359-369
[9]  
Greental, 2014, Proceedings of the Companion Publication of the 2014 Annual Conference on Genetic and Evolutionary Computation, P1451
[10]   Convolutional neural network learning for generic data classification [J].
Han, Huimei ;
Li, Ying ;
Zhu, Xingquan .
INFORMATION SCIENCES, 2019, 477 :448-465