Inicio  /  Algorithms  /  Vol: 16 Par: 10 (2023)  /  Artículo
ARTÍCULO
TITULO

Comparison of Different Radial Basis Function Networks for the Electrical Impedance Tomography (EIT) Inverse Problem

Chowdhury Abrar Faiyaz    
Pabel Shahrear    
Rakibul Alam Shamim    
Thilo Strauss and Taufiquar Khan    

Resumen

This paper aims to determine whether regularization improves image reconstruction in electrical impedance tomography (EIT) using a radial basis network. The primary purpose is to investigate the effect of regularization to estimate the network parameters of the radial basis function network to solve the inverse problem in EIT. Our approach to studying the efficacy of the radial basis network with regularization is to compare the performance among several different regularizations, mainly Tikhonov, Lasso, and Elastic Net regularization. We vary the network parameters, including the fixed and variable widths for the Gaussian used for the network. We also perform a robustness study for comparison of the different regularizations used. Our results include (1) determining the optimal number of radial basis functions in the network to avoid overfitting; (2) comparison of fixed versus variable Gaussian width with or without regularization; (3) comparison of image reconstruction with or without regularization, in particular, no regularization, Tikhonov, Lasso, and Elastic Net; (4) comparison of both mean square and mean absolute error and the corresponding variance; and (5) comparison of robustness, in particular, the performance of the different methods concerning noise level. We conclude that by looking at the R2 score, one can determine the optimal number of radial basis functions. The fixed-width radial basis function network with regularization results in improved performance. The fixed-width Gaussian with Tikhonov regularization performs very well. The regularization helps reconstruct the images outside of the training data set. The regularization may cause the quality of the reconstruction to deteriorate; however, the stability is much improved. In terms of robustness, the RBF with Lasso and Elastic Net seem very robust compared to Tikhonov.

 Artículos similares

       
 
Antonella Bevilacqua, Giovanni Amadasi, Gino Iannace and Amelia Trematerra    
This manuscript treats the acoustic analysis of a garden located in Rufolo?s villa, south of Italy, which has already been studied to install some acoustic panels to improve the response across the seating area. After a campaign of acoustic measurements,... ver más
Revista: Applied Sciences

 
P. C. Iglesias, L. Godinho and J. Redondo    
Extracting the microscopic parameters of a porous material is a complex task, and attempts have been made to develop models that can simulate their characteristics, gathering the least amount of information possible. As a case in point, tests to evaluate... ver más
Revista: Applied Sciences

 
Jiaxing Wu, Nian Xue, Zhen Li, Xianbin Hong, Yilin Zhao, Xin Huang and Jie Zhang    
The access control system is a critical element in intelligent buildings. In this paper, we present SPCL, an innovative access control system designed to facilitate building entry through the use of mobile phones. Our system aims to provide a secure and ... ver más
Revista: Applied Sciences

 
Kre?imir Nincevic, Thierry Guillet, Omar Al Mansouri and Roman Wan-Wendner    
This contribution summarizes the largest available literature data collection on tensile and shear loaded anchor tests, obtained in two independent studies and performed by two different research groups. It was the objective of the two studies to investi... ver más
Revista: Applied Sciences

 
Fenfang Li, Zhengzhang Zhao, Li Wang and Han Deng    
Sentence Boundary Disambiguation (SBD) is crucial for building datasets for tasks such as machine translation, syntactic analysis, and semantic analysis. Currently, most automatic sentence segmentation in Tibetan adopts the methods of rule-based and stat... ver más
Revista: Applied Sciences