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Current density impedance imaging with PINNs

Authors :
Duan, Chenguang
Jiao, Yuling
Lu, Xiliang
Yang, Jerry Zhijian
Publication Year :
2023

Abstract

In this paper, we introduce CDII-PINNs, a computationally efficient method for solving CDII using PINNs in the framework of Tikhonov regularization. This method constructs a physics-informed loss function by merging the regularized least-squares output functional with an underlying differential equation, which describes the relationship between the conductivity and voltage. A pair of neural networks representing the conductivity and voltage, respectively, are coupled by this loss function. Then, minimizing the loss function provides a reconstruction. A rigorous theoretical guarantee is provided. We give an error analysis for CDII-PINNs and establish a convergence rate, based on prior selected neural network parameters in terms of the number of samples. The numerical simulations demonstrate that CDII-PINNs are efficient, accurate and robust to noise levels ranging from $1\%$ to $20\%$.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2306.13881
Document Type :
Working Paper