Data-driven solutions of ill-posed inverse problems arising from doping reconstruction in semiconductors

08/01/2022
by   Stefano Piani, et al.
0

The non-destructive estimation of doping concentrations in semiconductor devices is of paramount importance for many applications ranging from crystal growth, the recent redefinition of the 1kg to defect and inhomogeneity detection. A number of technologies (such as LBIC, EBIC and LPS) have been developed which allow the detection of doping variations via photovoltaic effects. The idea is to illuminate the sample at several positions, and detect the resulting voltage drop or current at the contacts. We model a general class of such photovoltaic technologies by ill-posed global and local inverse problems based on a drift-diffusion system which describes charge transport in a self-consistent electrical field. The doping profile is included as a parametric field. To numerically solve a physically relevant local inverse problem, we present three different data-driven approaches, based on least squares, multilayer perceptrons, and residual neural networks. Our data-driven methods reconstruct the doping profile for a given spatially varying voltage signal induced by a laser scan along the sample's surface. The methods are trained on synthetic data sets (pairs of discrete doping profiles and corresponding photovoltage signals at different illumination positions) which are generated by efficient physics-preserving finite volume solutions of the forward problem. While the linear least square method yields an average absolute error around 10 5 the robustness of our approach with respect to noise.

READ FULL TEXT
research
03/09/2021

Data driven reconstruction using frames and Riesz bases

We study the problem of regularization of inverse problems adopting a pu...
research
02/23/2022

Training Adaptive Reconstruction Networks for Inverse Problems

Neural networks are full of promises for the resolution of ill-posed inv...
research
11/23/2020

On inverse problems for semiconductor equations

This paper is devoted to the investigation of inverse problems related t...
research
07/04/2023

Learning to reconstruct the bubble distribution with conductivity maps using Invertible Neural Networks and Error Diffusion

Electrolysis is crucial for eco-friendly hydrogen production, but gas bu...
research
02/23/2022

Physics-informed neural networks for inverse problems in supersonic flows

Accurate solutions to inverse supersonic compressible flow problems are ...
research
11/19/2022

PATHFINDER: Designing Stimuli for Neuromodulation through data-driven inverse estimation of non-linear functions

There has been tremendous interest in designing stimuli (e.g. electrical...
research
05/07/2022

On a Constrained Pseudoinverse for the Electromagnetic Inverse Source Problem

Inverse source approaches have shown their relevance for several applica...

Please sign up or login with your details

Forgot password? Click here to reset