An Interpretable Operator-Learning Model for Electric Field Profile Reconstruction in Discharges Based on the EFISH Method
Zhijian Yang, Edwin Setiadi Sugeng, Mhedine Alicherif, Tat Loon Chng

TL;DR
This paper introduces a novel operator-learning model called Decoder-DeepONet (DDON) that significantly improves the accuracy and robustness of electric field profile reconstruction from EFISH signals, especially for unknown shapes and incomplete data.
Contribution
The study presents DDON, a powerful operator-learning architecture that outperforms traditional neural networks in reconstructing electric field profiles from EFISH data, with enhanced generalizability and applicability.
Findings
DDON outperforms CNN and classical methods in accuracy.
DDON is less sensitive to data location and incomplete profiles.
Application to experimental data confirms robustness and effectiveness.
Abstract
Machine learning (ML) models have recently been used to reconstruct electric field distributions from EFISH signal profiles-the 'inverse EFISH problem'. This addresses the line-of-sight EFISH inaccuracy caused by the Gouy phase shift in focused beams. A key benefit of this approach is that the accuracy of the reconstructed profile can be directly checked via a 'forward transform' of the EFISH equation. Motivated by this latest success, the present study introduces a novel ML model with markedly improved performance. Based on a more powerful operator-learning architecture, it goes beyond the ANNs and CNNs employed previously. Termed Decoder-DeepONet (DDON), its main strength is learning function-to-function mappings, essential for recovering electric field profiles of unknown shape. The superior performance of DDON is exemplified via a comparison with our published CNN model and the…
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