Towards ML-based diagnostics of focused laser pulse
Currently, machine learning (ML) methods are widely used to process the results of physical experiments. In some cases, due to the limited amount of experimental data, ML-models can be pre-trained on synthetic data simulated based on the analytical theory and then fine-tuned using experimental data....
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Zusammenfassung: | Currently, machine learning (ML) methods are widely used to process the
results of physical experiments. In some cases, due to the limited amount of
experimental data, ML-models can be pre-trained on synthetic data simulated
based on the analytical theory and then fine-tuned using experimental data. A
limitation of this approach is the presence of the latent parameters of the
analytical model, which values are difficult or impossible to estimate. Setting
these parameters incorrectly may induce a dataset shift even when applied to
synthetic data. To overcome this problem, we train the ML-model on a dataset
with randomly varied latent parameters of the analythical model to force the
ML-model to concentrate on more general patterns that depend weakly on the
latent parameters. We applied this approach to the problem of tight focusing of
a laser pulse with the complex structure of the wavefront. We observed good
accuracy of reconstructing of the tilt parameters when training and testing the
ML-model on datasets generated for different values of the latent parameters.
This confirms that the ML-model was able to select relevant information without
over-fitting for specific features inherent in certain values of the latent
parameters. We believe that this approach will enrich possible applications of
ML-methods to an experimental diagnostics of laser pulses. |
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DOI: | 10.48550/arxiv.2209.09959 |