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Predictive modeling techniques for nanosecond-laser damage growth in fused silica optics. | LitMetric

Predictive modeling techniques for nanosecond-laser damage growth in fused silica optics.

Opt Express

Lawrence Livermore National Laboratory, 7000 East Avenue, Livermore, California 94550, USA.

Published: July 2012

Empirical numerical descriptions of the growth of laser-induced damage have been previously developed. In this work, Monte-Carlo techniques use these descriptions to model the evolution of a population of damage sites. The accuracy of the model is compared against laser damage growth observations. In addition, a machine learning (classification) technique independently predicts site evolution from patterns extracted directly from the data. The results show that both the Monte-Carlo simulation and machine learning classification algorithm can accurately reproduce the growth of a population of damage sites for at least 10 shots, which is extremely valuable for modeling optics lifetime in operating high-energy laser systems. Furthermore, we have also found that machine learning can be used as an important tool to explore and increase our understanding of the growth process.

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Source
http://dx.doi.org/10.1364/OE.20.015569DOI Listing

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