Turbulent fluctuations of the atmospheric refraction index, so-called optical turbulence, can significantly distort propagating laser beams. Therefore, modeling the strength of these fluctuations () is highly relevant for the successful development and deployment of future free-space optical communication links. In this letter, we propose a physics-informed machine learning (ML) methodology, -ML, based on dimensional analysis and gradient boosting to estimate . Through a systematic feature importance analysis, we identify the normalized variance of potential temperature as the dominating feature for predicting . For statistical robustness, we train an ensemble of models which yields high performance on the out-of-sample data of .
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