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In Optics express

An accurate forecast of the atmospheric refractive index structure constant (C n2) is vital to analyzing the influence of atmospheric turbulence on laser transmission in advance. In this paper, we propose a novel method to forecast the atmospheric refractive index structure constant C n2 profile, which is inspired by the turbulence characteristics (i.e., the altitude-time correlations). A deep convolutional neural network (DCNN) is adopted in the hope that with the stacked convolutional layers to abstract the altitude-time correlations of C n2, it can accurately forecast the C n2 profile in the near future based on the accumulated historical measurement data. While the sliding window algorithm is introduced to segment the measured time series data of the C n2 profiles to generate the input-output pair data for training and testing. Experimental results demonstrate its high forecast accuracy, as the obtained root mean square error and the correlation coefficient are 0.515 and 0.956 in the one-step-ahead C n2 profile forecast case, 0.753 and 0.9046 in the 36-step-ahead forecast case, respectively. Moreover, the forecast accuracy versus altitude and its relationship with the distribution of C n2 against altitude are analyzed. Most importantly, with a series of experiments of various input feature sizes, the appropriate sliding window width for C n2 forecast is explored, and the short-term correlation of C n2 is also verified.

Hou Muyu, Gong Shuhong, Li Xue, Xiao Donghai, Zuo Yanchun, Liu Yu

2023-Jan-16