<p dir="ltr">Atmospheric optical turbulence (OT) remains a major limitation for the reliability of low Earth orbit (LEO) satellite-to-ground laser communication (SGLC) links. Here, we propose PINN-TurbNet, a physics-informed neural network that embeds planetary boundary layer (PBL) dynamics and Navier-Stokes constraints into a 3D Swin-Transformer U-Net. By jointly minimizing data and physics residuals, the model achieves a mean absolute error (MAE) of 0.313, outperforming conventional baselines. This framework provides a physically consistent and accurate approach for optimizing LEO-SGLC performance.</p>
Funding
National Natural Science Foundation of China under Grant (62131012)
National Natural Science Foundation of China under Grant (U2141231)
Unveiling and Leading Project of Nanjing University Integrated Research and Development Platform of Ministry of Education