LWFNet: Coherent Doppler Wind Lidar-Based Network for Wind Field Retrieval
Ran Tao, Chong Wang, Hao Chen, Mingjiao Jia, Xiang Shang, Luoyuan Qu,, Guoliang Shentu, Yanyu Lu, Yanfeng Huo, Lei Bai, Xianghui Xue, Xiankang, Dou

TL;DR
LWFNet is a novel neural network that enhances lidar-based wind field detection, extending range and accuracy, and surpasses existing models by leveraging Transformer architecture and super-accuracy phenomena.
Contribution
The paper introduces LWFNet, the first deep learning model for lidar wind retrieval, improving detection range and accuracy over traditional methods and state-of-the-art models.
Findings
LWFNet extends wind detection range significantly.
LWFNet achieves super-accuracy surpassing labeled targets.
LWFNet outperforms other SOTA models in high-resolution wind retrieval.
Abstract
Accurate detection of wind fields within the troposphere is essential for atmospheric dynamics research and plays a crucial role in extreme weather forecasting. Coherent Doppler wind lidar (CDWL) is widely regarded as the most suitable technique for high spatial and temporal resolution wind field detection. However, since coherent detection relies heavily on the concentration of aerosol particles, which cause Mie scattering, the received backscattering lidar signal exhibits significantly low intensity at high altitudes. As a result, conventional methods, such as spectral centroid estimation, often fail to produce credible and accurate wind retrieval results in these regions. To address this issue, we propose LWFNet, the first Lidar-based Wind Field (WF) retrieval neural Network, built upon Transformer and the Kolmogorov-Arnold network. Our model is trained solely on targets derived from…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Meteorological Phenomena and Simulations · Precipitation Measurement and Analysis
MethodsAttention Is All You Need · Byte Pair Encoding · Dense Connections · Absolute Position Encodings · Dropout · Linear Layer · Softmax · Adam · Residual Connection · Multi-Head Attention
