Affiliation:
1. University of Science and Technology of China
Abstract
The coherent Doppler wind lidar (CDWL) has long been thought to be the most suitable
technique for wind remote sensing in the atmospheric boundary layer
(ABL) due to its compact size, robust performance, and low-cost
properties. However, as the coherent lidar exploits the Mie scattering
from aerosol particles, the signal intensity received by the lidar is
highly affected by the concentration of aerosols. Unlike air
molecules, the concentration of aerosol varies greatly with time and
weather, and decreases dramatically with altitude. As a result, the
performance of the coherent lidar fluctuates greatly with time, and
the detection range is mostly confined within the planetary boundary
layer. The original data collected by the lidar are first transformed
into a spectrogram and then processed into radial wind velocities
utilizing algorithms such as a spectral centroid. When the
signal-to-noise ratio (SNR) is low, these classic algorithms fail to
retrieve the wind speed stably. In this work, a radial wind velocity
retrieving algorithm based on a trained convolutional neural network
(CNN) U-Net is proposed for denoising and an accurate estimate of the
Doppler shift in a low-SNR regime. The advantage of the CNN is first
discussed qualitatively and then proved by means of a numerical
simulation. Simulated spectrum data are used for U-Net training and
testing, which show that the U-Net is not only more accurate than the
spectral centroid but also achieves a further detection range.
Finally, joint observation data from the lidar and radiosonde show
excellent agreement, demonstrating that the U-Net-based retrieving
algorithm has superior performance over the traditional spectral
centroid method both in accuracy and detection range.
Funder
Innovation Program for Quantum Science and Technology
National Natural Science Foundation of China
Subject
Atomic and Molecular Physics, and Optics,Engineering (miscellaneous),Electrical and Electronic Engineering
Cited by
3 articles.
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