TY - JOUR
T1 - A novel lidar gradient cluster analysis method of nocturnal boundary layer detection during air pollution episodes
AU - Zhang, Yinchao
AU - Chen, Su
AU - Chen, Siying
AU - Chen, He
AU - Guo, Pan
N1 - Publisher Copyright:
© 2020 Royal Society of Chemistry. All rights reserved.
PY - 2020/12/9
Y1 - 2020/12/9
N2 - The observation of the nocturnal boundary layer height (NBLH) plays an important role in air pollution and monitoring. Through 39 d of heavy pollution observation experiments in Beijing (China), as well as an exhaustive evaluation of the gradient, wavelet covariance transform, and cubic root gradient methods, a novel algorithm based on the cluster analysis of the gradient method (CA-GM) of lidar signals is developed to capture the multilayer structure and achieve night-time stability. The CA-GM highlights its performance compared with radiosonde data, and the best correlation (0.85), weakest root-mean-square error (203 m), and an improved 25% correlation coefficient are achieved via the GM. Compared with the 39 d experiments using other algorithms, reasonable parameter selection can help in distinguishing between layers with different properties, such as the cloud layer, elevated aerosol layers, and random noise. Consequently, the CA-GM can automatically address the uncertainty with multiple structures and obtain a stable NBLH with a high temporal resolution, which is expected to contribute to air pollution monitoring and climatology, as well as model verification.
AB - The observation of the nocturnal boundary layer height (NBLH) plays an important role in air pollution and monitoring. Through 39 d of heavy pollution observation experiments in Beijing (China), as well as an exhaustive evaluation of the gradient, wavelet covariance transform, and cubic root gradient methods, a novel algorithm based on the cluster analysis of the gradient method (CA-GM) of lidar signals is developed to capture the multilayer structure and achieve night-time stability. The CA-GM highlights its performance compared with radiosonde data, and the best correlation (0.85), weakest root-mean-square error (203 m), and an improved 25% correlation coefficient are achieved via the GM. Compared with the 39 d experiments using other algorithms, reasonable parameter selection can help in distinguishing between layers with different properties, such as the cloud layer, elevated aerosol layers, and random noise. Consequently, the CA-GM can automatically address the uncertainty with multiple structures and obtain a stable NBLH with a high temporal resolution, which is expected to contribute to air pollution monitoring and climatology, as well as model verification.
UR - http://www.scopus.com/inward/record.url?scp=85097668770&partnerID=8YFLogxK
U2 - 10.5194/amt-13-6675-2020
DO - 10.5194/amt-13-6675-2020
M3 - Article
AN - SCOPUS:85097668770
SN - 1867-1381
VL - 13
SP - 6675
EP - 6689
JO - Atmospheric Measurement Techniques
JF - Atmospheric Measurement Techniques
IS - 12
ER -