scholarly journals Review of the paper "A novel Mie lidar gradient cluster analysis method of nocturnal boundary layer detection during air pollution episodes"

2020 ◽  
Author(s):  
Leiv H. Slørdal ◽  
Sandro Finardi ◽  
Ekaterina Batchvarova ◽  
Ranjeet S. Sokhi ◽  
Evangelia Fragkou ◽  
...  

2020 ◽  
Vol 13 (12) ◽  
pp. 6675-6689
Author(s):  
Yinchao Zhang ◽  
Su Chen ◽  
Siying Chen ◽  
He Chen ◽  
Pan Guo

Abstract. 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.


RSC Advances ◽  
2015 ◽  
Vol 5 (71) ◽  
pp. 57538-57549 ◽  
Author(s):  
Pasquale Avino ◽  
Maurizio Manigrasso ◽  
Francesca Cuomo

This work describes a methodological approach based on natural radioactivity measurements aimed at interpreting air pollution episodes in urban air.


2020 ◽  
Author(s):  
Yingchao Zhang ◽  
Su Chen ◽  
Siying Chen ◽  
He Chen ◽  
Pan Guo

Abstract. The observation of the nocturnal boundary layer height (NBLH) plays an important role in air pollution and monitoring. Through 39 days heavily polluted observation experiment over Beijing (China) and exhaustive evaluation of gradient method (GM), wavelet covariance transform method (WCT) and cubic roots gradient method (CRGM), a novel algorithm based on cluster analysis of gradient method (CA-GM) of lidar signal is developed to capture the multilayer structure and achieve stability in the nighttime. The CA-GM highlights its performance in comparison with radiosonde data, the best correlation (0.85), the weakest root mean square error (203 m), and the improved 25 % correlation coefficient by the GM. In comparison with long-term experiments with other algorithms, a reasonable parameter selection can distinguish layers with different properties, such as the cloud layer, elevated aerosol layers, and random noise. Consequently, the CA-GM can automatically deal with the uncertainty of the multiple structures and obtain a stable NBLH with a high time resolution, which expected to contribute to air pollution monitoring and climatologies, as well as model verification.


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