Tongwen Li
Wuhan University
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Publication
Featured researches published by Tongwen Li.
International Journal of Environmental Research and Public Health | 2017
Qianqian Yang; Qiangqiang Yuan; Tongwen Li; Huanfeng Shen; Liangpei Zhang
The interactions between PM2.5 and meteorological factors play a crucial role in air pollution analysis. However, previous studies that have researched the relationships between PM2.5 concentration and meteorological conditions have been mainly confined to a certain city or district, and the correlation over the whole of China remains unclear. Whether spatial and seasonal variations exist deserves further research. In this study, the relationships between PM2.5 concentration and meteorological factors were investigated in 68 major cities in China for a continuous period of 22 months from February 2013 to November 2014, at season, year, city, and regional scales, and the spatial and seasonal variations were analyzed. The meteorological factors were relative humidity (RH), temperature (TEM), wind speed (WS), and surface pressure (PS). We found that spatial and seasonal variations of their relationships with PM2.5 exist. Spatially, RH is positively correlated with PM2.5 concentration in north China and Urumqi, but the relationship turns to negative in other areas of China. WS is negatively correlated with PM2.5 everywhere except for Hainan Island. PS has a strong positive relationship with PM2.5 concentration in northeast China and mid-south China, and in other areas the correlation is weak. Seasonally, the positive correlation between PM2.5 concentration and RH is stronger in winter and spring. TEM has a negative relationship with PM2.5 in autumn and the opposite in winter. PS is more positively correlated with PM2.5 in autumn than in other seasons. Our study investigated the relationships between PM2.5 and meteorological factors in terms of spatial and seasonal variations, and the conclusions about the relationships between PM2.5 and meteorological factors are more comprehensive and precise than before. We suggest that the variations could be considered in PM2.5 concentration prediction and haze control to improve the prediction accuracy and policy efficiency.
Remote Sensing | 2018
Hongzhang Xu; Qiangqiang Yuan; Tongwen Li; Huanfeng Shen; Liangpei Zhang; Hongtao Jiang
Soil moisture is a key component of the water cycle budget. Sensing soil moisture using microwave sensors onboard satellites is an effective way to retrieve surface soil moisture (SSM) at a global scale, but the retrieval accuracy in some regions is inadequate due to the complicated factors influencing the general retrieval process. On the other hand, monitoring soil moisture directly through in-situ devices is capable of providing high-accuracy SSM measurements, but the distribution of such stations is sparse. Recently, the Global Navigation Satellite System interferometric Reflectometry (GNSS-R) method was used to derive field-scale SSM, which can serve as a supplement to contemporary sparse in-situ soil moisture networks. On this basis, it is of great research significance to explore the fusion of these different kinds of SSM data, so as to improve the present satellite SSM products with regard to their data accuracy. In this paper, a multi-source point-surface fusion method based on the generalized regression neural network (GRNN) model is applied to fuse the Soil Moisture Active Passive (SMAP) Level 3 radiometer SSM daily product with in-situ measured and GNSS-R estimated SSM data from five soil moisture networks in the western continental U.S. The results show that the GRNN model obtains a fairly good performance, with a cross-validation R value of approximately 0.9 and a ubRMSE of 0.044 cm3 cm−3. Furthermore, the fused SSM product agrees well with the site-specific SSM data in terms of time and space, which demonstrates that the proposed GRNN model is able to construct the non-linear relationship between the pointand surface-scale SSM.
ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences | 2018
Tongwen Li; Chengyue Zhang; Huanfeng Shen; Qiangqiang Yuan; Liangpei Zhang
Satellite remote sensing has been reported to be a promising approach for the monitoring of atmospheric PM2.5. However, the satellite-based monitoring of ground-level PM2.5 is still challenging. First, the previously used polar-orbiting satellite observations, which can be usually acquired only once per day, are hard to monitor PM2.5 in real time. Second, many data gaps exist in satellite-derived PM2.5 due to the cloud contamination. In this paper, the hourly geostationary satellite (i.e., Harawari-8) observations were adopted for the real-time monitoring of PM2.5 in a deep learning architecture. On this basis, the satellite-derived PM2.5 in conjunction with ground PM2.5 measurements are incorporated into a spatio-temporal fusion model to fill the data gaps. Using Wuhan Metropolitan Area as an example, we have successfully derived the real-time and seamless PM2.5 distributions. The results demonstrate that Harawari-8 satellite-based deep learning model achieves a satisfactory performance (out-of-sample cross-validation R2=0.80, RMSE=17.49ug/m3) for the estimation of PM2.5. The missing data in satellite-derive PM2.5 are accurately recovered, with R2 between recoveries and ground measurements of 0.75. Overall, this study has inherently provided an effective strategy for the real-time and seamless monitoring of ground-level PM2.5.
international workshop on earth observation and remote sensing applications | 2016
Xuechen Zhang; Huanfeng Shen; Tongwen Li
Fireworks/firecrackers have always played an important role in traditional Chinese New Year. However, several pollutants are emitted while burning fireworks/firecrackers. Among them, fine particulate matter (PM2.5) draws extensive attention due to its negative effect on human body. Previous studies have proved fireworks/firecrackers displays can raise regional PM2.5 concentration, but studies are still constrained to specific cities and time periods. Remote sensing is an efficient tool to monitor the change of PM2.5 concentration during such intensive and widespread fireworks/firecrackers display activities. By combining ground-based PM2.5 data and long-term satellite AOD products, we analyzed the respond of PM2.5 concentration to Chinese New Year fireworks/firecrackers displays, and evaluated the effect intensity of such activities at different space and time scales. The results indicate that the effect of Chinese New Year fireworks/firecrackers displays is intense but transience at both city level and national level. Besides, by combining multi-source data, a model was constructed for estimating historical ground PM2.5 concentration data.
Atmospheric Environment | 2017
Tongwen Li; Huanfeng Shen; Chao Zeng; Qiangqiang Yuan; Liangpei Zhang
ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences | 2012
Peng Li; Chuang Shi; Zhenhong Li; Jan-Peter Muller; Jane Drummond; Xiuyang Li; Tongwen Li; You Li; Jingnan Liu
Chinese Journal of Geophysics | 2013
P. Li; Zhenhong Li; Chuang Shi; Wanpeng Feng; C. Liang; Tongwen Li; Q. Zeng; Jingnan Liu
Geophysical Research Letters | 2017
Tongwen Li; Huanfeng Shen; Qiangqiang Yuan; Xuechen Zhang; Liangpei Zhang
arXiv: Geophysics | 2018
Qianqian Yang; Qiangqiang Yuan; Linwei Yue; Tongwen Li; Huanfeng Shen; Liangpei Zhang
arXiv: Atmospheric and Oceanic Physics | 2018
Yuan Wang; Qiangqiang Yuan; Tongwen Li; Huanfeng Shen; Li Zheng; Liangpei Zhang