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Qianqian Yang
Qianqian Yang
Ph.D., School of Geomatics and Geodesy, Wuhan University
Verified email at whu.edu.cn
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Cited by
Cited by
Year
Deep learning in environmental remote sensing: Achievements and challenges
Q Yuan, H Shen, T Li, Z Li, S Li, Y Jiang, H Xu, W Tan, Q Yang, J Wang, ...
Remote sensing of Environment 241, 111716, 2020
10122020
The Relationships between PM2.5 and Meteorological Factors in China: Seasonal and Regional Variations
Q Yang, Q Yuan, T Li, H Shen, L Zhang
International journal of environmental research and public health 14 (12), 1510, 2017
1872017
The relationships between PM2. 5 and aerosol optical depth (AOD) in mainland China: About and behind the spatio-temporal variations
Q Yang, Q Yuan, L Yue, T Li, H Shen, L Zhang
Environmental Pollution 248, 526-535, 2019
1292019
Estimate hourly PM2. 5 concentrations from Himawari-8 TOA reflectance directly using geo-intelligent long short-term memory network
B Wang, Q Yuan, Q Yang, L Zhu, T Li, L Zhang
Environmental Pollution 271, 116327, 2021
462021
Investigation of the spatially varying relationships of PM2. 5 with meteorology, topography, and emissions over China in 2015 by using modified geographically weighted regression
Q Yang, Q Yuan, L Yue, T Li
Environmental Pollution 262, 114257, 2020
432020
Mapping PM2. 5 concentration at a sub-km level resolution: A dual-scale retrieval approach
Q Yang, Q Yuan, L Yue, T Li, H Shen, L Zhang
ISPRS Journal of Photogrammetry and Remote Sensing 165, 140-151, 2020
362020
Mapping PM2. 5 concentration at high resolution using a cascade random forest based downscaling model: Evaluation and application
Q Yang, Q Yuan, T Li, L Yue
Journal of Cleaner Production 277, 123887, 2020
302020
Ultrahigh-resolution PM2. 5 estimation from top-of-atmosphere reflectance with machine learning: Theories, methods, and applications
Q Yang, Q Yuan, T Li
Environmental Pollution 306, 119347, 2022
222022
Joint estimation of PM2. 5 and O3 over China using a knowledge-informed neural network
T Li, Q Yang, Y Wang, J Wu
Geoscience Frontiers 14 (2), 101499, 2023
142023
A new perspective to satellite-based retrieval of ground-level air pollution: Simultaneous estimation of multiple pollutants based on physics-informed multi-task learning
Q Yang, Q Yuan, M Gao, T Li
Science of The Total Environment 857, 159542, 2023
142023
Global air quality change during COVID-19: a synthetic analysis of satellite, reanalysis and ground station data
Q Yang, B Wang, Y Wang, Q Yuan, C Jin, J Wang, S Li, M Li, T Li, S Liu, ...
Environmental Research Letters 16 (7), 074052, 2021
142021
Estimation of high spatial resolution ground-level ozone concentrations based on Landsat 8 TIR bands with deep forest model
M Li, Q Yang, Q Yuan, L Zhu
Chemosphere 301, 134817, 2022
122022
Research progress and challenges of data-driven quantitative remote sensing
Q Yang, C Jin, T Li, Q Yuan, H Shen, L Zhang
Natl. Remote Sens. Bull 26 (2), 268-285, 2022
112022
数据驱动的多源遥感信息融合研究进展
张良培, 何江, 杨倩倩, 肖屹, 袁强强
测绘学报, 2022
52022
数据驱动的定量遥感研究进展与挑战
杨倩倩, 靳才溢, 李同文, 袁强强, 沈焕锋, 张良培
遥感学报 26 (2), 268-285, 2022
42022
A synchronized estimation of hourly surface concentrations of six criteria air pollutants with GEMS data
Q Yang, J Kim, Y Cho, WJ Lee, DW Lee, Q Yuan, F Wang, C Zhou, ...
npj Climate and Atmospheric Science 6 (1), 94, 2023
32023
How well can satellite AOD indicate the ground-level PM2.5 variations in China in recent 5 years?
Q Yuan, Q Yang, L Yue, T Li, H Shen, L Zhang, H Zhang
AGU Fall Meeting Abstracts 2018, A21G-2728, 2018
2018
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