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Featured researches published by Chuanguo Yang.


Water Resources Research | 2014

One‐dimensional soil temperature simulation with Common Land Model by assimilating in situ observations and MODIS LST with the ensemble particle filter

Zhongbo Yu; Xiaolei Fu; Lifeng Luo; Haishen Lü; Qin Ju; Di Liu; Dresden A. Kalin; Dui Huang; Chuanguo Yang; Lili Zhao

Soil temperature plays an important role in hydrology, agriculture, and meteorology. In order to improve the accuracy of soil temperature simulation, a soil temperature data assimilation system was developed based on the Ensemble Particle Filter (EnPF) and the Common Land Model (CLM), and then applied in the Walnut Gulch Experimental Watershed (WGEW) in Arizona, United States. Surface soil temperature in situ observations and Moderate Resolution Imaging Spectroradiometer Land Surface Temperature (MODIS LST) data were assimilated into the system. In this study, four different assimilation experiments were conducted: (1) assimilating in situ observations of instantaneous surface soil temperature each hour, (2) assimilating in situ observations of instantaneous surface soil temperature once per day, (3) assimilating verified MODIS LST once per day, and (4) assimilating original MODIS LST once per day. These four experiments reflect a transition from high-quality and more frequent in situ observations to lower quality and less frequent remote sensing data in the data assimilation system. The results from these four experiments show that the assimilated results are better than the simulated results without assimilation at all layers except the bottom layer, while the superiority gradually diminishes as the quality and frequency of the observations decrease. This demonstrates that remote sensing data can be assimilated using the ensemble particle filter in poorly gauged catchments to obtain highly accurate soil variables (e.g., soil moisture, soil temperature). Meanwhile, the results also demonstrate that the ensemble particle filter is effective in assimilating soil temperature observations to improve simulations, but the performance of the data assimilation method is affected by the frequency of assimilation and the quality of the input data.


Advances in Meteorology | 2014

Climate Change Hotspots Identification in China through the CMIP5 Global Climate Model Ensemble

Huanghe Gu; Zhongbo Yu; Jigan Wang; Qin Ju; Chuanguo Yang; Chuanhao Fan

China is one of the countries vulnerable to adverse climate changes. The potential climate change hotspots in China throughout the 21st century are identified in this study by using a multimodel, multiscenario climate model ensemble that includes Phase Five of the Coupled Model Intercomparison Project (CMIP5) atmosphere-ocean general circulation models. Both high (RCP8.5) and low (RCP4.5) greenhouse gas emission trajectories are tested, and both the mean and extreme seasonal temperature and precipitation are considered in identifying regional climate change hotspots. Tarim basin and Tibetan Plateau in West China are identified as persistent regional climate change hotspots in both the RCP4.5 and RCP8.5 scenarios. The aggregate impacts of climate change increase throughout the 21st century and are more significant in RCP8.5 than in RCP4.5. Extreme hot event and mean temperature are two climate variables that greatly contribute to the hotspots calculation in all regions. The contribution of other climate variables exhibits a notable subregional variability. South China is identified as another hotspot based on the change of extreme dry event, especially in SON and DJF, which indicates that such event will frequently occur in the future. Our results can contribute to the designing of national and cross-national adaptation and mitigation policies.


Stochastic Environmental Research and Risk Assessment | 2015

Impact of climate change on hydrological extremes in the Yangtze River Basin, China

Huanghe Gu; Zhongbo Yu; Guiling Wang; Jigan Wang; Qin Ju; Chuanguo Yang; Chuanhao Fan


Procedia environmental sciences | 2011

Adaptability Evaluation of TRMM Satellite Rainfall and Its Application in the Dongjiang River Basin

Cheng Chen; Zhongbo Yu; Li Li; Chuanguo Yang


Journal of Hydrologic Engineering | 2013

Effect of Gravel-Sand Mulch on Soil Water and Temperature in the Semiarid Loess Region of Northwest China

Haishen Lü; Zhongbo Yu; Robert Horton; Yonghua Zhu; Jianyun Zhang; Yangwen Jia; Chuanguo Yang


International Journal of Climatology | 2015

Assessing CMIP5 general circulation model simulations of precipitation and temperature over China

Huanghe Gu; Zhongbo Yu; Jigan Wang; Guiling Wang; Tao Yang; Qin Ju; Chuanguo Yang; Feng Xu; Chuanhao Fan


Water science and engineering | 2010

Hydrological assessment of TRMM rainfall data over Yangtze River Basin

Huanghe Gu; Zhongbo Yu; Chuanguo Yang; Qin Ju; Baohong Lu; Chuan Liang


Journal of Hydrology | 2017

Performance of SMAP, AMSR-E and LAI for weekly agricultural drought forecasting over continental United States

Di Liu; Ashok K. Mishra; Zhongbo Yu; Chuanguo Yang; Goutam Konapala; Tue Vu


Stochastic Environmental Research and Risk Assessment | 2014

Investigating soil moisture sensitivity to precipitation and evapotranspiration errors using SiB2 model and ensemble Kalman filter

Xiaolei Fu; Zhongbo Yu; Lifeng Luo; Haishen Lü; Di Liu; Qin Ju; Tao Yang; Feng Xu; Huanghe Gu; Chuanguo Yang; Jingwen Chen; Ting Wang


Procedia environmental sciences | 2011

Relationship Between Land Use and Evapotranspiration-A Case Study of the Wudaogou Area in Huaihe River basin

Jingwen Chen; Zhongbo Yu; Yonghua Zhu; Chuanguo Yang

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