Mingliang Che
Chinese Academy of Sciences
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Publication
Featured researches published by Mingliang Che.
Remote Sensing | 2014
Jing M. Chen; Huifang Zhang; Zirui Liu; Mingliang Che; Baozhang Chen
How well parameterization will improve gross primary production (GPP) estimation using the MODerate-resolution Imaging Spectroradiometer (MODIS) algorithm has been rarely investigated. We adjusted the parameters in the algorithm for 21 selected eddy-covariance flux towers which represented nine typical plant functional types (PFTs). We then compared these estimates of the MOD17A2 product, by the MODIS algorithm with default parameters in the Biome Property Look-Up Table, and by a two-leaf Farquhar model. The results indicate that optimizing the maximum light use efficiency (emax) in the algorithm would improve GPP estimation, especially for deciduous vegetation, though it could not compensate the underestimation during summer caused by the one-leaf upscaling strategy. Adding the soil water factor to the algorithm would not significantly affect performance, but it could make the adjusted emax more robust for sites with the same PFT and among different PFTs. Even with adjusted parameters, both one-leaf and two-leaf models would not capture seasonally photosynthetic dynamics, thereby we suggest that further improvement in GPP estimaiton is required by taking into consideration seasonal variations of the key parameters and variables.
Journal of Climate | 2014
Jianwu Yan; J. Y. Liu; Baozhang Chen; Min Feng; Shifeng Fang; Guang Xu; H. F. Zhang; Mingliang Che; W. Liang; Y. F. Hu; W. H. Kuang; Huimin Wang
AbstractSensible heat flux (H), latent heat flux (LE), and net radiation (NR) are important surface energy components that directly influence climate systems. In this study, the changes in the surface energy and their contributions from global climate change and/or land-cover change over eastern China during the past nearly 30 years were investigated and assessed using a process-based land surface model [the Ecosystem–Atmosphere Simulation Scheme (EASS)]. The modeled results show that climate change contributed more to the changes of land surface energy fluxes than land-cover change, with their contribution ratio reaching 4:1 or even higher. Annual average temperature increased before 2000 and reversed thereafter; annual total precipitation continually decreased, and incident solar radiation continually increased over the past nearly 30 years. These climatic changes could lead to increased NR, H, and LE, assuming land cover remained unchanged during the past nearly 30 years. Among these meteorological var...
Remote Sensing | 2014
Mingliang Che; Baozhang Chen; Huifang Zhang; Shifeng Fang; Guang Xu; Xiaofeng Lin; Yuchen Wang
Accurately modeling the land surface phenology based on satellite data is very important to the study of vegetation ecological dynamics and the related ecosystem process. In this study, we developed a Sigmoid curve (S-curve) function by integrating an asymmetric Gaussian function and a logistic function to fit the leaf area index (LAI) curve. We applied the resulting asymptotic lines and the curvature extrema to derive the vegetation phenophases of germination, green-up, maturity, senescence, defoliation and dormancy. The new proposed S-curve function has been tested in a specific area (Shangdong Province, China), characterized by a specific pattern in leaf area index (LAI) time course due to the dominant presence of crops. The function has not yet received any global testing. The identified phenophases were validated against measurement stations in Shandong Province. (i) From the site-scale comparison, we find that the detected phenophases using the S-curve (SC) algorithm are more consistent with the observations than using the logistic (LC) algorithm and the asymmetric Gaussian (AG) algorithm, especially for the germination and dormancy. The phenological recognition rates (PRRs) of the SC algorithm are obviously higher than those of two other algorithms. The S-curve function fits the LAI curve much better than the logistic function and asymmetric Gaussian function; (ii) The retrieval results of the SC algorithm are reliable and in close proximity to the green-up observed data whether using the AVHRR LAI or the improved MODIS LAI. Three inversion algorithms shows the retrieval results based on AVHRR LAI are all later than based on improved MODIS LAI. The bias statistics reveal that the retrieval results based on the AVHRR LAI datasets are more reasonable than based on the improved MODIS LAI datasets. Overall, the S-curve algorithm has the advantage of deriving vegetation phenophases across time and space as compared to the LC algorithm and the AG algorithm. With the SC algorithm, the vegetation phenophases can be extracted more effectively.
Remote Sensing | 2014
Guang Xu; Hairong Zhang; Baozhang Chen; Huifang Zhang; Jianwu Yan; Jing M. Chen; Mingliang Che; Xiaofeng Lin; Xianming Dou
Global land cover is an important parameter of the land surface and has been derived by various researchers based on remote sensing images. Each land cover product has its own disadvantages and limitations. Data fusion technology is becoming a notable method to fully integrate existing land cover information. In this paper, we developed a method to generate a synergetic global land cover map (synGLC) based on Bayes theorem. A state probability vector was defined to precisely and quantitatively describe the land cover classification of every pixel and reduce the errors caused by legends harmonization and spatial resampling. Simple axiomatic approaches were used to generate the prior land cover map, in which pixels with high consistency were regarded to be correct and then used as benchmark to obtain posterior land cover map. Validation results show that our hybrid land cover map (synGLC, the dataset is available on request) has the best overall performance compared with the existing global land cover products. Closed shrub-lands and permanent wetlands have the highest uncertainty in our fused land cover map. This novel method can be extensively applied to fusion of land cover maps with different legends, spatial resolutions or geographic ranges.
Agricultural and Forest Meteorology | 2014
Mingliang Che; Baozhang Chen; John L. Innes; Guangyu Wang; Xianming Dou; Tianmo Zhou; Huifang Zhang; Jianwu Yan; Guang Xu; Hongwei Zhao
Quaternary International | 2013
Shifeng Fang; Jianwu Yan; Mingliang Che; Zhihui Liu; Huan Pei; Huifang Zhang; Guang Xu; Xiaofeng Lin
Forests | 2015
Xianming Dou; Baozhang Chen; T. Black; Rachhpal Jassal; Mingliang Che
Ecological Modelling | 2016
Shaobo Sun; Baozhang Chen; Mengyu Ge; Junfeng Qu; Tao Che; Huifang Zhang; Xiaofeng Lin; Mingliang Che; Ziyuan Zhou; Lifeng Guo; Bingyang Wang
Chinese Science Bulletin | 2015
Huifang Zhang; Baozhang Chen; Guang Xu; Jianwu Yan; Mingliang Che; Jing Chen; Shifeng Fang; Xiaofeng Lin; Shaobo Sun
Cold Regions Science and Technology | 2016
Shaobo Sun; Baozhang Chen; Jing Chen; Mingliang Che; Huifang Zhang