吉林体日农业科技有限公司

吉林体日农业科技有限公司

吉林体日农业科技有限公司

吉林体日农业科技有限公司

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教授

江冲亚

发布人: 江冲亚    发布日期: 2023-03-01    浏览次数:


姓       名:江冲亚

职       称:教授
办公地址:生命科学楼南楼A5011室
办公电话:025-84399935
电子邮箱:chongya@njau.edu.cn

个人愿景:绘制中国每块田的昨天、今天、明天

研究方向:农情遥感监测、农业信息工程
招生背景:农学、生态学、遥感、地信、计算机、软件工程


教育经历:

2003年9月-2007年6月
南京工业大学 地理信息系统
本科生
2007年9月-2010年6月 南京大学 地图学与地理信息系统 硕士研究生
2010年9月-2014年6月 中国科公司地理科学与资源研究所 地图学与地理信息系统 博士研究生


工作经历:

2014年7月-2017年12月 韩国首尔国立大学 生态遥感 博士后研究员
2018年1月-2020年12月 美国伊利诺伊大学 生态遥感 博士后研究员
2021年1月-2023年1月
美国伊利诺伊大学 生态遥感 研究科学家
2021年11月-2023年1月 美国伊利诺伊大学 生态遥感 研究助理教授
2023年2月- 吉林体日农业科技有限公司 智慧农业 教授


科研项目:

2024年1月-

2026年12月

国家高层次青年人才计划项目 农情遥感监测 项目负责人

2024年1月-

2026年12月

江苏省特聘教授项目 农业信息工程 项目负责人

2023年11月-

2028年10月

“十四五”国家重点研发计划项目 粮食生产大数据平台研发与应用 课题负责人

2023年4月-

2023年12月

中央高校基本科研业务费专项基金项目 作物冠层结构观测物联网研究 项目负责人

2022年9月-

2023年1月

美国国家航空航天局ECOSTRESS科学与应用计划 Redefining droughts for the U.S. Corn Belt: quantification of the impacts of soil aridity and atmospheric aridity on agroecosystems using ECOSTRESS LST and ET products Co-PI

2021年5月-

2023年1月

美国国家航空航天局商业小卫星数据采集计划 Advancing sustainable agriculture: Integration of airborne and DESIS satellite hyperspectral images to monitor crop nitrogen in the U.S. Corn Belt Co-PI

2020年9月-

2022年8月

美国国家航空航天局地球与空间科技未来科学家培养项目 Developing novel GPP Estimation for Crops at Field-Level Using New-Generation Satellite Data in the US Corn Belt Co-PI

2020年9月-

2021年8月

美国农业部风险管理局项目 Agronomic Data Validation Using Advanced Analytics Techniques Co-PI

2020年7月-

2021年6月

伊利诺伊大学种子基金
A Low-cost Camera IoT Network to Intelligently Track Crop Productivity PI


主要论文

Jiang, C.*, Guan, K.*, Huang, Y., Jong, M., 2024. A vehicle imaging approach to acquire ground truth data for upscaling to satellite data: A case study for estimating harvesting dates. Remote Sensing of Environment 300, 113894. https://doi.org/10.1016/j.rse.2023.113894

Wu, G., Jiang, C.*, Kimm, H., Wang, S., Bernacchi, C., Moore, C. E., Suyker, A., Yang, X., Magney, T., Frankenberg, C., Ryu, Y., Dechant, B., & Guan, K.* (2022). Difference in seasonal peak timing of soybean far-red SIF and GPP explained by canopy structure and chlorophyll content. Remote Sensing of Environment, 279, 113104. https://doi.org/10.1016/j.rse.2022.113104

Jiang, C.*; Guan, K.*; Khanna, M.*; Chen, L.; Peng, J. Assessing Marginal Land Availability Based on Land Use Change Information in the Contiguous United States. Environmental Science & Technology. 2021, 55 (15). https://doi.org/10.1021/acs.est.1c02236

Li, K., Guan, K.*, Jiang, C.*, Wang, S., Peng, B., & Cai, Y. (2021). Evaluation of Four New Land Surface Temperature (LST) Products in the U.S. Corn Belt: ECOSTRESS, GOES-R, Landsat, and Sentinel-3. IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing, 14, 9931–9945. https://doi.org/10.1109/JSTARS.2021.3114613

Jiang, C.*, Guan, K.*, Wu, G., Peng, B., Wang, S., 2021. A daily, 250 m and real-time gross primary productivity product (2000–present) covering the contiguous United States. Earth System Science Data 13, 281–298. https://doi.org/10.5194/essd-13-281-2021

Jiang, C.*, Ryu, Y.*, Wang, H., Keenan, T.F., 2020. An optimality-based model explains seasonal variation in C3 plant photosynthetic capacity. Global Change Biology 26, 6493–6510. https://doi.org/10.1111/gcb.15276

Jiang, C.*, Guan, K., Pan, M., Ryu, Y., Peng, B., Wang, S., 2020. BESS-STAIR: a framework to estimate daily, 30 m, and all-weather crop evapotranspiration using multi-source satellite data for the US Corn Belt. Hydrology and Earth System Sciences 24, 1251–1273. https://doi.org/10.5194/hess-24-1251-2020

Wu, G., Guan, K.*, Jiang, C.*, Peng, B., Kimm, H., Chen, M., Yang, X., Wang, S., Suyker, A.E., Bernacchi, C.J., Moore, C.E., Zeng, Y., Berry, J.A., Cendrero-Mateo, M.P., 2020. Radiance-based NIRv as a proxy for GPP of corn and soybean. Environmental Research Letters. 15, 034009. https://doi.org/10.1088/1748-9326/ab65cc

Jiang, C.*, Fang, H., 2019. GSV: a general model for hyperspectral soil reflectance simulation. International Journal of Applied Earth Observation and Geoinformation 83, 101932. https://doi.org/10.1016/j.jag.2019.101932

Ryu, Y., Jiang, C., Kobayashi, H., Detto, M., 2018. MODIS-derived global land products of shortwave radiation and diffuse and total photosynthetically active radiation at 5km resolution from 2000. Remote Sensing of Environment 204, 812–825. https://doi.org/10.1016/j.rse.2017.09.021

Jiang, C., Ryu, Y., Fang, H., Myneni, R., Claverie, M., Zhu, Z., 2017. Inconsistencies of interannual variability and trends in long-term satellite leaf area index products. Global Change Biology 23, 4133–4146. https://doi.org/10.1111/gcb.13787

Jiang, C., Ryu, Y., 2016. Multi-scale evaluation of global gross primary productivity and evapotranspiration products derived from Breathing Earth System Simulator (BESS). Remote Sensing of Environment 186, 528–547. https://doi.org/10.1016/j.rse.2016.08.030

Jiang, C.; Fang, H.; Wei, S. Review of Land Surface Roughness Parameterization Study. 地球科学进展. 2012, 27 (3), 292–303.

Jiang, C.; Li, M.; Liu, Y. Full Automatic Method for Coastal Water Information Extraction from Remote Sensing Image. 测绘学报. 2011, 40 (3), 332–340.

Jiang, C.; Li, M.; Li, F.; Li, X.; Liu, Y. Construction of Geographic Information System (GIS) Virtual Inter-Active Experiment Zone. 地理信息世界. 2010, No. 2, 84–89.


其他论文

Liu, L., Zhou, W., Guan, K., Peng, B., Xu, S., Tang, J., Zhu, Q., Till, J., Jia, X., Jiang, C., Wang, S., Qin, Z., Kong, H., Grant, R., Mezbahuddin, S., Kumar, V., and Jin, Z.* (2023) "Knowledge-based artificial intelligence significantly improved agroecosystem carbon cycle quantification". Nature Communications.

Zhou, J., Yang, Q., Liu, L., Kang, Y., Jia, X., Chen, M., Ghosh, R., Xu, S., Jiang, C., Guan, K., Kumar, V., Jin, Z., 2023. A deep transfer learning framework for mapping high spatiotemporal resolution LAI. ISPRS Journal of Photogrammetry and Remote Sensing 206, 30–48.

Guan, K., Jin, Z., Peng, B., Tang, J., DeLucia, E.H., West, P., Jiang, C., Wang, S., Kim, T., Zhou, W., Griffis, T., Liu, L., Yang, W.H., Qin, Z., Yang, Q., Margenot, A., Stuchiner, E.R., Kumar, V., Bernacchi, C., Coppess, J., Novick, K.A., Gerber, J., Jahn, M., Khanna, M., Lee, D., Chen, Z., Yang, S.-J., 2023. A scalable framework for quantifying field-level agricultural carbon outcomes. Earth-Science Reviews 104462.

Wu, G., Guan, K., Jiang, C., Kimm, H., Miao, G., Yang, X., Bernacchi, C.J., Sun, X., Suyker, A.E., Moore, C.E., 2023. Can upscaling ground nadir SIF to eddy covariance footprint improve the relationship between SIF and GPP in croplands? Agricultural and Forest Meteorology 338, 109532.

Zhang, J., Guan, K., Zhou, W., Jiang, C., Peng, B., Pan, M., Grant, R.F., Franz, T.E., Suyker, A., Yang, Y., Chen, X., Lin, K., Ma, Z., 2023. Combining Remotely Sensed Evapotranspiration and an Agroecosystem Model to Estimate Center-Pivot Irrigation Water Use at High Spatio-Temporal Resolution. Water Resources Research 59, e2022WR032967.

Zhou, Q., Wang, S., Liu, N., Townsend, P.A., Jiang, C., Peng, B., Verhoef, W., Guan, K., 2023. Towards operational atmospheric correction of airborne hyperspectral imaging spectroscopy: Algorithm evaluation, key parameter analysis, and machine learning emulators. ISPRS Journal of Photogrammetry and Remote Sensing 196, 386–401.  

Wang, S., Guan, K., Zhang, C., Jiang, C., Zhou, Q., Li, K., Qin, Z., Ainsworth, E. A., He, J., Wu, J., Schaefer, D., Gentry, L. E., Margenot, A. J., & Herzberger, L. (2023). Airborne hyperspectral imaging of cover crops through radiative transfer process-guided machine learning. Remote Sensing of Environment, 285, 113386.

Wang, S., Guan, K., Zhang, C., Zhou, Q., Wang, S., Wu, X., Jiang, C., Peng, B., Mei, W., Li, K., Li, Z., Yang, Y., Zhou, W., Huang, Y., & Ma, Z. (2023). Cross-scale sensing of field-level crop residue cover: Integrating field photos, airborne hyperspectral imaging, and satellite data. Remote Sensing of Environment, 285, 113366.

Zhou, Q., Guan, K., Wang, S., Jiang, C., Huang, Y., Peng, B., Chen, Z., Wang, S., Hipple, J., Schaefer, D., Qin, Z., Stroebel, S., Coppess, J., Khanna, M., & Cai, Y. (2022). Recent rapid increase of cover crop adoption across the U.S. Midwest detected by fusing multi‐source satellite data. Geophysical Research Letters, 49(22), e2022GL100249.

Wu, G., Guan, K., Jiang, C., Kimm, H., Miao, G., Bernacchi, C. J., Moore, C. E., Ainsworth, E. A., Yang, X., Berry, J. A., Frankenberg, C., & Chen, M. (2022). Attributing differences of solar-induced chlorophyll fluorescence (SIF)-gross primary production (GPP) relationships between two C4 crops: corn and miscanthus. Agricultural and Forest Meteorology, 323, 109046.

Müller, J., Faybishenko, B., Agarwal, D., Bailey, S., Jiang, C., Ryu, Y., Tull, C., & Ramakrishnan, L. (2021). Assessing data change in scientific datasets. Concurrency and Computation: Practice and Experience, 33(16), e6245.

Wang, S., Guan, K., Wang, Z., Ainsworth, E. A., Zheng, T., Townsend, P. A., Liu, N., Nafziger, E., Masters, M. D., Li, K., Wu, G., & Jiang, C. (2021). Airborne hyperspectral imaging of nitrogen deficiency on crop traits and yield of maize by machine learning and radiative transfer modeling. International Journal of Applied Earth Observation and Geoinformation, 105, 102617.

Kimm, H., Guan, K., Jiang, C., Miao, G., Wu, G., Suyker, A. E., Ainsworth, E. A., Bernacchi, C. J., Montes, C. M., Berry, J. A., Yang, X., Frankenberg, C., Chen, M., & Köhler, P. (2021). A physiological signal derived from sun-induced chlorophyll fluorescence quantifies crop physiological response to environmental stresses in the U.S. Corn Belt. Environmental Research Letters, 16(12), 124051.

Zhang, J., Guan, K., Peng, B., Pan, M., Zhou, W., Jiang, C., Kimm, H., Franz, T. E., Grant, R. F., Yang, Y., Rudnick, D. R., Heeren, D. M., Suyker, A. E., Bauerle, W. L., & Miner, G. L. (2021). Sustainable irrigation based on co-regulation of soil water supply and atmospheric evaporative demand. Nature Communications, 12(1), 110.

Khanna, M.; Chen, L.; Basso, B.; Cai, X.; Field, J.; Guan, K.; Jiang, C.; Lark, T.; Richard, T.; Spawn, S.; Yang, P.; Zipp, K. Redefining Marginal Lands for Bioenergy Crop Production. GCB Bioenergy. 2021, p12877.

Zhou, W., Guan, K., Peng, B., Tang, J., Jin, Z., Jiang, C., Grant, R. and Mezbahuddin, S. Quantifying carbon budget, crop yields and their responses to environmental variability using the ecosys model for U.S. Midwestern agroecosystems, Agric. For. Meteorol. 2021, 307, 108521, doi:10.1016/J.AGRFORMET.2021.108521.

Zhang, J.; Guan, K.; Peng, B.; Jiang, C.; Zhou, W.; Yang, Y.; Pan, M.; Franz, T. E.; Heeren, D. M.; Rudnick, D. R.; Abimbola, O.; Kimm, H.; Caylor, K.; Good, S.; Khanna, M.; Gates, J.; Cai, Y. Challenges and Opportunities in Precision Irrigation Decision-Support Systems for Center Pivots. Environmental Research Letters. IOP Publishing May 1, 2021, p 53003.

Wu, G.; Guan, K.; Li, Y.; Novick, K. A.; Feng, X.; McDowell, N. G.; Konings, A. G.; Thompson, S. E.; Kimball, J. S.; De Kauwe, M. G.; Ainsworth, E. A.; Jiang, C. Interannual Variability of Ecosystem Iso/Anisohydry Is Regulated by Environmental Dryness. New Phytol. 2021, 229 (5), 25622575.

Yang, Y.; Guan, K.; Peng, B.; Pan, M.; Jiang, C.; Franz, T. E. High-Resolution Spatially Explicit Land Surface Model Calibration Using Field-Scale Satellite-Based Daily Evapotranspiration Product. J. Hydrol. 2021, 596 (November 2020), 125730.

Wang, S.; Guan, K.; Wang, Z.; Ainsworth, E. A.; Zheng, T.; Townsend, P. A.; Li, K.; Moller, C.; Wu, G.; Jiang, C. Unique Contributions of Chlorophyll and Nitrogen to Predict Crop Photosynthetic Capacity from Leaf Spectroscopy. J. Exp. Bot. 2021, 72 (2), 341354.

Zhou, W.; Guan, K.; Peng, B.; Shi, J.; Jiang, C.; Wardlow, B.; Pan, M.; Kimball, J. S.; Franz, T. E.; Gentine, P.; He, M.; Zhang, J. Connections between the Hydrological Cycle and Crop Yield in the Rainfed U.S. Corn Belt. J. Hydrol. 2020, 590 (August), 125398.

Forzieri, G.; Miralles, D. G.; Ciais, P.; Alkama, R.; Ryu, Y.; Duveiller, G.; Zhang, K.; Robertson, E.; Kautz, M.; Martens, B.; Jiang, C.; Arneth, A.; Georgievski, G.; Li, W.; Ceccherini, G.; Anthoni, P.; Lawrence, P.; Wiltshire, A.; Pongratz, J.; Piao, S.; Sitch, S.; Goll, D. S.; Arora, V. K.; Lienert, S.; Lombardozzi, D.; Kato, E.; Nabel, J. E. M. S.; Tian, H.; Friedlingstein, P.; Cescatti, A. Increased Control of Vegetation on Global Terrestrial Energy Fluxes. Nat. Clim. Chang. 2020, 10 (4), 356362.

Pei, Y.; Dong, J.; Zhang, Y.; Yang, J.; Zhang, Y.; Jiang, C.; Xiao, X. Performance of Four State-of-the-Art GPP Products (VPM, MOD17, BESS and PML) for Grasslands in Drought Years. Ecol. Inform. 2020, 56, 101052.

Kimm, H.; Guan, K.; Jiang, C.; Peng, B.; Gentry, L. F.; Wilkin, S. C.; Wang, S.; Cai, Y.; Bernacchi, C. J.; Peng, J.; Luo, Y. Deriving High-Spatiotemporal-Resolution Leaf Area Index for Agroecosystems in the U.S. Corn Belt Using Planet Labs CubeSat and STAIR Fusion Data. Remote Sens. Environ. 2020, 239, 111615.

Wang, C.; Guan, K.; Peng, B.; Chen, M.; Jiang, C.; Zeng, Y.; Wu, G.; Wang, S.; Wu, J.; Yang, X.; Frankenberg, C.; Köhler, P.; Berry, J.; Bernacchi, C.; Zhu, K.; Alden, C.; Miao, G. Satellite Footprint Data from OCO-2 and TROPOMI Reveal Significant Spatio-Temporal and Inter-Vegetation Type Variabilities of Solar-Induced Fluorescence Yield in the U.S. Midwest. Remote Sens. Environ. 2020, 241 (February), 111728.

Peng, B.; Guan, K.; Zhou, W.; Jiang, C.; Frankenberg, C.; Sun, Y.; He, L.; Köhler, P. Assessing the Benefit of Satellite-Based Solar-Induced Chlorophyll Fluorescence in Crop Yield Prediction. Int. J. Appl. Earth Obs. Geoinf. 2020, 90 (December 2019), 102126.

Wei, J.; Chen, Y.; Gu, Q.; Jiang, C.; Ma, M.; Song, L.; Tang, X. Potential of the Remotely-Derived Products in Monitoring Ecosystem Water Use Efficiency across Grasslands in Northern China. Int. J. Remote Sens. 2019, 40 (16), 62036223.

Yuan, W.; Zheng, Y.; Piao, S.; Ciais, P.; Lombardozzi, D.; Wang, Y.; Ryu, Y.; Chen, G.; Dong, W.; Hu, Z.; Jain, A. K.; Jiang, C.; Kato, E.; Li, S.; Lienert, S.; Liu, S.; Nabel, J. E. M. S.; Qin, Z.; Quine, T.; Sitch, S.; Smith, W. K.; Wang, F.; Wu, C.; Xiao, Z.; Yang, S. Increased Atmospheric Vapor Pressure Deficit Reduces Global Vegetation Growth. Sci. Adv. 2019, 5 (8), eaax1396.

Kim, J., Ryu, Y., Jiang, C., & Hwang, Y. (2019). Continuous observation of vegetation canopy dynamics using an integrated low-cost, near-surface remote sensing system. Agricultural and Forest Meteorology, 264(September 2018), 164177.

Baldocchi, D.; Dralle, D.; Jiang, C.; Ryu, Y. How Much Water Is Evaporated Across California?: A Multi-Year Assessment Using a Biophysical Model Forced with Satellite Remote Sensing Data. Water Resour. Res. 2019, 55 (4), 27222741.

Yang, K.; Ryu, Y.; Dechant, B.; Berry, J. A.; Hwang, Y.; Jiang, C.; Kang, M.; Kim, J.; Kimm, H.; Kornfeld, A.; Yang, X. Sun-Induced Chlorophyll Fluorescence Is More Strongly Related to Absorbed Light than to Photosynthesis at Half-Hourly Resolution in a Rice Paddy. Remote Sens. Environ. 2018, 216 (June), 658673.

Luo, X.; Keenan, T. F.; Fisher, J. B.; Jiménez-Muñoz, J.-C.; Chen, J. M.; Jiang, C.; Ju, W.; Perakalapudi, N.-V.; Ryu, Y.; Tadić, J. M. The Impact of the 2015/2016 El Niño on Global Photosynthesis Using Satellite Remote Sensing. Philos. Trans. R. Soc. B Biol. Sci. 2018, 373 (1760), 20170409.

Huang, Y.; Ryu, Y.; Jiang, C.; Kimm, H.; Kim, S.; Kang, M.; Shim, K. BESS-Rice: A Remote Sensing Derived and Biophysical Process-Based Rice Productivity Simulation Model. Agric. For. Meteorol. 2018, 256257 (March), 253269.

Hwang, Y.; Ryu, Y.; Kimm, H.; Jiang, C.; Lang, M.; Macfarlane, C.; Sonnentag, O. Correction for Light Scattering Combined with Sub-Pixel Classification Improves Estimation of Gap Fraction from Digital Cover Photography. Agric. For. Meteorol. 2016, 222, 3244.

Lee, S.; Ryu, Y.; Jiang, C. Urban Heat Mitigation by Roof Surface Materials during the East Asian Summer Monsoon. Environ. Res. Lett. 2015, 10 (12), 124012.

Fang, H.; Li, W.; Wei, S.; Jiang, C. Seasonal Variation of Leaf Area Index (LAI) over Paddy Rice Fields in NE China: Intercomparison of Destructive Sampling, LAI-2200, Digital Hemispherical Photography (DHP), and AccuPAR Methods. Agric. For. Meteorol. 2014, 198199, 126141.

Fang, H.; Jiang, C.; Li, W.; Wei, S.; Baret, F.; Chen, J. M.; Garcia-Haro, J.; Liang, S.; Liu, R.; Myneni, R. B.; Pinty, B.; Xiao, Z.; Zhu, Z. Characterization and Intercomparison of Global Moderate Resolution Leaf Area Index (LAI) Products: Analysis of Climatologies and Theoretical Uncertainties. J. Geophys. Res. Biogeosciences 2013, 118 (2), 529548.

Fang, H.; Wei, S.; Jiang, C.; Scipal, K. Theoretical Uncertainty Analysis of Global MODIS, CYCLOPES, and GLOBCARBON LAI Products Using a Triple Collocation Method. Remote Sens. Environ. 2012, 124, 610621.


指导学生

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梁迎澳,硕士研究生,2023-

钱涛,硕士研究生,2023-

夏宇健,硕士研究生,2023-

杨睿元,硕士研究生,2023-

虞钟直,硕士研究生,2023-