Narrowband Bio-Indicator Monitoring of Temperate Forest Carbon Fluxes in Northeastern China
暂无分享,去创建一个
Shaoqiang Wang | Huimin Yan | Kun Huang | Quanzhou Yu | Robert Mickler | Lei Zhou | Diecong Chen | Shijie Han | Shaoqiang Wang | R. Mickler | Lei Zhou | Shijie Han | Huimin Yan | Kun Huang | Quanzhou Yu | Die Chen
[1] J. R. Evans. Photosynthesis and nitrogen relationships in leaves of C3 plants , 2004, Oecologia.
[2] Hans Peter Schmid,et al. Experimental design for flux measurements: matching scales of observations and fluxes , 1997 .
[3] Cristina Milesi,et al. User's Guide GPP and NPP (MOD17A2/A3) Products NASA MODIS Land Algorithm , 2003 .
[4] S. Goward,et al. Vegetation canopy PAR absorptance and the normalized difference vegetation index - An assessment using the SAIL model , 1992 .
[5] S. Warren,et al. A Model for the Spectral Albedo of Snow. I: Pure Snow , 1980 .
[6] J. William Munger,et al. Measurements of carbon sequestration by long‐term eddy covariance: methods and a critical evaluation of accuracy , 1996 .
[7] G. A. Blackburn,et al. Quantifying Chlorophylls and Caroteniods at Leaf and Canopy Scales: An Evaluation of Some Hyperspectral Approaches , 1998 .
[8] Marie-Louise Smith,et al. Analysis of hyperspectral data for estimation of temperate forest canopy nitrogen concentration: comparison between an airborne (AVIRIS) and a spaceborne (Hyperion) sensor , 2003, IEEE Trans. Geosci. Remote. Sens..
[9] S. Dobrowski,et al. Steady-state chlorophyll a fluorescence detection from canopy derivative reflectance and double-peak red-edge effects , 2003 .
[10] D. Roberts,et al. Using Imaging Spectroscopy to Study Ecosystem Processes and Properties , 2004 .
[11] Peter B. Reich,et al. Biogeochemistry: Taking stock of forest carbon , 2011 .
[12] Josep Peñuelas,et al. The photochemical reflectance index (PRI) and the remote sensing of leaf, canopy and ecosystem radiation use efficiencies: A review and meta-analysis , 2011 .
[13] Yuri A. Gritz,et al. Relationships between leaf chlorophyll content and spectral reflectance and algorithms for non-destructive chlorophyll assessment in higher plant leaves. , 2003, Journal of plant physiology.
[14] J. Peñuelas,et al. Assessment of photosynthetic radiation‐use efficiency with spectral reflectance , 1995 .
[15] Tim R. McVicar,et al. Preprocessing EO-1 Hyperion hyperspectral data to support the application of agricultural indexes , 2003, IEEE Trans. Geosci. Remote. Sens..
[16] Edward M. Barnes,et al. Remote Sensing of Cotton Nitrogen Status Using the Canopy Chlorophyll Content Index (CCCI) , 2008 .
[17] A. Arneth,et al. Global patterns of land-atmosphere fluxes of carbon dioxide, latent heat, and sensible heat derived from eddy covariance, satellite, and meteorological observations , 2011 .
[18] J. Chen,et al. A process-based boreal ecosystem productivity simulator using remote sensing inputs , 1997 .
[19] D. M. Moss,et al. Red edge spectral measurements from sugar maple leaves , 1993 .
[20] João Roberto dos Santos,et al. Relationships between Hyperion-derived vegetation indices, biophysical parameters, and elevation data in a Brazilian savannah environment , 2010 .
[21] Roberta E. Martin,et al. Carnegie Airborne Observatory-2: Increasing science data dimensionality via high-fidelity multi-sensor fusion , 2012 .
[22] C. Tucker. Red and photographic infrared linear combinations for monitoring vegetation , 1979 .
[23] K. Soudani,et al. Calibration and validation of hyperspectral indices for the estimation of broadleaved forest leaf chlorophyll content, leaf mass per area, leaf area index and leaf canopy biomass , 2008 .
[24] Bruce K. Wylie,et al. Gross Primary Productivity of the True Steppe in Central Asia in Relation to NDVI: Scaling up CO2 Fluxes , 2004 .
[25] Ramakrishna R. Nemani,et al. Mapping regional forest evapotranspiration and photosynthesis by coupling satellite data with ecosystem simulation , 1989 .
[26] G. Bonan. Forests and Climate Change: Forcings, Feedbacks, and the Climate Benefits of Forests , 2008, Science.
[27] Andrew E. Suyker,et al. Estimation of net ecosystem carbon exchange for the conterminous United States by combining MODIS and AmeriFlux data , 2008, Agricultural and Forest Meteorology.
[28] A. Skidmore,et al. Narrow band vegetation indices overcome the saturation problem in biomass estimation , 2004 .
[29] A. Huete,et al. Amazon rainforests green‐up with sunlight in dry season , 2006 .
[30] C. Daughtry,et al. Remote Sensing Leaf Chlorophyll Content Using a Visible Band Index , 2011 .
[31] G. A. Blackburn,et al. Hyperspectral remote sensing of plant pigments. , 2006, Journal of experimental botany.
[32] R. Kokaly,et al. Characterizing canopy biochemistry from imaging spectroscopy and its application to ecosystem studies , 2009 .
[33] John Shepanski,et al. Hyperion, a space-based imaging spectrometer , 2003, IEEE Trans. Geosci. Remote. Sens..
[34] Andrew E. Suyker,et al. Assessing net ecosystem carbon exchange of U.S. terrestrial ecosystems by integrating eddy covariance flux measurements and satellite observations , 2011 .
[35] Joe Landsberg,et al. Modelling forest ecosystems: state of the art, challenges, and future directions , 2003 .
[36] C. François,et al. Towards universal broad leaf chlorophyll indices using PROSPECT simulated database and hyperspectral reflectance measurements , 2004 .
[37] J. Peñuelas,et al. The red edge position and shape as indicators of plant chlorophyll content, biomass and hydric status. , 1994 .
[38] Guirui Yu,et al. Seasonal variation in carbon dioxide exchange over a 200-year-old Chinese broad-leaved Korean pine mixed forest , 2006 .
[39] Dennis D. Baldocchi,et al. Spatial and seasonal variability of photosynthetic parameters and their relationship to leaf nitrogen in a deciduous forest. , 2000, Tree physiology.
[40] S. Wold,et al. PLS-regression: a basic tool of chemometrics , 2001 .
[41] Elfatih M. Abdel-Rahman,et al. Random forest regression and spectral band selection for estimating sugarcane leaf nitrogen concentration using EO-1 Hyperion hyperspectral data , 2013 .
[42] Xiaomin Sun,et al. CO2 fluxes over an old, temperate mixed forest in northeastern China , 2006 .
[43] J. Ni,et al. Carbon storage in Chinese terrestrial ecosystems: approaching a more accurate estimate , 2013, Climatic Change.
[44] M. Cho,et al. An investigation into robust spectral indices for leaf chlorophyll estimation , 2011 .
[45] P. Gong,et al. Comparative Analysis of EO-1 ALI and Hyperion, and Landsat ETM+ Data for Mapping Forest Crown Closure and Leaf Area Index , 2008, Sensors.
[46] Ramakrishna R. Nemani,et al. Evaluation of remote sensing based terrestrial productivity from MODIS using regional tower eddy flux network observations , 2006, IEEE Transactions on Geoscience and Remote Sensing.
[47] A. Huete,et al. Overview of the radiometric and biophysical performance of the MODIS vegetation indices , 2002 .
[48] J. G. Lyon,et al. Hyperspectral Remote Sensing of Vegetation , 2011 .
[49] Jouni Pulliainen,et al. The behaviour of mast-borne spectra in a snow-covered boreal forest , 2012 .
[50] Limin Dai,et al. Spatial variation and temporal instability in the climate–growth relationship of Korean pine in the Changbai Mountain region of Northeast China , 2013 .
[51] C. Tucker,et al. Satellite remote sensing of primary production , 1986 .
[52] D. Baldocchi. Assessing the eddy covariance technique for evaluating carbon dioxide exchange rates of ecosystems: past, present and future , 2003 .
[53] Guirui Yu,et al. A preliminary study for spatial representiveness of flux observation at ChinaFLUX sites , 2006 .
[54] Zheng Niu,et al. An evaluation of EO-1 hyperspectral Hyperion data for chlorophyll content and leaf area index estimation , 2010 .
[55] P. Zarco-Tejada,et al. Spatio-temporal patterns of chlorophyll fluorescence and physiological and structural indices acquired from hyperspectral imagery as compared with carbon fluxes measured with eddy covariance , 2013 .
[56] J. Peñuelas,et al. Remote sensing of nitrogen and lignin in Mediterranean vegetation from AVIRIS data: Decomposing biochemical from structural signals , 2002 .
[57] Chaoyang Wu,et al. Estimating chlorophyll content from hyperspectral vegetation indices : Modeling and validation , 2008 .
[58] J. Lloyd,et al. On the temperature dependence of soil respiration , 1994 .
[59] R. Dickinson,et al. The role of satellite remote sensing in climate change studies , 2013 .
[60] Roberta E. Martin,et al. Carnegie Airborne Observatory: in-flight fusion of hyperspectral imaging and waveform light detection and ranging for three-dimensional studies of ecosystems , 2007 .
[61] E. Davidson,et al. Satellite-based modeling of gross primary production in an evergreen needleleaf forest , 2004 .
[62] Mary E. Martin,et al. HIGH SPECTRAL RESOLUTION REMOTE SENSING OF FOREST CANOPY LIGNIN, NITROGEN, AND ECOSYSTEM PROCESSES , 1997 .
[63] Raymond F. Kokaly,et al. EO-1 Hyperion Re(cid:2)ectance Time Series at Calibration and Validation Sites: Stability and Sensitivity to Seasonal Dynamics , 2014 .
[64] Dar A. Roberts,et al. Modeling spatially distributed ecosystem flux of boreal forest using hyperspectral indices from AVIRIS imagery , 2001 .
[65] G. Asner,et al. Drought stress and carbon uptake in an Amazon forest measured with spaceborne imaging spectroscopy. , 2004, Proceedings of the National Academy of Sciences of the United States of America.
[66] Susan L Ustin,et al. Remote sensing of canopy chemistry , 2013, Proceedings of the National Academy of Sciences.
[67] John A. Gamon,et al. Mapping carbon and water vapor fluxes in a chaparral ecosystem using vegetation indices derived from AVIRIS , 2006 .
[68] Andrew E. Suyker,et al. Gross primary production and light response parameters of four Southern Plains ecosystems estimated using long‐term CO2‐flux tower measurements , 2003 .