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Scaling Biomass Measurements for Examining MODIS Derived Vegetation Products Matthew C. Reeves and Maosheng Zhao Numerical Terradynamic Simulation Group University of Montana Missoula, MT
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Objectives… Part 1: Discuss conversion of plot level biomass measurements to regional scales Part 2: Characterize effectiveness of MODIS products for monitoring grassland vegetation
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Part 1 Scaling Biomass Measurements
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Focuses on Little Missouri National Grasslands Climate: continental/semi-arid Vegetation: mixed grass prairie common in the northern Great Plains C3 : C4 ~ 70:30 Sampling was constrained to Federal Lands comprised of rolling prairie Study Area
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Little Missouri National Grasslands
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Focuses on Little Missouri National Grasslands Climate: continental/semi-arid Vegetation: mixed grass prairie common in the northern Great Plains C3 : C4 ~ 70:30 Sampling constrained to Federal grasslands Study Area
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Woody Stringer
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Methods… Collecting and Processing Field Measurements Data were collected at 2,200 plots (473 transects) during 2001 growing season Sampling Periods May 26 – 30 June 13 – 17 July 13 – 17 August 9 – 13 Measurements included: Beginning and ending GPS locations Clipping herbaceous biomass within 0.5m 2 quadrat Species composition Bare ground estimate Percentage of living vegetation estimated for each plot All biomass dried at 65°C for 48 hours
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ETM+ (30 m spatial resolution) approximately corresponding to each period of sampling was acquired (all image data clipped to grasslands) All four periods of ETM + imagery converted to NDVI (NIR – Red)/(NIR + Red) Spatial relations between NDVI and observed biomass explored included: 3*3, 5*5, 7*7 zonal mean Average NDVI by allotment Pt. In cell extraction 90, 150, 500 meter buffers around transects Average NDVI by zone of met. Influence Methods … scaling from plot frame to pixel ETM+ Imagery
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Methods … scaling from plot frame to pixel Meteorological Data Weather station data chosen within and adjacent to the LMNG Met data were screened Thiessen polygons were created around retained met. stations Information derived from meteorlogical data included: Summation of precipitation across varying time frames Water balance (Ppt. - P et ) Growing Degrees Days (T avg – T base )
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NCDC Weather Station Distribution Surrounding the Little Missouri National Grasslands Montana North Dakota
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Spatial Arrangement of Thiesson Polygons Montana North Dakota
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Montana North Dakota Vegetation Mosaic ~ 182,000 ha
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Biomass modeled as a function of ETM NDVI Precipitation Growing degree days NDVI = ETM+ Normalized difference vegetation index PPT sum = Summation of Precipitation from day 0 – time of sampling midpoint GDD = Summation of growing-degree day GDD opt =number of growing degree days required for peak of greenness Methods…scaling from plot frame to pixel Building the scaling model
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Methods…scaling from plot frame to pixel Validating the scaling model MAE = 4.22 Bias = -0.08
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Results… Regional Biomass prediction Influence of C4 species
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Results… Zonal Biomass prediction
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Part 2 Comparing and Characterizing MODIS Data
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250, 500, or 1000 meter spatial resolution GLOBAL COVERAGE EVERY 1-2 DAYS (Landsat 16 days) on-board calibration + 36 spectral channels ( AVHRR 5, TM 7, ETM+ 8) More accurate geo-location (within 0.1 pixels) Unprecedented processing and quality assurance tests before distribution DATA ARE FREE! MODIS MODERATE RESOLUTION IMAGING SPECTRORADIOMETER
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MOD 09Surface Reflectance MOD 11Land Surf. Temp. / Emissivity MOD 12Land Cover / Change MOD 13Vegetation Indices MOD 14Thermal Anomalies / Fire MOD 15 Leaf Area Index / FPAR MOD 17 Net Primary Production MOD 43BRDF / Albedo MOD 44Vegetation Continuous Fields MODIS LAND PRODUCTS
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Mod 15 Leaf Area Index (LAI) Conceptualized as a spatially continuous photosynthetically active layer Measures vertical density of projected leaf area Example: LAI of 2 = Two meters of vertically distributed leaf area per unit of land.
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Relating Temporal Trends of Leaf Area Index to Modeled Biomass LAI appears insensitive to small changes in biomass
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Some Zones Include High Proportion of Agricultural land
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Improving the Spatial Relations Between MODIS LAI and Modeled Biomass Agricultural zones removed NOTE:…relationship is strongest when biomass is at peak
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LAI and Biomass Change Through Time May - June June - July July - August LAI Biomass
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250 m footprint 1 km footprint Approximate location of Road MODIS Receives a More Spatially Averaged Spectral Response Than ETM
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Conclusions 1.Reliable conversion of plot level measurements to landscape scales possible 2.Spatial patterns of MODIS LAI are tightly linked with biomass 3.Temporal Trajectory of LAI with biomass is reliable 4.Comparing LAI with biomass is inherently difficult 5.Success of smaller regional studies depends on: intimate local knowledge Relatively large differences in biomass in a given time frame
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