Examination of high resolution rainfall products and satellite greenness indices for estimating patch and landscape forage biomass

Assessment of vegetation productivity on rangelands is needed to assist in timely decision making with regard to management of the livestock enterprise as well as to protect the natural resource. Characterization of the vegetation resource over large landscapes can be time consuming, expensive and a...

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Main Author: Angerer, Jay Peter
Other Authors: Wu, X. Ben
Format: Others
Language:en_US
Published: 2010
Subjects:
Online Access:http://hdl.handle.net/1969.1/ETD-TAMU-2827
http://hdl.handle.net/1969.1/ETD-TAMU-2827
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spelling ndltd-tamu.edu-oai-repository.tamu.edu-1969.1-ETD-TAMU-28272013-01-08T10:39:53ZExamination of high resolution rainfall products and satellite greenness indices for estimating patch and landscape forage biomassAngerer, Jay Petersimulation modelingNEXRADCMORPHNDVIforage biomasscokrigingMongoliaAssessment of vegetation productivity on rangelands is needed to assist in timely decision making with regard to management of the livestock enterprise as well as to protect the natural resource. Characterization of the vegetation resource over large landscapes can be time consuming, expensive and almost impossible to do on a near real-time basis. The overarching goal of this study was to examine available technologies for implementing near real-time systems to monitor forage biomass available to livestock on a given landscape. The primary objectives were to examine the ability of the Climate Prediction Center Morphing Product (CMORPH) and Next Generation Weather Radar (NEXRAD) rainfall products to detect and estimate rainfall at semi-arid sites in West Texas, to verify the ability of a simulation model (PHYGROW) to predict herbaceous biomass at selected sites (patches) in a semi-arid landscape using NEXRAD rainfall, and to examine the feasibility of using cokriging for integrating simulation model output and satellite greenness imagery (NDVI) for producing landscape maps of forage biomass in Mongolia’s Gobi region. The comparison of the NEXRAD and CMORPH rainfall products to gage collected rainfall revealed that NEXRAD outperformed the CMORPH rainfall with lower estimation bias, lower variability, and higher estimation efficiency. When NEXRAD was used as a driving variable in PHYGROW simulations that were calibrated using gage measured rainfall, model performance for estimating forage biomass was generally poor when compared to biomass measurements at the sites. However, when model simulations were calibrated using NEXRAD rainfall, performance in estimating biomass was substantially better. A suggested reason for the improved performance was that calibration with NEXRAD adjusted the model for the general over or underestimation of rainfall by the NEXRAD product. In the Gobi region of Mongolia, the PHYGROW model performed well in predicting forage biomass except for overestimations in the Forest Steppe zone. Cross-validation revealed that cokriging of PHYGROW output with NDVI as a covariate performed well during the majority of the growing season. Cokriging of simulation model output and NDVI appears to hold promise for producing landscape maps of forage biomass as part of near real-time forage monitoring systems.Wu, X. Ben2010-01-15T00:06:04Z2010-01-16T00:59:30Z2010-01-15T00:06:04Z2010-01-16T00:59:30Z2008-052009-05-15BookThesisElectronic Dissertationtextelectronicapplication/pdfborn digitalhttp://hdl.handle.net/1969.1/ETD-TAMU-2827http://hdl.handle.net/1969.1/ETD-TAMU-2827en_US
collection NDLTD
language en_US
format Others
sources NDLTD
topic simulation modeling
NEXRAD
CMORPH
NDVI
forage biomass
cokriging
Mongolia
spellingShingle simulation modeling
NEXRAD
CMORPH
NDVI
forage biomass
cokriging
Mongolia
Angerer, Jay Peter
Examination of high resolution rainfall products and satellite greenness indices for estimating patch and landscape forage biomass
description Assessment of vegetation productivity on rangelands is needed to assist in timely decision making with regard to management of the livestock enterprise as well as to protect the natural resource. Characterization of the vegetation resource over large landscapes can be time consuming, expensive and almost impossible to do on a near real-time basis. The overarching goal of this study was to examine available technologies for implementing near real-time systems to monitor forage biomass available to livestock on a given landscape. The primary objectives were to examine the ability of the Climate Prediction Center Morphing Product (CMORPH) and Next Generation Weather Radar (NEXRAD) rainfall products to detect and estimate rainfall at semi-arid sites in West Texas, to verify the ability of a simulation model (PHYGROW) to predict herbaceous biomass at selected sites (patches) in a semi-arid landscape using NEXRAD rainfall, and to examine the feasibility of using cokriging for integrating simulation model output and satellite greenness imagery (NDVI) for producing landscape maps of forage biomass in Mongolia’s Gobi region. The comparison of the NEXRAD and CMORPH rainfall products to gage collected rainfall revealed that NEXRAD outperformed the CMORPH rainfall with lower estimation bias, lower variability, and higher estimation efficiency. When NEXRAD was used as a driving variable in PHYGROW simulations that were calibrated using gage measured rainfall, model performance for estimating forage biomass was generally poor when compared to biomass measurements at the sites. However, when model simulations were calibrated using NEXRAD rainfall, performance in estimating biomass was substantially better. A suggested reason for the improved performance was that calibration with NEXRAD adjusted the model for the general over or underestimation of rainfall by the NEXRAD product. In the Gobi region of Mongolia, the PHYGROW model performed well in predicting forage biomass except for overestimations in the Forest Steppe zone. Cross-validation revealed that cokriging of PHYGROW output with NDVI as a covariate performed well during the majority of the growing season. Cokriging of simulation model output and NDVI appears to hold promise for producing landscape maps of forage biomass as part of near real-time forage monitoring systems.
author2 Wu, X. Ben
author_facet Wu, X. Ben
Angerer, Jay Peter
author Angerer, Jay Peter
author_sort Angerer, Jay Peter
title Examination of high resolution rainfall products and satellite greenness indices for estimating patch and landscape forage biomass
title_short Examination of high resolution rainfall products and satellite greenness indices for estimating patch and landscape forage biomass
title_full Examination of high resolution rainfall products and satellite greenness indices for estimating patch and landscape forage biomass
title_fullStr Examination of high resolution rainfall products and satellite greenness indices for estimating patch and landscape forage biomass
title_full_unstemmed Examination of high resolution rainfall products and satellite greenness indices for estimating patch and landscape forage biomass
title_sort examination of high resolution rainfall products and satellite greenness indices for estimating patch and landscape forage biomass
publishDate 2010
url http://hdl.handle.net/1969.1/ETD-TAMU-2827
http://hdl.handle.net/1969.1/ETD-TAMU-2827
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