Modelling Crop Biomass from Synthetic Remote Sensing Time Series: Example for the DEMMIN Test Site, Germany

This study compares the performance of the five widely used crop growth models (CGMs): World Food Studies (WOFOST), Coalition for Environmentally Responsible Economies (CERES)-Wheat, AquaCrop, cropping systems simulation model (CropSyst), and the semi-empiric light use efficiency approach (LUE) for...

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Main Authors: Maninder Singh Dhillon, Thorsten Dahms, Carina Kuebert-Flock, Erik Borg, Christopher Conrad, Tobias Ullmann
Format: Article
Language:English
Published: MDPI AG 2020-06-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/12/11/1819
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spelling doaj-e90bf6040b0f4dcbb5652404ffaec18a2020-11-25T02:49:28ZengMDPI AGRemote Sensing2072-42922020-06-01121819181910.3390/rs12111819Modelling Crop Biomass from Synthetic Remote Sensing Time Series: Example for the DEMMIN Test Site, GermanyManinder Singh Dhillon0Thorsten Dahms1Carina Kuebert-Flock2Erik Borg3Christopher Conrad4Tobias Ullmann5Institute of Geography and Geology, Department of Remote Sensing, University of Wuerzburg, 97074 Wuerzburg, GermanyInstitute of Geography and Geology, Department of Remote Sensing, University of Wuerzburg, 97074 Wuerzburg, GermanyInstitute of Geography and Geology, Department of Remote Sensing, University of Wuerzburg, 97074 Wuerzburg, GermanyGerman Aerospace Center (DLR), German Remote Sensing Data Center, National Ground Segment, 17235 Neustrelitz, GermanyInstitute of Geosciences and Geography, Department of Geoecology and Physical Geography, Martin-Luther-University Halle-Wittenberg, 06120 Halle, GermanyInstitute of Geography and Geology, Department of Physical Geography, University of Wuerzburg, 97074 Wuerzburg, GermanyThis study compares the performance of the five widely used crop growth models (CGMs): World Food Studies (WOFOST), Coalition for Environmentally Responsible Economies (CERES)-Wheat, AquaCrop, cropping systems simulation model (CropSyst), and the semi-empiric light use efficiency approach (LUE) for the prediction of winter wheat biomass on the Durable Environmental Multidisciplinary Monitoring Information Network (DEMMIN) test site, Germany. The study focuses on the use of remote sensing (RS) data, acquired in 2015, in CGMs, as they offer spatial information on the actual conditions of the vegetation. Along with this, the study investigates the data fusion of Landsat (30 m) and Moderate Resolution Imaging Spectroradiometer (MODIS) (500 m) data using the spatial and temporal reflectance adaptive reflectance fusion model (STARFM) fusion algorithm. These synthetic RS data offer a 30-meter spatial and one-day temporal resolution. The dataset therefore provides the necessary information to run CGMs and it is possible to examine the fine-scale spatial and temporal changes in crop phenology for specific fields, or sub sections of them, and to monitor crop growth daily, considering the impact of daily climate variability. The analysis includes a detailed comparison of the simulated and measured crop biomass. The modelled crop biomass using synthetic RS data is compared to the model outputs using the original MODIS time series as well. On comparison with the MODIS product, the study finds the performance of CGMs more reliable, precise, and significant with synthetic time series. Using synthetic RS data, the models AquaCrop and LUE, in contrast to other models, simulate the winter wheat biomass best, with an output of high R<sup>2 </sup>(>0.82), low RMSE (<600 g/m<sup>2</sup>) and significant p-value (<0.05) during the study period. However, inputting MODIS data makes the models underperform, with low R<sup>2</sup> (<0.68) and high RMSE (>600 g/m<sup>2</sup>). The study shows that the models requiring fewer input parameters (AquaCrop and LUE) to simulate crop biomass are highly applicable and precise. At the same time, they are easier to implement than models, which need more input parameters (WOFOST and CERES-Wheat).https://www.mdpi.com/2072-4292/12/11/1819crop growth modelsLandsatMODISdata fusionSTARFMclimate parameters
collection DOAJ
language English
format Article
sources DOAJ
author Maninder Singh Dhillon
Thorsten Dahms
Carina Kuebert-Flock
Erik Borg
Christopher Conrad
Tobias Ullmann
spellingShingle Maninder Singh Dhillon
Thorsten Dahms
Carina Kuebert-Flock
Erik Borg
Christopher Conrad
Tobias Ullmann
Modelling Crop Biomass from Synthetic Remote Sensing Time Series: Example for the DEMMIN Test Site, Germany
Remote Sensing
crop growth models
Landsat
MODIS
data fusion
STARFM
climate parameters
author_facet Maninder Singh Dhillon
Thorsten Dahms
Carina Kuebert-Flock
Erik Borg
Christopher Conrad
Tobias Ullmann
author_sort Maninder Singh Dhillon
title Modelling Crop Biomass from Synthetic Remote Sensing Time Series: Example for the DEMMIN Test Site, Germany
title_short Modelling Crop Biomass from Synthetic Remote Sensing Time Series: Example for the DEMMIN Test Site, Germany
title_full Modelling Crop Biomass from Synthetic Remote Sensing Time Series: Example for the DEMMIN Test Site, Germany
title_fullStr Modelling Crop Biomass from Synthetic Remote Sensing Time Series: Example for the DEMMIN Test Site, Germany
title_full_unstemmed Modelling Crop Biomass from Synthetic Remote Sensing Time Series: Example for the DEMMIN Test Site, Germany
title_sort modelling crop biomass from synthetic remote sensing time series: example for the demmin test site, germany
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2020-06-01
description This study compares the performance of the five widely used crop growth models (CGMs): World Food Studies (WOFOST), Coalition for Environmentally Responsible Economies (CERES)-Wheat, AquaCrop, cropping systems simulation model (CropSyst), and the semi-empiric light use efficiency approach (LUE) for the prediction of winter wheat biomass on the Durable Environmental Multidisciplinary Monitoring Information Network (DEMMIN) test site, Germany. The study focuses on the use of remote sensing (RS) data, acquired in 2015, in CGMs, as they offer spatial information on the actual conditions of the vegetation. Along with this, the study investigates the data fusion of Landsat (30 m) and Moderate Resolution Imaging Spectroradiometer (MODIS) (500 m) data using the spatial and temporal reflectance adaptive reflectance fusion model (STARFM) fusion algorithm. These synthetic RS data offer a 30-meter spatial and one-day temporal resolution. The dataset therefore provides the necessary information to run CGMs and it is possible to examine the fine-scale spatial and temporal changes in crop phenology for specific fields, or sub sections of them, and to monitor crop growth daily, considering the impact of daily climate variability. The analysis includes a detailed comparison of the simulated and measured crop biomass. The modelled crop biomass using synthetic RS data is compared to the model outputs using the original MODIS time series as well. On comparison with the MODIS product, the study finds the performance of CGMs more reliable, precise, and significant with synthetic time series. Using synthetic RS data, the models AquaCrop and LUE, in contrast to other models, simulate the winter wheat biomass best, with an output of high R<sup>2 </sup>(>0.82), low RMSE (<600 g/m<sup>2</sup>) and significant p-value (<0.05) during the study period. However, inputting MODIS data makes the models underperform, with low R<sup>2</sup> (<0.68) and high RMSE (>600 g/m<sup>2</sup>). The study shows that the models requiring fewer input parameters (AquaCrop and LUE) to simulate crop biomass are highly applicable and precise. At the same time, they are easier to implement than models, which need more input parameters (WOFOST and CERES-Wheat).
topic crop growth models
Landsat
MODIS
data fusion
STARFM
climate parameters
url https://www.mdpi.com/2072-4292/12/11/1819
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