Remote Sensing Data Assimilation in Dynamic Crop Models Using Particle Swarm Optimization

A growing world population, increasing prosperity in emerging countries, and shifts in energy and food demands necessitate a continuous increase in global agricultural production. Simultaneously, risks of extreme weather events and a slowing productivity growth in recent years has caused concerns ab...

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Main Authors: Matthias P. Wagner, Thomas Slawig, Alireza Taravat, Natascha Oppelt
Format: Article
Language:English
Published: MDPI AG 2020-02-01
Series:ISPRS International Journal of Geo-Information
Subjects:
Online Access:https://www.mdpi.com/2220-9964/9/2/105
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spelling doaj-a2f55991dc9d483c96862bfebbf8ddf12020-11-25T02:36:04ZengMDPI AGISPRS International Journal of Geo-Information2220-99642020-02-019210510.3390/ijgi9020105ijgi9020105Remote Sensing Data Assimilation in Dynamic Crop Models Using Particle Swarm OptimizationMatthias P. Wagner0Thomas Slawig1Alireza Taravat2Natascha Oppelt3Earth Observation and Modelling, Dept. of Geography, Kiel University, 24118 Kiel, GermanyAlgorithmic Optimal Control—CO<sub>2</sub> Uptake of the Ocean, Dept. of Computer Science, Kiel University, 24118 Kiel, GermanyEarth Observation and Modelling, Dept. of Geography, Kiel University, 24118 Kiel, GermanyEarth Observation and Modelling, Dept. of Geography, Kiel University, 24118 Kiel, GermanyA growing world population, increasing prosperity in emerging countries, and shifts in energy and food demands necessitate a continuous increase in global agricultural production. Simultaneously, risks of extreme weather events and a slowing productivity growth in recent years has caused concerns about meeting the demands in the future. Crop monitoring and timely yield predictions are an important tool to mitigate risk and ensure food security. A common approach is to combine the temporal simulation of dynamic crop models with a geospatial component by assimilating remote sensing data. To ensure reliable assimilation, handling of uncertainties in both models and the assimilated input data is crucial. Here, we present a new approach for data assimilation using particle swarm optimization (PSO) in combination with statistical distance metrics that allow for flexible handling of model and input uncertainties. We explored the potential of the newly proposed method in a case study by assimilating canopy cover (CC) information, obtained from Sentinel-2 data, into the AquaCrop-OS model to improve winter wheat yield estimation on the pixel- and field-level and compared the performance with two other methods (simple updating and extended Kalman filter). Our results indicate that the performance of the new method is superior to simple updating and similar or better than the extended Kalman filter updating. Furthermore, it was particularly successful in reducing bias in yield estimation.https://www.mdpi.com/2220-9964/9/2/105particle swarm optimization (pso)aquacrop-osdata assimilationuncertainty quantificationcrop yield estimationmodel updatingcanopy cover (cc)
collection DOAJ
language English
format Article
sources DOAJ
author Matthias P. Wagner
Thomas Slawig
Alireza Taravat
Natascha Oppelt
spellingShingle Matthias P. Wagner
Thomas Slawig
Alireza Taravat
Natascha Oppelt
Remote Sensing Data Assimilation in Dynamic Crop Models Using Particle Swarm Optimization
ISPRS International Journal of Geo-Information
particle swarm optimization (pso)
aquacrop-os
data assimilation
uncertainty quantification
crop yield estimation
model updating
canopy cover (cc)
author_facet Matthias P. Wagner
Thomas Slawig
Alireza Taravat
Natascha Oppelt
author_sort Matthias P. Wagner
title Remote Sensing Data Assimilation in Dynamic Crop Models Using Particle Swarm Optimization
title_short Remote Sensing Data Assimilation in Dynamic Crop Models Using Particle Swarm Optimization
title_full Remote Sensing Data Assimilation in Dynamic Crop Models Using Particle Swarm Optimization
title_fullStr Remote Sensing Data Assimilation in Dynamic Crop Models Using Particle Swarm Optimization
title_full_unstemmed Remote Sensing Data Assimilation in Dynamic Crop Models Using Particle Swarm Optimization
title_sort remote sensing data assimilation in dynamic crop models using particle swarm optimization
publisher MDPI AG
series ISPRS International Journal of Geo-Information
issn 2220-9964
publishDate 2020-02-01
description A growing world population, increasing prosperity in emerging countries, and shifts in energy and food demands necessitate a continuous increase in global agricultural production. Simultaneously, risks of extreme weather events and a slowing productivity growth in recent years has caused concerns about meeting the demands in the future. Crop monitoring and timely yield predictions are an important tool to mitigate risk and ensure food security. A common approach is to combine the temporal simulation of dynamic crop models with a geospatial component by assimilating remote sensing data. To ensure reliable assimilation, handling of uncertainties in both models and the assimilated input data is crucial. Here, we present a new approach for data assimilation using particle swarm optimization (PSO) in combination with statistical distance metrics that allow for flexible handling of model and input uncertainties. We explored the potential of the newly proposed method in a case study by assimilating canopy cover (CC) information, obtained from Sentinel-2 data, into the AquaCrop-OS model to improve winter wheat yield estimation on the pixel- and field-level and compared the performance with two other methods (simple updating and extended Kalman filter). Our results indicate that the performance of the new method is superior to simple updating and similar or better than the extended Kalman filter updating. Furthermore, it was particularly successful in reducing bias in yield estimation.
topic particle swarm optimization (pso)
aquacrop-os
data assimilation
uncertainty quantification
crop yield estimation
model updating
canopy cover (cc)
url https://www.mdpi.com/2220-9964/9/2/105
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AT alirezataravat remotesensingdataassimilationindynamiccropmodelsusingparticleswarmoptimization
AT nataschaoppelt remotesensingdataassimilationindynamiccropmodelsusingparticleswarmoptimization
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