Assimilating Remote Sensing Phenological Information into the WOFOST Model for Rice Growth Simulation

Precise simulation of crop growth is crucial to yield estimation, agricultural field management, and climate change. Although assimilation of crop model and remote sensing data has been applied in crop growth simulation, few studies have considered optimizing the crop model with respect to phenology...

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Main Authors: Gaoxiang Zhou, Xiangnan Liu, Ming Liu
Format: Article
Language:English
Published: MDPI AG 2019-01-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/11/3/268
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spelling doaj-0788317650ac4def966f254d456174c92020-11-24T21:46:41ZengMDPI AGRemote Sensing2072-42922019-01-0111326810.3390/rs11030268rs11030268Assimilating Remote Sensing Phenological Information into the WOFOST Model for Rice Growth SimulationGaoxiang Zhou0Xiangnan Liu1Ming Liu2School of Information Engineering, China University of Geosciences, Beijing 100083, ChinaSchool of Information Engineering, China University of Geosciences, Beijing 100083, ChinaDepartment of Geography and Environmental Management, University of Waterloo, Waterloo, ON N2L 3G1, CanadaPrecise simulation of crop growth is crucial to yield estimation, agricultural field management, and climate change. Although assimilation of crop model and remote sensing data has been applied in crop growth simulation, few studies have considered optimizing the crop model with respect to phenology. In this study, we assimilated phenological information obtained from Moderate Resolution Imaging Spectroradiometer (MODIS) time series data into the World Food Study (WOFOST) model to improve the accuracy of rice growth simulation at the regional scale. The particle swarm optimization (PSO) algorithm was implemented to optimize the initial phenology development stage (IDVS) and transplanting date (TD) in the WOFOST model by minimizing the difference between simulated and observed phenology, including heading and maturity date. Assimilating phenology improved the accuracy of the rice growth simulation, with correlation coefficients (R) equal to 0.793, 0822, and 0.813 at three fieldwork dates. The performance of the proposed strategy is comparable with that of the enhanced vegetation index (EVI) time series assimilation strategy, with less computation time. Additionally, the result confirms that the proposed strategy could be applied with different spatial resolution images and the difference of simulated LAI<sub>mean</sub> is less than 0.35 in three experimental areas. This study offers a novel assimilation strategy with regard to the phenology development process, which is efficient and scalable for crop growth simulation.https://www.mdpi.com/2072-4292/11/3/268data assimilationWOFOST modelremote sensing penologyrice growth simulation
collection DOAJ
language English
format Article
sources DOAJ
author Gaoxiang Zhou
Xiangnan Liu
Ming Liu
spellingShingle Gaoxiang Zhou
Xiangnan Liu
Ming Liu
Assimilating Remote Sensing Phenological Information into the WOFOST Model for Rice Growth Simulation
Remote Sensing
data assimilation
WOFOST model
remote sensing penology
rice growth simulation
author_facet Gaoxiang Zhou
Xiangnan Liu
Ming Liu
author_sort Gaoxiang Zhou
title Assimilating Remote Sensing Phenological Information into the WOFOST Model for Rice Growth Simulation
title_short Assimilating Remote Sensing Phenological Information into the WOFOST Model for Rice Growth Simulation
title_full Assimilating Remote Sensing Phenological Information into the WOFOST Model for Rice Growth Simulation
title_fullStr Assimilating Remote Sensing Phenological Information into the WOFOST Model for Rice Growth Simulation
title_full_unstemmed Assimilating Remote Sensing Phenological Information into the WOFOST Model for Rice Growth Simulation
title_sort assimilating remote sensing phenological information into the wofost model for rice growth simulation
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2019-01-01
description Precise simulation of crop growth is crucial to yield estimation, agricultural field management, and climate change. Although assimilation of crop model and remote sensing data has been applied in crop growth simulation, few studies have considered optimizing the crop model with respect to phenology. In this study, we assimilated phenological information obtained from Moderate Resolution Imaging Spectroradiometer (MODIS) time series data into the World Food Study (WOFOST) model to improve the accuracy of rice growth simulation at the regional scale. The particle swarm optimization (PSO) algorithm was implemented to optimize the initial phenology development stage (IDVS) and transplanting date (TD) in the WOFOST model by minimizing the difference between simulated and observed phenology, including heading and maturity date. Assimilating phenology improved the accuracy of the rice growth simulation, with correlation coefficients (R) equal to 0.793, 0822, and 0.813 at three fieldwork dates. The performance of the proposed strategy is comparable with that of the enhanced vegetation index (EVI) time series assimilation strategy, with less computation time. Additionally, the result confirms that the proposed strategy could be applied with different spatial resolution images and the difference of simulated LAI<sub>mean</sub> is less than 0.35 in three experimental areas. This study offers a novel assimilation strategy with regard to the phenology development process, which is efficient and scalable for crop growth simulation.
topic data assimilation
WOFOST model
remote sensing penology
rice growth simulation
url https://www.mdpi.com/2072-4292/11/3/268
work_keys_str_mv AT gaoxiangzhou assimilatingremotesensingphenologicalinformationintothewofostmodelforricegrowthsimulation
AT xiangnanliu assimilatingremotesensingphenologicalinformationintothewofostmodelforricegrowthsimulation
AT mingliu assimilatingremotesensingphenologicalinformationintothewofostmodelforricegrowthsimulation
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