Regional-scale data assimilation with the Spatially Explicit Individual-based Dynamic Global Vegetation Model (SEIB-DGVM) over Siberia

Abstract This study examined the regional performance of a data assimilation (DA) system that couples the particle filter and the Spatially Explicit Individual-based Dynamic Global Vegetation Model (SEIB-DGVM). This DA system optimizes model parameters of defoliation and photosynthetic rate, which a...

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Main Authors: Hazuki Arakida, Shunji Kotsuki, Shigenori Otsuka, Yohei Sawada, Takemasa Miyoshi
Format: Article
Language:English
Published: SpringerOpen 2021-09-01
Series:Progress in Earth and Planetary Science
Subjects:
Online Access:https://doi.org/10.1186/s40645-021-00443-6
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spelling doaj-ba04092e9d9b4d94b5833041a972f9812021-09-19T11:13:38ZengSpringerOpenProgress in Earth and Planetary Science2197-42842021-09-018111510.1186/s40645-021-00443-6Regional-scale data assimilation with the Spatially Explicit Individual-based Dynamic Global Vegetation Model (SEIB-DGVM) over SiberiaHazuki Arakida0Shunji Kotsuki1Shigenori Otsuka2Yohei Sawada3Takemasa Miyoshi4RIKEN Center for Computational ScienceRIKEN Center for Computational ScienceRIKEN Center for Computational ScienceRIKEN Center for Computational ScienceRIKEN Center for Computational ScienceAbstract This study examined the regional performance of a data assimilation (DA) system that couples the particle filter and the Spatially Explicit Individual-based Dynamic Global Vegetation Model (SEIB-DGVM). This DA system optimizes model parameters of defoliation and photosynthetic rate, which are sensitive to phenology in the SEIB-DGVM, by assimilating satellite-observed leaf area index (LAI). The experiments without DA overestimated LAIs over Siberia relative to the satellite-observed LAI, whereas the DA system successfully reduced the error. DA provided improved analyses for the LAI and other model variables consistently, with better match with satellite observed LAI and with previous studies for spatial distributions of the estimated overstory LAI, gross primary production (GPP), and aboveground biomass. However, three main issues still exist: (1) the estimated start date of defoliation for overstory was about 40 days earlier than the in situ observation, (2) the estimated LAI for understory was about half of the in situ observation, and (3) the estimated overstory LAI and the total GPP were overestimated compared to the previous studies. Further DA and modeling studies are needed to address these issues.https://doi.org/10.1186/s40645-021-00443-6Data assimilationParticle filterIndividual-based DGVMOverstory LAIPhenologySiberia
collection DOAJ
language English
format Article
sources DOAJ
author Hazuki Arakida
Shunji Kotsuki
Shigenori Otsuka
Yohei Sawada
Takemasa Miyoshi
spellingShingle Hazuki Arakida
Shunji Kotsuki
Shigenori Otsuka
Yohei Sawada
Takemasa Miyoshi
Regional-scale data assimilation with the Spatially Explicit Individual-based Dynamic Global Vegetation Model (SEIB-DGVM) over Siberia
Progress in Earth and Planetary Science
Data assimilation
Particle filter
Individual-based DGVM
Overstory LAI
Phenology
Siberia
author_facet Hazuki Arakida
Shunji Kotsuki
Shigenori Otsuka
Yohei Sawada
Takemasa Miyoshi
author_sort Hazuki Arakida
title Regional-scale data assimilation with the Spatially Explicit Individual-based Dynamic Global Vegetation Model (SEIB-DGVM) over Siberia
title_short Regional-scale data assimilation with the Spatially Explicit Individual-based Dynamic Global Vegetation Model (SEIB-DGVM) over Siberia
title_full Regional-scale data assimilation with the Spatially Explicit Individual-based Dynamic Global Vegetation Model (SEIB-DGVM) over Siberia
title_fullStr Regional-scale data assimilation with the Spatially Explicit Individual-based Dynamic Global Vegetation Model (SEIB-DGVM) over Siberia
title_full_unstemmed Regional-scale data assimilation with the Spatially Explicit Individual-based Dynamic Global Vegetation Model (SEIB-DGVM) over Siberia
title_sort regional-scale data assimilation with the spatially explicit individual-based dynamic global vegetation model (seib-dgvm) over siberia
publisher SpringerOpen
series Progress in Earth and Planetary Science
issn 2197-4284
publishDate 2021-09-01
description Abstract This study examined the regional performance of a data assimilation (DA) system that couples the particle filter and the Spatially Explicit Individual-based Dynamic Global Vegetation Model (SEIB-DGVM). This DA system optimizes model parameters of defoliation and photosynthetic rate, which are sensitive to phenology in the SEIB-DGVM, by assimilating satellite-observed leaf area index (LAI). The experiments without DA overestimated LAIs over Siberia relative to the satellite-observed LAI, whereas the DA system successfully reduced the error. DA provided improved analyses for the LAI and other model variables consistently, with better match with satellite observed LAI and with previous studies for spatial distributions of the estimated overstory LAI, gross primary production (GPP), and aboveground biomass. However, three main issues still exist: (1) the estimated start date of defoliation for overstory was about 40 days earlier than the in situ observation, (2) the estimated LAI for understory was about half of the in situ observation, and (3) the estimated overstory LAI and the total GPP were overestimated compared to the previous studies. Further DA and modeling studies are needed to address these issues.
topic Data assimilation
Particle filter
Individual-based DGVM
Overstory LAI
Phenology
Siberia
url https://doi.org/10.1186/s40645-021-00443-6
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