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A model-independent data assimilation (MIDA) module and its applications in ecologyModels are an important tool to predict Earth system dynamics. An accurate prediction of future states of ecosystems depends on not only model structures but also parameterizations. Model parameters can be constrained by data assimilation. However, applications of data assimilation to ecology are restricted by highly technical requirements such as model-dependent coding. To alleviate this technical burden, we developed a model-independent data assimilation (MIDA) module. MIDA works in three steps including data preparation, execution of data assimilation, and visualization. The first step prepares prior ranges of parameter values, a defined number of iterations, and directory paths to access files of observations and models. The execution step calibrates parameter values to best fit the observations and estimates the parameter posterior distributions. The final step automatically visualizes the calibration performance and posterior distributions. MIDA is model independent, and modelers can use MIDA for an accurate and efficient data assimilation in a simple and interactive way without modification of their original models. We applied MIDA to four types of ecological models: the data assimilation linked ecosystem carbon (DALEC) model, a surrogate-based energy exascale earth system model: the land component (ELM), nine phenological models and a stand-alone biome ecological strategy simulator (BiomeE). The applications indicate that MIDA can effectively solve data assimilation problems for different ecological models. Additionally, the easy implementation and model-independent feature of MIDA breaks the technical barrier of applications of data–model fusion in ecology. MIDA facilitates the assimilation of various observations into models for uncertainty reduction in ecological modeling and forecasting.
Document ID
20210020784
Acquisition Source
Goddard Space Flight Center
Document Type
Reprint (Version printed in journal)
Authors
Xin Huang
(Northern Arizona University Flagstaff, Arizona, United States)
Dan Lu
(Oak Ridge National Laboratory Oak Ridge, Tennessee, United States)
Daniel Ricciuto ORCID
(Oak Ridge National Laboratory Oak Ridge, Tennessee, United States)
Paul J. Hanson ORCID
(Oak Ridge National Laboratory Oak Ridge, Tennessee, United States)
Andrew D. Richardson ORCID
(Northern Arizona University Flagstaff, Arizona, United States)
Xuehe Lu
(Nanjing University Nanjing, China)
Ensheng Weng ORCID
(Columbia University New York, New York, United States)
Sheng Nie
(Chinese Academy of Sciences Beijing, Beijing, China)
Lifen Jiang
(Northern Arizona University Flagstaff, Arizona, United States)
Enqing Hou
(Northern Arizona University Flagstaff, Arizona, United States)
Igor F. Steinmacher
(Northern Arizona University Flagstaff, Arizona, United States)
Yiqi Luo ORCID
(Northern Arizona University Flagstaff, Arizona, United States)
Date Acquired
August 21, 2021
Publication Date
August 20, 2021
Publication Information
Publication: Geoscientific Model Development
Publisher: Copernicus / European Geosciences Union
Volume: 14
Issue: 8
Issue Publication Date: August 1, 2021
ISSN: 1991-959X
e-ISSN: 1991-9603
Subject Category
Meteorology And Climatology
Funding Number(s)
CONTRACT_GRANT: 80NSSC20M0282
CONTRACT_GRANT: DE-AC05- 00OR22725
CONTRACT_GRANT: NNH16ZDA001N-MAP
Distribution Limits
Public
Copyright
Use by or on behalf of the US Gov. Permitted.
Technical Review
External Peer Committee
Keywords
Earth system dynamics
prediction of future states
model structures
parameterizations
data assimilation
ecology
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