Literature DB >> 33693391

Deep Learning Optimizes Data-Driven Representation of Soil Organic Carbon in Earth System Model Over the Conterminous United States.

Feng Tao1,2, Zhenghu Zhou3, Yuanyuan Huang4, Qianyu Li1,2, Xingjie Lu5,6, Shuang Ma6, Xiaomeng Huang1,2, Yishuang Liang1,2, Gustaf Hugelius7, Lifen Jiang6, Russell Doughty8, Zhehao Ren1, Yiqi Luo6.   

Abstract

Soil organic carbon (SOC) is a key component of the global carbon cycle, yet it is not well-represented in Earth system models to accurately predict global carbon dynamics in response to climate change. This novel study integrated deep learning, data assimilation, 25,444 vertical soil profiles, and the Community Land Model version 5 (CLM5) to optimize the model representation of SOC over the conterminous United States. We firstly constrained parameters in CLM5 using observations of vertical profiles of SOC in both a batch mode (using all individual soil layers in one batch) and at individual sites (site-by-site). The estimated parameter values from the site-by-site data assimilation were then either randomly sampled (random-sampling) to generate continentally homogeneous (constant) parameter values or maximally preserved for their spatially heterogeneous distributions (varying parameter values to match the spatial patterns from the site-by-site data assimilation) so as to optimize spatial representation of SOC in CLM5 through a deep learning technique (neural networking) over the conterminous United States. Comparing modeled spatial distributions of SOC by CLM5 to observations yielded increasing predictive accuracy from default CLM5 settings (R 2 = 0.32) to randomly sampled (0.36), one-batch estimated (0.43), and deep learning optimized (0.62) parameter values. While CLM5 with parameter values derived from random-sampling and one-batch methods substantially corrected the overestimated SOC storage by that with default model parameters, there were still considerable geographical biases. CLM5 with the spatially heterogeneous parameter values optimized from the neural networking method had the least estimation error and less geographical biases across the conterminous United States. Our study indicated that deep learning in combination with data assimilation can significantly improve the representation of SOC by complex land biogeochemical models.
Copyright © 2020 Tao, Zhou, Huang, Li, Lu, Ma, Huang, Liang, Hugelius, Jiang, Doughty, Ren and Luo.

Entities:  

Keywords:  Community Land Model version 5 (CLM5); Earth system model; data assimilation; deep learning; soil carbon dynamics; soil organic carbon representation

Year:  2020        PMID: 33693391      PMCID: PMC7931903          DOI: 10.3389/fdata.2020.00017

Source DB:  PubMed          Journal:  Front Big Data        ISSN: 2624-909X


  1 in total

1.  Bridging implementation gaps to connect large ecological datasets and complex models.

Authors:  Ann M Raiho; E Fleur Nicklen; Adrianna C Foster; Carl A Roland; Mevin B Hooten
Journal:  Ecol Evol       Date:  2021-12-14       Impact factor: 2.912

  1 in total

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