Literature DB >> 28112848

Uncertain future soil carbon dynamics under global change predicted by models constrained by total carbon measurements.

Zhongkui Luo1, Enli Wang1, Osbert J Sun2.   

Abstract

Pool-based carbon (C) models are widely applied to predict soil C dynamics under global change and infer underlying mechanisms. However, it is unclear about the credibility of model-predicted C pool size, decay rate (k), and/or microbial C use efficiency (e) as only data on bulked total C is usually available for model constraining. Using observing system simulation experiments (OSSE), we constrained a two-pool model using simulated data sets of total soil C dynamics under topical hypotheses on responses of soil C dynamics to warming and elevated CO2 (i.e., global change scenarios). The results indicated that the model predicted great uncertainties in C pool size, k, and e under all global change scenarios, resulting in the difficulty to correctly infer the presupposed "real" values of those parameters that are used to generate the simulated total soil C for constraining the model. Furthermore, the model using the constrained parameters generated divergent future soil C dynamics. Compared with the predictions using the presupposed real parameters (i.e., the real future C dynamics), the percentage uncertainty in 100-yr predictions using the constrained parameters was up to 45% depending on global change scenarios and data availability for model-constraining. Such great uncertainty was mainly due to the high collinearity among the model parameters. Using pool-based models, we argue that soil C pool size, k, and/or e and their responses to global change have to be estimated explicitly and empirically, rather than through model-fitting, in order to accurately predict C dynamics and infer underlying mechanisms. The OSSE approach provides a powerful way to identify data requirement for the new generation of model development and test model performance.
© 2017 by the Ecological Society of America.

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Keywords:  Bayesian calibration; carbon use efficiency; data assimilation; decay rates; elevated CO2; global warming; identifiability and collinearity

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Year:  2017        PMID: 28112848     DOI: 10.1002/eap.1504

Source DB:  PubMed          Journal:  Ecol Appl        ISSN: 1051-0761            Impact factor:   4.657


  2 in total

1.  Global soil profiles indicate depth-dependent soil carbon losses under a warmer climate.

Authors:  Mingming Wang; Xiaowei Guo; Shuai Zhang; Liujun Xiao; Umakant Mishra; Yuanhe Yang; Biao Zhu; Guocheng Wang; Xiali Mao; Tian Qian; Tong Jiang; Zhou Shi; Zhongkui Luo
Journal:  Nat Commun       Date:  2022-09-20       Impact factor: 17.694

Review 2.  A framework for modelling soil structure dynamics induced by biological activity.

Authors:  Katharina Meurer; Jennie Barron; Claire Chenu; Elsa Coucheney; Matthew Fielding; Paul Hallett; Anke M Herrmann; Thomas Keller; John Koestel; Mats Larsbo; Elisabet Lewan; Dani Or; David Parsons; Nargish Parvin; Astrid Taylor; Harry Vereecken; Nicholas Jarvis
Journal:  Glob Chang Biol       Date:  2020-08-23       Impact factor: 10.863

  2 in total

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