A derivative-free optimisation method for global ocean biogeochemical models.

Oliver, Sophy E., Cartis, Coralia, Kriest, Iris , Tett, Simon F. B. and Khatiwala, Samar (2022) A derivative-free optimisation method for global ocean biogeochemical models. Open Access Geoscientific Model Development, 15 . pp. 3537-3554. DOI 10.5194/gmd-15-3537-2022.

[thumbnail of gmd_15_3537_2022.pdf]
Preview
Text
gmd_15_3537_2022.pdf - Published Version
Available under License Creative Commons: Attribution 4.0.

Download (5MB) | Preview

Supplementary data:

Abstract

The skill of global ocean biogeochemical models, and the earth system models in which they are embedded, can be improved by systematic calibration of the parameter values against observations. However, such tuning is seldom undertaken as these models are computationally very expensive. Here we investigate the performance of DFO-LS, a local, derivative-free optimisation algorithm which has been designed for computationally expensive models with irregular model–data misfit landscapes typical of biogeochemical models. We use DFO-LS to calibrate six parameters of a relatively complex global ocean biogeochemical model (MOPS) against synthetic dissolved oxygen, phosphate and nitrate “observations” from a reference run of the same model with a known parameter configuration. The performance of DFO-LS is compared with that of CMA-ES, another derivative-free algorithm that was applied in a previous study to the same model in one of the first successful attempts at calibrating a global model of this complexity. We find that DFO-LS successfully recovers five of the six parameters in approximately 40 evaluations of the misfit function (each one requiring a 3000-year run of MOPS to equilibrium), while CMA-ES needs over 1200 evaluations. Moreover, DFO-LS reached a “baseline” misfit, defined by observational noise, in just 11–14 evaluations, whereas CMA-ES required approximately 340 evaluations. We also find that the performance of DFO-LS is not significantly affected by observational sparsity, however fewer parameters were successfully optimised in the presence of observational uncertainty. The results presented here suggest that DFO-LS is sufficiently inexpensive and robust to apply to the calibration of complex, global ocean biogeochemical models.

Document Type: Article
Keywords: biogeochemical models; biogeochemical simulations; TMM; Transport Matrix Method
Research affiliation: OceanRep > GEOMAR > FB2 Marine Biogeochemistry > FB2-BM Biogeochemical Modeling
Main POF Topic: PT6: Marine Life
Refereed: Yes
Open Access Journal?: Yes
Publisher: Copernicus Publications (EGU)
Date Deposited: 13 Jan 2022 08:43
Last Modified: 07 Feb 2024 15:43
URI: https://oceanrep.geomar.de/id/eprint/54808

Actions (login required)

View Item View Item