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Skill assessment via cross-validation and Monte Carlo simulation: an application to Georges Bank plankton models

Skill assessment via cross-validation and Monte Carlo simulation: an application to Georges Bank plankton models
Skill assessment via cross-validation and Monte Carlo simulation: an application to Georges Bank plankton models
Better methods are required to assess the skill or uncertainty of plankton model predictions. A method is presented which combines cross-validation with simulated repeat samplings of the data (Monte Carlo simulation), in order to robustly estimate uncertainty in predictions beyond the calibration data (‘extra-sample’). The method is applied to compare two bulk models of chlorophyll on Georges Bank using the GLOBEC data set, accounting for data and forcing errors as well as prior uncertainty in all model parameters and initial conditions. The first model is a simple interpolation of chlorophyll data (‘inductive’ model), and serves as a baseline of predictive skill. The second is a simple process model forced by interannually-variable nutrient and mesozooplankton mean fields. Uncertainty in the process model forcings severely increases the extra-sample prediction variance (over repeat experiments). Although the process model can reproduce some of the interannual chlorophyll variability via top-down control by mesozooplankton, other predictions are strongly biased, possibly due to neglected boundary fluxes of chlorophyll. As a result, the new skill metrics generally favour the inductive model. By contrast, a standard skill metric based on calibration data misfit incorrectly favours the process model, mainly due to the neglect of extra-sample prediction variance.
0924-7963
134-150
Wallhead, Philip
4cecfc37-be86-4f8f-b77e-4725bbc17bd7
Martin, Adrian P.
9d0d480d-9b3c-44c2-aafe-bb980ed98a6d
Srokosz, Meric A.
1e0442ce-679f-43f2-8fe4-9a0f0174d483
Franks, Peter J.S.
6ab2b887-9042-40a8-a6ba-429bfbcdbe6d
Wallhead, Philip
4cecfc37-be86-4f8f-b77e-4725bbc17bd7
Martin, Adrian P.
9d0d480d-9b3c-44c2-aafe-bb980ed98a6d
Srokosz, Meric A.
1e0442ce-679f-43f2-8fe4-9a0f0174d483
Franks, Peter J.S.
6ab2b887-9042-40a8-a6ba-429bfbcdbe6d

Wallhead, Philip, Martin, Adrian P., Srokosz, Meric A. and Franks, Peter J.S. (2009) Skill assessment via cross-validation and Monte Carlo simulation: an application to Georges Bank plankton models. Journal of Marine Systems, 76 (1-2), 134-150. (doi:10.1016/j.jmarsys.2008.03.010).

Record type: Article

Abstract

Better methods are required to assess the skill or uncertainty of plankton model predictions. A method is presented which combines cross-validation with simulated repeat samplings of the data (Monte Carlo simulation), in order to robustly estimate uncertainty in predictions beyond the calibration data (‘extra-sample’). The method is applied to compare two bulk models of chlorophyll on Georges Bank using the GLOBEC data set, accounting for data and forcing errors as well as prior uncertainty in all model parameters and initial conditions. The first model is a simple interpolation of chlorophyll data (‘inductive’ model), and serves as a baseline of predictive skill. The second is a simple process model forced by interannually-variable nutrient and mesozooplankton mean fields. Uncertainty in the process model forcings severely increases the extra-sample prediction variance (over repeat experiments). Although the process model can reproduce some of the interannual chlorophyll variability via top-down control by mesozooplankton, other predictions are strongly biased, possibly due to neglected boundary fluxes of chlorophyll. As a result, the new skill metrics generally favour the inductive model. By contrast, a standard skill metric based on calibration data misfit incorrectly favours the process model, mainly due to the neglect of extra-sample prediction variance.

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Published date: 23 February 2009

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Local EPrints ID: 65895
URI: http://eprints.soton.ac.uk/id/eprint/65895
ISSN: 0924-7963
PURE UUID: 4a322702-e0c5-4b3e-ba84-9a90dc36a1ac

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Date deposited: 26 Mar 2009
Last modified: 13 Mar 2024 18:01

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Contributors

Author: Philip Wallhead
Author: Adrian P. Martin
Author: Meric A. Srokosz
Author: Peter J.S. Franks

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