Title of article :
Assessing the utility of frequency dependent nudging for reducing biases in biogeochemical models
Author/Authors :
Ana Marissa Lagman، نويسنده , , Karl B. and Fennel، نويسنده , , Katja and Thompson، نويسنده , , Keith R. and Bianucci، نويسنده , , Laura، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Pages :
11
From page :
25
To page :
35
Abstract :
Bias errors, resulting from inaccurate boundary and forcing conditions, incorrect model parameterization, etc. are a common problem in environmental models including biogeochemical ocean models. While it is important to correct bias errors wherever possible, it is unlikely that any environmental model will ever be entirely free of such errors. Hence, methods for bias reduction are necessary. A widely used technique for online bias reduction is nudging, where simulated fields are continuously forced toward observations or a climatology. Nudging is robust and easy to implement, but suppresses high-frequency variability and introduces artificial phase shifts. As a solution to this problem Thompson et al. (2006) introduced frequency dependent nudging where nudging occurs only in prescribed frequency bands, typically centered on the mean and the annual cycle. They showed this method to be effective for eddy resolving ocean circulation models. Here we add a stability term to the previous form of frequency dependent nudging which makes the method more robust for non-linear biological models. Then we assess the utility of frequency dependent nudging for biological models by first applying the method to a simple predator–prey model and then to a 1D ocean biogeochemical model. In both cases we only nudge in two frequency bands centered on the mean and the annual cycle, and then assess how well the variability in higher frequency bands is recovered. We evaluate the effectiveness of frequency dependent nudging in comparison to conventional nudging and find significant improvements with the former.
Keywords :
Numerical Modeling , Biogeochemical Modeling , North Atlantic , bias reduction
Journal title :
Ocean Modelling
Serial Year :
2014
Journal title :
Ocean Modelling
Record number :
2282284
Link To Document :
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