Neural Error Regression Diagnosis (NERD): A Tool for Model Bias Identification and Prognostic Data AssimilationSource: Journal of Hydrometeorology:;2006:;Volume( 007 ):;issue: 001::page 160Author:Abramowitz, Gab
,
Gupta, Hoshin
,
Pitman, Andy
,
Wang, Yingping
,
Leuning, Ray
,
Cleugh, Helen
,
Hsu, Kuo-lin
DOI: 10.1175/JHM479.1Publisher: American Meteorological Society
Abstract: Data assimilation in the field of predictive land surface modeling is generally limited to using observational data to estimate optimal model states or restrict model parameter ranges. To date, very little work has attempted to systematically define and quantify error resulting from a model's inherent inability to simulate the natural system. This paper introduces a data assimilation technique that moves toward this goal by accounting for those deficiencies in the model itself that lead to systematic errors in model output. This is done using a supervised artificial neural network to ?learn? and simulate systematic trends in the model output error. These simulations in turn are used to correct the model's output each time step. The technique is applied in two case studies, using fluxes of latent heat flux at one site and net ecosystem exchange (NEE) of carbon dioxide at another. Root-mean-square error (rmse) in latent heat flux per time step was reduced from 27.5 to 18.6 W m?2 (32%) and monthly from 9.91 to 3.08 W m?2 (68%). For NEE, rmse per time step was reduced from 3.71 to 2.70 ?mol m?2 s?1 (27%) and annually from 2.24 to 0.11 ?mol m?2 s?1 (95%). In both cases the correction provided significantly greater gains than single criteria parameter estimation on the same flux.
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| contributor author | Abramowitz, Gab | |
| contributor author | Gupta, Hoshin | |
| contributor author | Pitman, Andy | |
| contributor author | Wang, Yingping | |
| contributor author | Leuning, Ray | |
| contributor author | Cleugh, Helen | |
| contributor author | Hsu, Kuo-lin | |
| date accessioned | 2017-06-09T17:13:53Z | |
| date available | 2017-06-09T17:13:53Z | |
| date copyright | 2006/02/01 | |
| date issued | 2006 | |
| identifier issn | 1525-755X | |
| identifier other | ams-81485.pdf | |
| identifier uri | http://onlinelibrary.yabesh.ir/handle/yetl/4224493 | |
| description abstract | Data assimilation in the field of predictive land surface modeling is generally limited to using observational data to estimate optimal model states or restrict model parameter ranges. To date, very little work has attempted to systematically define and quantify error resulting from a model's inherent inability to simulate the natural system. This paper introduces a data assimilation technique that moves toward this goal by accounting for those deficiencies in the model itself that lead to systematic errors in model output. This is done using a supervised artificial neural network to ?learn? and simulate systematic trends in the model output error. These simulations in turn are used to correct the model's output each time step. The technique is applied in two case studies, using fluxes of latent heat flux at one site and net ecosystem exchange (NEE) of carbon dioxide at another. Root-mean-square error (rmse) in latent heat flux per time step was reduced from 27.5 to 18.6 W m?2 (32%) and monthly from 9.91 to 3.08 W m?2 (68%). For NEE, rmse per time step was reduced from 3.71 to 2.70 ?mol m?2 s?1 (27%) and annually from 2.24 to 0.11 ?mol m?2 s?1 (95%). In both cases the correction provided significantly greater gains than single criteria parameter estimation on the same flux. | |
| publisher | American Meteorological Society | |
| title | Neural Error Regression Diagnosis (NERD): A Tool for Model Bias Identification and Prognostic Data Assimilation | |
| type | Journal Paper | |
| journal volume | 7 | |
| journal issue | 1 | |
| journal title | Journal of Hydrometeorology | |
| identifier doi | 10.1175/JHM479.1 | |
| journal fristpage | 160 | |
| journal lastpage | 177 | |
| tree | Journal of Hydrometeorology:;2006:;Volume( 007 ):;issue: 001 | |
| contenttype | Fulltext |