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dc.contributor.authorGoswami, M.
dc.contributor.authorO'Connor, K. M.
dc.contributor.authorBhattarai, K. P.
dc.contributor.authorShamseldin, A. Y.
dc.date.accessioned2018-08-24T08:24:58Z
dc.date.available2018-08-24T08:24:58Z
dc.date.issued2005-10-07
dc.identifier.citationGoswami, M. O'Connor, K. M.; Bhattarai, K. P.; Shamseldin, A. Y. (2005). Assessing the performance of eight real-time updating models and procedures for the brosna river. Hydrology and Earth System Sciences 9 (4), 394-411
dc.identifier.issn1607-7938
dc.identifier.urihttp://hdl.handle.net/10379/9230
dc.description.abstractThe flow forecasting performance of eight updating models, incorporated in the Galway River Flow Modelling and Forecasting System (GFMFS), was assessed using daily data (rainfall, evaporation and discharge) of the Irish Brosna catchment (1207 km(2)), considering their one to six days lead-time discharge forecasts. The Perfect Forecast of Input over the Forecast Lead-lime scenario was adopted, where required, in place of actual rainfall forecasts. The eight updating models were: (i) the standard linear Auto-Regressive (AR) model, applied to the forecast errors (residuals) of a simulation (non-updating) rainfall-runoff model (it) the Neural Network Updating (N-NU) model, also using such residuals as inputs (iii) the Linear Transfer Function (LTF) model, applied to the simulated and the recently observed discharges; (iv) the Non-linear Auto-Regressive eXogenous-Input Model (NARXM), also a neural network-type structure, but having wide options of using recently observed values of one or more of the three data series, together with non-updated simulated outflows, as inputs; (v) the Parametric Simple Linear Model (PSLM), of LTF-type, using recent rainfall and observed discharge data; (vi) the Parametric Linear perturbation Model (PLPM), also of LTF-type, using recent rainfall and observed discharge data, (vii) n-AR, an AR model applied to the observed discharge series only, as a naive updating model; and (viii) n-NARXM, a naive form of the NARXM, using only the observed discharge data, excluding exogenous inputs. The five GFMFS simulation (non-updating) models used were the non-parametric and parametric forms of the Simple Linear Model and of the Linear Perturbation Model, the Linearly-Varying Gain Factor Model, the Artificial Neural Network Model, and the conceptual Soil Moisture Accounting and Routing (SMAR) model. As the SMAR model performance was found to be the best among these models, in terms of the Nash-Sutcliffe R-2 value, both in calibration and in verification, the simulated outflows of this model only were selected for the subsequent exercise of producing updated discharge forecasts. All the eight forms of updating models for producing leadtime discharge forecasts were found to be capable of producing relatively good lead-1 (1-day ahead) forecasts, with R values almost 90% or above. However, for higher lead time forecasts, only three updating models, viz., NARXM, LTF, and NNU, were found to be suitable, with lead-6 values of R-2 about 90% or higher. Graphical comparisons were made of the lead-time forecasts for the two largest floods, one in the calibration period and the other in the verification period.
dc.publisherCopernicus GmbH
dc.relation.ispartofHydrology and Earth System Sciences
dc.rightsAttribution-NonCommercial-NoDerivs 3.0 Ireland
dc.rights.urihttps://creativecommons.org/licenses/by-nc-nd/3.0/ie/
dc.subjectforecast updating
dc.subjectautoregressive model
dc.subjectlinear transfer function
dc.subjectneural networks
dc.subjectrainfall-runoff models
dc.subjectneural-network technique
dc.subjectvariable gain factor
dc.subjectconceptual-model
dc.subjectlarge catchments
dc.subjectflood
dc.subjecthydrology
dc.subjectoutputs
dc.subjectsearch
dc.titleAssessing the performance of eight real-time updating models and procedures for the brosna river
dc.typeArticle
dc.identifier.doi10.5194/hess-9-394-2005
dc.local.publishedsourcehttps://www.hydrol-earth-syst-sci.net/9/394/2005/hess-9-394-2005.pdf
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