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Water Quality Modelling in Rivers with Limited Observational Data: River Elbe Case Study.

Research output: Contribution in Book/Report/Proceedings - With ISBN/ISSNChapter

Published

Standard

Water Quality Modelling in Rivers with Limited Observational Data: River Elbe Case Study. / Romanowicz, Renata J.; Callies, Ulrich; Young, Peter C.
Proceedings of the iEMSs 2004 international congress: complexity and intergrated resources management. ed. / C. Pahl-Wostl; S. Schmidt; T. Jakeman. Osnabruech, Germany: International Environmental Modelling and Software Soc., 2004. p. 235-245.

Research output: Contribution in Book/Report/Proceedings - With ISBN/ISSNChapter

Harvard

Romanowicz, RJ, Callies, U & Young, PC 2004, Water Quality Modelling in Rivers with Limited Observational Data: River Elbe Case Study. in C Pahl-Wostl, S Schmidt & T Jakeman (eds), Proceedings of the iEMSs 2004 international congress: complexity and intergrated resources management. International Environmental Modelling and Software Soc., Osnabruech, Germany, pp. 235-245. <http://www.iemss.org/iemss2004/sessions/../pdf/ungauged/romawate.pdf>

APA

Romanowicz, R. J., Callies, U., & Young, P. C. (2004). Water Quality Modelling in Rivers with Limited Observational Data: River Elbe Case Study. In C. Pahl-Wostl, S. Schmidt, & T. Jakeman (Eds.), Proceedings of the iEMSs 2004 international congress: complexity and intergrated resources management (pp. 235-245). International Environmental Modelling and Software Soc.. http://www.iemss.org/iemss2004/sessions/../pdf/ungauged/romawate.pdf

Vancouver

Romanowicz RJ, Callies U, Young PC. Water Quality Modelling in Rivers with Limited Observational Data: River Elbe Case Study. In Pahl-Wostl C, Schmidt S, Jakeman T, editors, Proceedings of the iEMSs 2004 international congress: complexity and intergrated resources management. Osnabruech, Germany: International Environmental Modelling and Software Soc. 2004. p. 235-245

Author

Romanowicz, Renata J. ; Callies, Ulrich ; Young, Peter C. / Water Quality Modelling in Rivers with Limited Observational Data: River Elbe Case Study. Proceedings of the iEMSs 2004 international congress: complexity and intergrated resources management. editor / C. Pahl-Wostl ; S. Schmidt ; T. Jakeman. Osnabruech, Germany : International Environmental Modelling and Software Soc., 2004. pp. 235-245

Bibtex

@inbook{14c5bca2875049a9a203065f2df158d5,
title = "Water Quality Modelling in Rivers with Limited Observational Data: River Elbe Case Study.",
abstract = "Water quality predictions in an ungauged catchment require the development of a model that is able to capture the basic physical features of the process and depends only on variables that are easily available. From this point of view, the model has similar requirements to those used in future climate scenario analysis. The mechanistic water quality model, developed in GKSS, Germany, for the purpose of climate change analysis, uses only climatic variables, such as temperature, radiation and discharge, to predict the time variability of algae concentrations. This paper presents the development of a statistical analogue to this mechanistic model. The goal of this research is the derivation of a data-based model that has the minimum number of parameters required to explain the data and, at the same time, is able to represent the physical features of the process (a Data-Based Mechanistic or DBM model). The approximation of the mechanistic model is obtained by a statistical analysis of the relations between the model input and output variables, as well as the linearisation of the mechanistic algae equations, leading to the development of a statistically tractable model. The result of this analysis is a nonlinear, Multi Input Single Output (MISO) transfer function model that provides a statistical counterpart of the mechanistic algae model. The model is used to reconstruct hourly chlorophyll-a concentrations (a measure of algae concentrations) during the “pre-unification of Germany ” period (before 1990) in the River Elbe, Germany. The uncertainty of the predictions is assessed and the results are validated against available monthly chlorophyll-a measurements.",
author = "Romanowicz, {Renata J.} and Ulrich Callies and Young, {Peter C.}",
year = "2004",
language = "English",
pages = "235--245",
editor = "C. Pahl-Wostl and S. Schmidt and T. Jakeman",
booktitle = "Proceedings of the iEMSs 2004 international congress: complexity and intergrated resources management",
publisher = "International Environmental Modelling and Software Soc.",

}

RIS

TY - CHAP

T1 - Water Quality Modelling in Rivers with Limited Observational Data: River Elbe Case Study.

AU - Romanowicz, Renata J.

AU - Callies, Ulrich

AU - Young, Peter C.

PY - 2004

Y1 - 2004

N2 - Water quality predictions in an ungauged catchment require the development of a model that is able to capture the basic physical features of the process and depends only on variables that are easily available. From this point of view, the model has similar requirements to those used in future climate scenario analysis. The mechanistic water quality model, developed in GKSS, Germany, for the purpose of climate change analysis, uses only climatic variables, such as temperature, radiation and discharge, to predict the time variability of algae concentrations. This paper presents the development of a statistical analogue to this mechanistic model. The goal of this research is the derivation of a data-based model that has the minimum number of parameters required to explain the data and, at the same time, is able to represent the physical features of the process (a Data-Based Mechanistic or DBM model). The approximation of the mechanistic model is obtained by a statistical analysis of the relations between the model input and output variables, as well as the linearisation of the mechanistic algae equations, leading to the development of a statistically tractable model. The result of this analysis is a nonlinear, Multi Input Single Output (MISO) transfer function model that provides a statistical counterpart of the mechanistic algae model. The model is used to reconstruct hourly chlorophyll-a concentrations (a measure of algae concentrations) during the “pre-unification of Germany ” period (before 1990) in the River Elbe, Germany. The uncertainty of the predictions is assessed and the results are validated against available monthly chlorophyll-a measurements.

AB - Water quality predictions in an ungauged catchment require the development of a model that is able to capture the basic physical features of the process and depends only on variables that are easily available. From this point of view, the model has similar requirements to those used in future climate scenario analysis. The mechanistic water quality model, developed in GKSS, Germany, for the purpose of climate change analysis, uses only climatic variables, such as temperature, radiation and discharge, to predict the time variability of algae concentrations. This paper presents the development of a statistical analogue to this mechanistic model. The goal of this research is the derivation of a data-based model that has the minimum number of parameters required to explain the data and, at the same time, is able to represent the physical features of the process (a Data-Based Mechanistic or DBM model). The approximation of the mechanistic model is obtained by a statistical analysis of the relations between the model input and output variables, as well as the linearisation of the mechanistic algae equations, leading to the development of a statistically tractable model. The result of this analysis is a nonlinear, Multi Input Single Output (MISO) transfer function model that provides a statistical counterpart of the mechanistic algae model. The model is used to reconstruct hourly chlorophyll-a concentrations (a measure of algae concentrations) during the “pre-unification of Germany ” period (before 1990) in the River Elbe, Germany. The uncertainty of the predictions is assessed and the results are validated against available monthly chlorophyll-a measurements.

M3 - Chapter

SP - 235

EP - 245

BT - Proceedings of the iEMSs 2004 international congress: complexity and intergrated resources management

A2 - Pahl-Wostl, C.

A2 - Schmidt, S.

A2 - Jakeman, T.

PB - International Environmental Modelling and Software Soc.

CY - Osnabruech, Germany

ER -