Integrating Multiple Sources of Information for Improving Hydrological Modelling: an Ensemble Approach (e-bog) af Hartanto, Isnaeni Murdi

Integrating Multiple Sources of Information for Improving Hydrological Modelling: an Ensemble Approach e-bog

403,64 DKK (inkl. moms 504,55 DKK)
The availability of Earth observation and numerical weather prediction data for hydrological modelling and water management has increased significantly, creating a situation that today, for the same variable, estimates may be available from two or more sources of information. Yet, in hydrological modelling, usually, a particular set of catchment characteristics and input data is selected, possi...
E-bog 403,64 DKK
Forfattere Hartanto, Isnaeni Murdi (forfatter)
Forlag CRC Press
Udgivet 24 april 2019
Længde 176 sider
Genrer KNBW
Sprog English
Format pdf
Beskyttelse LCP
ISBN 9781000458688
The availability of Earth observation and numerical weather prediction data for hydrological modelling and water management has increased significantly, creating a situation that today, for the same variable, estimates may be available from two or more sources of information. Yet, in hydrological modelling, usually, a particular set of catchment characteristics and input data is selected, possibly ignoring other relevant data sources. In this thesis, therefore, a framework is being proposed to enable effective use of multiple data sources in hydrological modelling. In this framework, each available data source is used to derive catchment parameter values or input time series. Each unique combination of catchment and input data sources thus leads to a different hydrological simulation result: a new ensemble member. Together, the members form an ensemble of hydrological simulations. By following this approach, all available data sources are used effectively and their information is preserved. The framework also accommodates for applying multiple data-model integration methods, e.g. data assimilation. Each alternative integration method leads to yet another unique simulation result. Case study results for a distributed hydrological model of Rijnland, the Netherlands, show that the framework can be applied effectively, improve discharge simulation, and partially account for parameter and data uncertainty.