TY - JOUR
T1 - Dominant physical controls on hourly flow predictions and the role of spatial variability
T2 - Mahurangi catchment, New Zealand
AU - Atkinson, S. E.
AU - Sivapalan, M.
AU - Woods, R. A.
AU - Viney, N. R.
N1 - Funding Information:
The staff of the National Institute of Atmospheric Research, New Zealand, are thanked for providing all necessary data and information needed for this study, and for their continued support and encouragement. The first author was supported by the Australian Postgraduate Award provided by the Commonwealth Government of Australia through the University of Western Australia. CWR Reference ED 1558 SA.
PY - 2003/3
Y1 - 2003/3
N2 - We present a systematic approach to the development of models for making hourly flow predictions, where each step provides insight into the relative importance of catchment and climatic properties (rainfall, soil properties, vegetation, topography), their spatial variability, and their influence on temporal flow variability at the outlet. Our modelling approach uses a simple conceptual model design requiring minimal calibration and physically meaningful input parameters estimated a priori from landscape data or from analyses of streamflow recession curves. The model structure allows direct measurement of parameter uncertainty and the ability to investigate its propagation through the model to produce bounds of predictive uncertainty via the Monte Carlo method. This method was applied to a number of model designs to assess the tradeoff between model complexity, accuracy and predictive uncertainty, and to identify the most appropriate model design under specific climatic conditions. With the preferred model, sensitivity analysis was used to identify the dominant controls on streamflow variability at the hourly timescale. In summary the aim is not to present a distributed model of universal applicability, but to generate insights into the climate, soil and vegetation controls on streamflow variability at the hourly timescale, and on predictive accuracy and uncertainty, that can be used in future modelling efforts.
AB - We present a systematic approach to the development of models for making hourly flow predictions, where each step provides insight into the relative importance of catchment and climatic properties (rainfall, soil properties, vegetation, topography), their spatial variability, and their influence on temporal flow variability at the outlet. Our modelling approach uses a simple conceptual model design requiring minimal calibration and physically meaningful input parameters estimated a priori from landscape data or from analyses of streamflow recession curves. The model structure allows direct measurement of parameter uncertainty and the ability to investigate its propagation through the model to produce bounds of predictive uncertainty via the Monte Carlo method. This method was applied to a number of model designs to assess the tradeoff between model complexity, accuracy and predictive uncertainty, and to identify the most appropriate model design under specific climatic conditions. With the preferred model, sensitivity analysis was used to identify the dominant controls on streamflow variability at the hourly timescale. In summary the aim is not to present a distributed model of universal applicability, but to generate insights into the climate, soil and vegetation controls on streamflow variability at the hourly timescale, and on predictive accuracy and uncertainty, that can be used in future modelling efforts.
KW - Flooding
KW - Modelling
KW - Predictive uncertainty
KW - Process controls
KW - Spatial variability
KW - Timescales
KW - Ungauged catchments
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U2 - 10.1016/S0309-1708(02)00183-5
DO - 10.1016/S0309-1708(02)00183-5
M3 - Article
AN - SCOPUS:0037371102
SN - 0309-1708
VL - 26
SP - 219
EP - 235
JO - Advances in Water Resources
JF - Advances in Water Resources
IS - 3
ER -