globalchange  > 气候变化事实与影响
DOI: 10.5194/hess-22-871-2018
Scopus记录号: 2-s2.0-85041482732
论文题名:
State updating and calibration period selection to improve dynamic monthly streamflow forecasts for an environmental flow management application
作者: Gibbs M; S; , McInerney D; , Humphrey G; , Thyer M; A; , Maier H; R; , Dandy G; C; , Kavetski D
刊名: Hydrology and Earth System Sciences
ISSN: 10275606
出版年: 2018
卷: 22, 期:1
起始页码: 871
结束页码: 887
语种: 英语
Scopus关键词: Calibration ; Catchments ; Decision making ; Environmental management ; Information management ; Open channel flow ; Rain ; Runoff ; Stream flow ; Uncertainty analysis ; Water management ; Water resources ; Environmental decision making ; Planning applications ; Predictive performance ; Rainfall-runoff modeling ; Streamflow forecast ; Streamflow forecasting ; Traditional approaches ; Waterresource management ; Forecasting ; calibration ; catchment ; decision making ; drainage network ; forecasting method ; rainfall ; rainfall-runoff modeling ; seasonal variation ; streamflow ; water management ; water planning ; water resource ; Australia
英文摘要: Monthly to seasonal streamflow forecasts provide useful information for a range of water resource management and planning applications. This work focuses on improving such forecasts by considering the following two aspects: (1) state updating to force the models to match observations from the start of the forecast period, and (2) selection of a shorter calibration period that is more representative of the forecast period, compared to a longer calibration period traditionally used. The analysis is undertaken in the context of using streamflow forecasts for environmental flow water management of an open channel drainage network in southern Australia. Forecasts of monthly streamflow are obtained using a conceptual rainfall-runoff model combined with a post-processor error model for uncertainty analysis. This model set-up is applied to two catchments, one with stronger evidence of non-stationarity than the other. A range of metrics are used to assess different aspects of predictive performance, including reliability, sharpness, bias and accuracy. The results indicate that, for most scenarios and metrics, state updating improves predictive performance for both observed rainfall and forecast rainfall sources. Using the shorter calibration period also improves predictive performance, particularly for the catchment with stronger evidence of non-stationarity. The results highlight that a traditional approach of using a long calibration period can degrade predictive performance when there is evidence of non-stationarity. The techniques presented can form the basis for operational monthly streamflow forecasting systems and provide support for environmental decision-making.
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资源类型: 期刊论文
标识符: http://119.78.100.158/handle/2HF3EXSE/79391
Appears in Collections:气候变化事实与影响

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作者单位: School of Civil, Environmental and Mining Engineering, University of Adelaide, North Terrace, Adelaide, SA, Australia; Department of Environment, Water and Natural Resources, Government of South Australia, P.O. Box 1047, Adelaide, Australia

Recommended Citation:
Gibbs M,S,, McInerney D,et al. State updating and calibration period selection to improve dynamic monthly streamflow forecasts for an environmental flow management application[J]. Hydrology and Earth System Sciences,2018-01-01,22(1)
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