the Creative Commons Attribution 3.0 License.
the Creative Commons Attribution 3.0 License.
Daily reservoir inflow forecasting combining QPF into ANNs model
Abstract. Daily reservoir inflow predictions with lead-times of several days are essential to the operational planning and scheduling of hydroelectric power system. The demand for quantitative precipitation forecasting (QPF) is increasing in hydropower operation with the dramatic advances in the numerical weather prediction (NWP) models. This paper presents a simple and an effective algorithm for daily reservoir inflow predictions which solicits the observed precipitation, forecasted precipitation from QPF as predictors and discharges in following 1 to 6 days as predicted targets for multilayer perceptron artificial neural networks (MLP-ANNs) modeling. An improved error back-propagation algorithm with self-adaptive learning rate and self-adaptive momentum coefficient is used to make the supervised training procedure more efficient in both time saving and search optimization. Several commonly used error measures are employed to evaluate the performance of the proposed model and the results, compared with that of ARIMA model, show that the proposed model is capable of obtaining satisfactory forecasting not only in goodness of fit but also in generalization. Furthermore, the presented algorithm is integrated into a practical software system which has been severed for daily inflow predictions with lead-times varying from 1 to 6 days of more than twenty reservoirs operated by the Fujian Province Grid Company, China.
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RC S132: 'Review of paper HESSD 6: 121-150', Anonymous Referee #1, 20 Feb 2009
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AC S389: 'Response to Referee #1 ( part 1 )', Jun Zhang, 23 Mar 2009
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AC S402: 'Response to Referee #1 ( part 2 )', Jun Zhang, 23 Mar 2009
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AC S389: 'Response to Referee #1 ( part 1 )', Jun Zhang, 23 Mar 2009
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RC S159: 'Comments on 'Daily reservoir inflow ...'', Anonymous Referee #2, 25 Feb 2009
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AC S409: 'Response to Referee #2', Jun Zhang, 23 Mar 2009
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AC S409: 'Response to Referee #2', Jun Zhang, 23 Mar 2009


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RC S132: 'Review of paper HESSD 6: 121-150', Anonymous Referee #1, 20 Feb 2009
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AC S389: 'Response to Referee #1 ( part 1 )', Jun Zhang, 23 Mar 2009
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AC S402: 'Response to Referee #1 ( part 2 )', Jun Zhang, 23 Mar 2009
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AC S389: 'Response to Referee #1 ( part 1 )', Jun Zhang, 23 Mar 2009
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RC S159: 'Comments on 'Daily reservoir inflow ...'', Anonymous Referee #2, 25 Feb 2009
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AC S409: 'Response to Referee #2', Jun Zhang, 23 Mar 2009
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AC S409: 'Response to Referee #2', Jun Zhang, 23 Mar 2009
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Cited
8 citations as recorded by crossref.
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- Model fusion approach for monthly reservoir inflow forecasting Y. Bai et al. 10.2166/hydro.2016.141
- FUZZY INFERENCE SYSTEMS FOR MULTI-STEP AHEAD DAILY INFLOW FORECASTING I. Luna et al. 10.1590/0101-7438.2017.037.01.0129
- MONTHLY RESERVOIR INFLOW FORECASTING IN THAILAND: A COMPARISON OF ANN-BASED AND HISTORICAL ANALOUGE-BASED METHODS S. AMNATSAN et al. 10.2208/jscejhe.72.I_7
- Applying fuzzy grey modification model on inflow forecasting Y. Lin et al. 10.1016/j.engappai.2012.01.001
- Management of inflow forecasting studies I. Hidalgo et al. 10.2166/wpt.2015.050
- Multi-time-step ahead daily and hourly intermittent reservoir inflow prediction by artificial intelligent techniques using lumped and distributed data V. Jothiprakash & R. Magar 10.1016/j.jhydrol.2012.04.045
- Daily Runoff Forecasting Using a Hybrid Model Based on Variational Mode Decomposition and Deep Neural Networks X. He et al. 10.1007/s11269-019-2183-x