2020
DOI: 10.3390/forecast2030013
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Benchmarking Real-Time Streamflow Forecast Skill in the Himalayan Region

Abstract: Improving decision-making in various areas of water policy and management (e.g., flood and drought preparedness, reservoir operation and hydropower generation) requires skillful streamflow forecasts. Despite the recent advances in hydrometeorological prediction, real-time streamflow forecasting over the Himalayas remains a critical issue and challenge, especially with complex basin physiography, shifting weather patterns and sparse and biased in-situ hydrometeorological monitoring data. In this study, … Show more

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Cited by 8 publications
(3 citation statements)
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References 40 publications
(41 reference statements)
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“…Compared to traditional fit metrics, such as RMSE or Nash-Sutcliffe Efficiency (NSE; Nash and Sutcliffe, 1970), the KGE provides more insight into the model skill and the ability to evaluate different components of overall error (Gupta et al, 2009;Fowler et al, 2018;Ghimire et al, 2020). A meaningful benchmark for the KGE is one in which the observed mean is used as a predictor and yields a KGE score of 1 -√ 2 ≈ −0.41 (Knoben et al, 2019).…”
Section: Methodsmentioning
confidence: 99%
“…Compared to traditional fit metrics, such as RMSE or Nash-Sutcliffe Efficiency (NSE; Nash and Sutcliffe, 1970), the KGE provides more insight into the model skill and the ability to evaluate different components of overall error (Gupta et al, 2009;Fowler et al, 2018;Ghimire et al, 2020). A meaningful benchmark for the KGE is one in which the observed mean is used as a predictor and yields a KGE score of 1 -√ 2 ≈ −0.41 (Knoben et al, 2019).…”
Section: Methodsmentioning
confidence: 99%
“…We obtain these datasets from the Department of Hydrology and Meteorology (DHM), Government of Nepal. A 24-h precipitation accumulation is observed using a standard (8″ diameter) manual rain gauges every day at 03 UTC, i.e., 8:45 AM local time (Talchabhadel et al 2017), temperature observations are taken with the mercury (alcohol) containing thermometers for maximum and minimum temperatures at 1.25-2 m above the surface (Karki et al 2020), and daily streamflow data corresponds to the streamflow based on the stage-discharge relation and the mean values of three water level readings recorded at 8 AM, 12 noon and 4 PM, local time (Ghimire et al 2020).…”
Section: Hydroclimatic Datasetsmentioning
confidence: 99%
“…Besides testing the neural network on the performance metrics presented above, the FFNN is compared with "persistence" as a benchmark [52][53][54][55][56][57][58][59]. The persistent model assumes the phenomenon maintains its characteristics, which means the velocity vector, the average and maximum reflectivity, and the area at time t remain constant for the following steps until t + 60.…”
Section: Model Performancementioning
confidence: 99%