2020
DOI: 10.5194/nhess-2020-67
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Skill of large-scale seasonal drought impact forecasts

Abstract: Abstract. Forecasting drought impacts is still missing in drought early warning systems that presently do not go beyond hazard forecasting. Therefore, we developed drought impact functions using machine learning approaches (Logistic Regression and Random Forest) to predict drought impacts with a lead-time of 7 months ahead. The skill of the drought impact functions to forecast drought impacts was evaluated using the Brier Skill Score and Relative Operating Characteristic metrics for 5 Cases representing differ… Show more

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“…The performance of the drought forecasts was assessed using a commonly used metric called the Brier Score (BS) 27 . The BS has been used among many studies dealing with probabilistic forecasts 6,67,68 .…”
Section: Groundwater Recession Coefficient (Grc)mentioning
confidence: 99%
“…The performance of the drought forecasts was assessed using a commonly used metric called the Brier Score (BS) 27 . The BS has been used among many studies dealing with probabilistic forecasts 6,67,68 .…”
Section: Groundwater Recession Coefficient (Grc)mentioning
confidence: 99%