Performance and robustness of probabilistic river forecasts computed with quantile regression based on multiple independent variables
This study applies quantile regression (QR) to predict exceedance probabilities of various water levels, including flood stages, with combinations of deterministic forecasts, past forecast errors and rates of water level rise as independent variables. A computationally cheap technique to estimate f...
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doaj-5d731ca023c94b43afe278ee1fc561b52020-11-24T21:42:15ZengCopernicus PublicationsHydrology and Earth System Sciences1027-56061607-79382015-09-011993969399010.5194/hess-19-3969-2015Performance and robustness of probabilistic river forecasts computed with quantile regression based on multiple independent variablesF. Hoss0P. S. Fischbeck1Carnegie Mellon University, Department of Engineering & Public Policy, 5000 Forbes Avenue, Pittsburgh, PA 15213, USACarnegie Mellon University, Department of Engineering & Public Policy, 5000 Forbes Avenue, Pittsburgh, PA 15213, USAThis study applies quantile regression (QR) to predict exceedance probabilities of various water levels, including flood stages, with combinations of deterministic forecasts, past forecast errors and rates of water level rise as independent variables. A computationally cheap technique to estimate forecast uncertainty is valuable, because many national flood forecasting services, such as the National Weather Service (NWS), only publish deterministic single-valued forecasts. The study uses data from the 82 river gauges, for which the NWS' North Central River Forecast Center issues forecasts daily. Archived forecasts for lead times of up to 6 days from 2001 to 2013 were analyzed. Besides the forecast itself, this study uses the rate of rise of the river stage in the last 24 and 48 h and the forecast error 24 and 48 h ago as predictors in QR configurations. When compared to just using the forecast as an independent variable, adding the latter four predictors significantly improved the forecasts, as measured by the Brier skill score and the continuous ranked probability score. Mainly, the resolution increases, as the forecast-only QR configuration already delivered high reliability. Combining the forecast with the other four predictors results in a much less favorable performance. Lastly, the forecast performance does not strongly depend on the size of the training data set but on the year, the river gauge, lead time and event threshold that are being forecast. We find that each event threshold requires a separate configuration or at least calibration.http://www.hydrol-earth-syst-sci.net/19/3969/2015/hess-19-3969-2015.pdf |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
F. Hoss P. S. Fischbeck |
spellingShingle |
F. Hoss P. S. Fischbeck Performance and robustness of probabilistic river forecasts computed with quantile regression based on multiple independent variables Hydrology and Earth System Sciences |
author_facet |
F. Hoss P. S. Fischbeck |
author_sort |
F. Hoss |
title |
Performance and robustness of probabilistic river forecasts computed with quantile regression based on multiple independent variables |
title_short |
Performance and robustness of probabilistic river forecasts computed with quantile regression based on multiple independent variables |
title_full |
Performance and robustness of probabilistic river forecasts computed with quantile regression based on multiple independent variables |
title_fullStr |
Performance and robustness of probabilistic river forecasts computed with quantile regression based on multiple independent variables |
title_full_unstemmed |
Performance and robustness of probabilistic river forecasts computed with quantile regression based on multiple independent variables |
title_sort |
performance and robustness of probabilistic river forecasts computed with quantile regression based on multiple independent variables |
publisher |
Copernicus Publications |
series |
Hydrology and Earth System Sciences |
issn |
1027-5606 1607-7938 |
publishDate |
2015-09-01 |
description |
This study applies quantile regression (QR) to predict exceedance
probabilities of various water levels, including flood stages, with
combinations of deterministic forecasts, past forecast errors and rates of
water level rise as independent variables. A computationally cheap technique
to estimate forecast uncertainty is valuable, because many national flood
forecasting services, such as the National Weather Service (NWS), only
publish deterministic single-valued forecasts. The study uses data from the
82 river gauges, for which the NWS' North Central River Forecast Center
issues forecasts daily. Archived forecasts for lead times of up to 6 days
from 2001 to 2013 were analyzed. Besides the forecast itself, this study uses
the rate of rise of the river stage in the last 24 and 48 h and the
forecast error 24 and 48 h ago as predictors in QR configurations. When
compared to just using the forecast as an independent variable, adding the
latter four predictors significantly improved the forecasts, as measured by
the Brier skill score and the continuous ranked probability score. Mainly,
the resolution increases, as the forecast-only QR configuration already
delivered high reliability. Combining the forecast with the other four
predictors results in a much less favorable performance. Lastly, the forecast
performance does not strongly depend on the size of the training data set
but on the year, the river gauge, lead time and event threshold that are
being forecast. We find that each event threshold requires a separate
configuration or at least calibration. |
url |
http://www.hydrol-earth-syst-sci.net/19/3969/2015/hess-19-3969-2015.pdf |
work_keys_str_mv |
AT fhoss performanceandrobustnessofprobabilisticriverforecastscomputedwithquantileregressionbasedonmultipleindependentvariables AT psfischbeck performanceandrobustnessofprobabilisticriverforecastscomputedwithquantileregressionbasedonmultipleindependentvariables |
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