Benchmark dataset of historical annual peak floods classified by causal mechanisms for select US river basins

Journal of Hydrologic Engineering
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Abstract

Considering the causal mechanisms of floods can improve estimates of flood recurrence intervals given that certain flood types can be associated with higher magnitude and more damaging floods. However, few verified datasets of flood types are available to validate the semiautomated and automated classification algorithms needed to apply flood-typing across large hydrologically diverse regions. To address this gap, a benchmark dataset of manually classified flood types was compiled for 1,763 annual maximum flood peaks from 18 stream gauges in six different river basins across the conterminous United States from 1851 to 2022. Within each basin, three representative stream gauges were selected for manual flood typing. A flexible classification framework is introduced that facilitates flood typing across hydrologically diverse regions and accommodates unique combinations of weather and antecedent watershed conditions specific to each region. Floods were manually typed by domain experts using multiple lines of evidence to identify a primary surface water input of each flood (rainfall, snowmelt, or both) and, if relevant, associated storm type and secondary causal mechanisms characterizing antecedent watershed conditions. Across all the study basins, 49% of historical annual maximum flood peaks were attributable to rainfall, 28% to snowmelt, 22% to mixed precipitation, and 1% could not be assigned to a mechanism due to missing or incomplete data. The proposed flood-typing schema supports varying levels of flood typing specificity required for mixed population flood-frequency analysis, flood-type-specific design hydrographs, water quality response studies, and additional applications. This detailed, manually determined benchmark dataset serves as a resource that can be used developing and validating automated or machine learning-based algorithms capable of operationalizing expanded flood peak information.

Suggested Citation

Hamshaw, S.D., Baker, K.K., Barth, N.A., Bartles, M., Breverman, A., Cook, C., Fox, M., Glas, R.L., Hecht, J.S., Irizarry-Ortiz, M.M., Karlovits, G., LeNoir, J.M., Mika, M., Morrison, A., Murphy, S.Y., Shaloka, E., Taylor, N.J., and Wiche, G.J., 2026, Benchmark dataset of historical annual peak floods classified by causal mechanisms for select US river basins: Journal of Hydrologic Engineering, v. 31, no. 4, 04026030, 15 p., https://doi.org/10.1061/JHYEFF.HEENG-6758.

Study Area

Publication type Article
Publication Subtype Journal Article
Title Benchmark dataset of historical annual peak floods classified by causal mechanisms for select US river basins
Series title Journal of Hydrologic Engineering
DOI 10.1061/JHYEFF.HEENG-6758
Volume 31
Issue 4
Publication Date June 13, 2026
Year Published 2026
Language English
Publisher ASCE
Contributing office(s) WMA - Integrated Modeling and Prediction Division
Description 04026030, 15 p.
Country United States
Other Geospatial conterminous United States
Additional publication details