XF-SRKANDL-4
Research / Academic Paper ACTIVE

Toward global stochastic river flood modeling

Abstract Only — The full paper PDF is not available in the registry. This XFID was minted from the paper's title, authors, and year. Where available, an abstract is provided below; the link to the publisher's record is canonical.

Abstract

Abstract Global flood models integrate flood maps of constant probability in space, ignoring the correlation between sites and thus potentially misestimating the risk posed by extreme events. Stochastic flood models alleviate this issue through the simulation of flood events with a realistic spatial structure, yet their proliferation at large scales has historically been inhibited by data quality and computer availability. In this paper, we show, for the first time, the efficacy of modeled river discharge reanalyses in the characterization of flood spatial dependence in the absence of a dense stream gauge network. While global hydrological models may show poor correspondence with absolute observed river flows, we find that the rate at which they can simulate the joint occurrence of relative flow exceedances at two given locations is broadly similar to when a gauge‐based statistical model is used. Evidenced over the United States, flood events simulated using observed gauge data from the U.S. Geological Survey versus those generated using modeled streamflows have similar (i) distributions of site‐to‐site correlation strength, (ii) relationships between event size and return period, and, importantly, (iii) loss distributions when incorporated into a continental‐scale flood risk model. Extremal dependence is generally quantified less accurately on larger rivers, in arid climates, in mountainous terrain, and for the rarest high‐magnitude events. However, local‐scale errors are shown to broadly cancel each other out when combined, producing an unbiased flood spatial dependence model. These findings suggest that building accurate stochastic flood models worldwide may no longer be a distant aspiration.

Source: resolved

Document Metadata

Issuer
American Geophysical Union (AGU)
Document Type
Research / Academic Paper
Publication Year
2020
Retrieved
5 May 2026
Source
Contact XFID for Access
Record ID
XFSRKANDL4
Validation
Inferred by XFID

Topics

Climate RiskPhysical Climate Risk

Cited by (1)

Other RESEARCH documents in the registry that cite this work.

How to Cite This Record

Use the XFID in citations to create a stable, permanent reference that resolves to this registry entry regardless of the source URL.

Academic / report citation
American Geophysical Union (AGU) (2020). Toward global stochastic river flood modeling. XFID: XF-SRKANDL-4. Retrieved from https://xframework.id/XFSRKANDL4
Identifier only
XF-SRKANDL-4