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Reservoir-based flood forecasting and warning: deep learning versus machine learningoa mark
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Publication Year
2024-11-01
Publisher
Springer Science and Business Media Deutschland GmbH
Citation
Applied Water Science, Vol.14
Keyword
Data-driven approachDeep learningFlood forecastingLead timeMachine learningTravel time
Mesh Keyword
Data-driven approachDeep learningFlood forecastingFlood warningLeadtimeMachine-learningRandom forestsSupport vector regressionsTravel-timeUrban areas
All Science Classification Codes (ASJC)
Water Science and Technology
Abstract
In response to increasing flood risks driven by the climate crisis, urban areas require advanced forecasting and informed decision-making to support sustainable development. This study seeks to improve the reliability of reservoir-based flood forecasting and ensure adequate lead time for effective response measures. The main objectives are to predict hourly downstream flood discharge at a reference point, compare discharge predictions from a single reservoir with a four-hour lead time against those from three reservoirs with a seven-hour lead time, and evaluate the accuracy of data-driven approaches. The study takes place in the Han River Basin, located in Seoul, South Korea. Approaches include two non-deep learning (NDL) (random forest (RF), support vector regression (SVR)) and two deep learning (DL) (long short-term memory (LSTM), gated recurrent unit (GRU)). Scenario 1 incorporates data from three reservoirs, while Scenario 2 focuses solely on Paldang reservoir. Results show that RF performed 4.03% (in R2) better than SVR, while GRU performed 4.69% (in R2) better than LSTM in Scenario 1. In Scenario 2, none of the models showed any outstanding performance. Based on these findings, we propose a two-step reservoir-based approach: Initial predictions should utilize models for three upstream reservoirs with long lead time, while closer to the event, the model should focus on a single reservoir with more accurate prediction. This work stands as a significant contribution, making accurate and well-timed predictions for the local administrations to issue flood warnings and execute evacuations to mitigate flood damage and casualties in urban areas.
Language
eng
URI
https://dspace.ajou.ac.kr/dev/handle/2018.oak/34521
DOI
https://doi.org/10.1007/s13201-024-02298-w
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YI, Jae Eung Image
YI, Jae Eung이재응
Department of Civil Systems Engineering
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