Prediction of flood quantiles at ungauged catchments for the contiguous USA using Artificial Neural Networks

Filipova, Valeriya and Hammond, Anthony and Leedal, David and Lamb, Rob (2022) Prediction of flood quantiles at ungauged catchments for the contiguous USA using Artificial Neural Networks. Hydrology Research, 53 (1). pp. 107-123. ISSN 1998-9563

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Abstract

In this study, we utilise Artificial Neural Network (ANN) models to estimate the 100- and 1500-year return levels for around 900,000 ungauged catchments in the contiguous USA. The models were trained and validated using 4,079 gauges and several selected catchment descriptors out of a total of 25 available. The study area was split into 15 regions, which represent major watersheds. ANN models were developed for each region and evaluated by calculating several performance metrics such as root-mean-squared error (RMSE), coefficient of determination (R2) and absolute percent error. The availability of a large dataset of gauges made it possible to test different model architectures and assess the regional performance of the models. The results indicate that ANN models with only one hidden layer are sufficient to describe the relationship between flood quantiles and catchment descriptors. The regional performance depends on climate type as models perform worse in arid and humid continental climates. Overall, the study suggests that ANN models are particularly applicable for predicting ungauged flood quantiles across a large geographic area. The paper presents recommendations about future application of ANN in regional flood frequency analysis.

Item Type:
Journal Article
Journal or Publication Title:
Hydrology Research
Uncontrolled Keywords:
/dk/atira/pure/subjectarea/asjc/2300/2312
Subjects:
?? ANN MODELSFLOOD FREQUENCY ANALYSISMACHINE LEARNINGUNGAUGED BASINSWATER SCIENCE AND TECHNOLOGY ??
ID Code:
165740
Deposited By:
Deposited On:
08 Feb 2022 14:10
Refereed?:
Yes
Published?:
Published
Last Modified:
20 Sep 2023 01:48