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Development and application of a hybrid artificial neural network model for simulating future stream flows in catchments with limited in situ observed data

Mugume, Seith N. ; Murungi, James ; Nyenje, Philip M. ; Sempewo, Jotham Ivan ; Okedi, John and Sörensen, Johanna LU orcid (2024) In Journal of Hydroinformatics 26(8). p.1944-1969
Abstract

The need to develop new and computationally efficient artificial intelligence models that accurately simulate river flows in data-scarce regions, considering not only current but also projected future climate change conditions is vital. In this study, a hybrid artificial neural network (ANN) model that combines HEC-HMS and the feed-forward neural network (FFNN) was developed in the Python programming language and applied to simulate future stream flows in the River Mayanja catchment in Central Uganda. The study results suggest that the performance of the validated hybrid HEC-HMS-ANN model during calibration and validation (NSE and R2 ≻ 0.99) was more superior to the corresponding performance obtained using individual HEC-HMS... (More)

The need to develop new and computationally efficient artificial intelligence models that accurately simulate river flows in data-scarce regions, considering not only current but also projected future climate change conditions is vital. In this study, a hybrid artificial neural network (ANN) model that combines HEC-HMS and the feed-forward neural network (FFNN) was developed in the Python programming language and applied to simulate future stream flows in the River Mayanja catchment in Central Uganda. The study results suggest that the performance of the validated hybrid HEC-HMS-ANN model during calibration and validation (NSE and R2 ≻ 0.99) was more superior to the corresponding performance obtained using individual HEC-HMS (NSE and R2 ≻ 0.50), MIKE HYDRO (NSE and R2 ≻ 0.42), and ANN models (NSE and R2 ≻ 0.56). Using the developed hybrid ANN model, future average daily stream flows are projected to increase by up to 17.3% [2.2–39.5%] and 18.5% [0.8–42.7%] considering the SSP2-4.5 and SSP5-8.5 future climate change scenarios. The study demonstrates that well-trained hybrid ANN models could provide more computationally efficient models for the simulation of future stream flow and for undertaking water resource assessments in catchments with limited in situ observed data.

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author
; ; ; ; and
organization
publishing date
type
Contribution to journal
publication status
published
subject
keywords
artificial neural networks, climate change, data scarcity, hybrid models, stream flow modelling
in
Journal of Hydroinformatics
volume
26
issue
8
pages
26 pages
publisher
IWA Publishing
external identifiers
  • scopus:85203160557
ISSN
1464-7141
DOI
10.2166/hydro.2024.066
project
Facilitating early adoption of Blue-Green Infrastructure for urban water system adaptation in Eastern Africa
language
English
LU publication?
yes
id
c8ef9e63-1bba-4943-b148-9464bc31b3ec
date added to LUP
2024-11-26 10:52:14
date last changed
2025-04-29 22:43:14
@article{c8ef9e63-1bba-4943-b148-9464bc31b3ec,
  abstract     = {{<p>The need to develop new and computationally efficient artificial intelligence models that accurately simulate river flows in data-scarce regions, considering not only current but also projected future climate change conditions is vital. In this study, a hybrid artificial neural network (ANN) model that combines HEC-HMS and the feed-forward neural network (FFNN) was developed in the Python programming language and applied to simulate future stream flows in the River Mayanja catchment in Central Uganda. The study results suggest that the performance of the validated hybrid HEC-HMS-ANN model during calibration and validation (NSE and R<sup>2</sup> ≻ 0.99) was more superior to the corresponding performance obtained using individual HEC-HMS (NSE and R<sup>2</sup> ≻ 0.50), MIKE HYDRO (NSE and R<sup>2</sup> ≻ 0.42), and ANN models (NSE and R<sup>2</sup> ≻ 0.56). Using the developed hybrid ANN model, future average daily stream flows are projected to increase by up to 17.3% [2.2–39.5%] and 18.5% [0.8–42.7%] considering the SSP2-4.5 and SSP5-8.5 future climate change scenarios. The study demonstrates that well-trained hybrid ANN models could provide more computationally efficient models for the simulation of future stream flow and for undertaking water resource assessments in catchments with limited in situ observed data.</p>}},
  author       = {{Mugume, Seith N. and Murungi, James and Nyenje, Philip M. and Sempewo, Jotham Ivan and Okedi, John and Sörensen, Johanna}},
  issn         = {{1464-7141}},
  keywords     = {{artificial neural networks; climate change; data scarcity; hybrid models; stream flow modelling}},
  language     = {{eng}},
  number       = {{8}},
  pages        = {{1944--1969}},
  publisher    = {{IWA Publishing}},
  series       = {{Journal of Hydroinformatics}},
  title        = {{Development and application of a hybrid artificial neural network model for simulating future stream flows in catchments with limited in situ observed data}},
  url          = {{http://dx.doi.org/10.2166/hydro.2024.066}},
  doi          = {{10.2166/hydro.2024.066}},
  volume       = {{26}},
  year         = {{2024}},
}