Daily river flow simulation using ensemble disjoint aggregating M5-Prime model

Loading...
Publication Logo

Date

2024

Authors

Khabat Khosravi
Nasrin Fathollahzadeh Attar
Sayed M. Bateni
Changhyun Jun
Dongkyun Kim
Mir Jafar Sadegh Safari
Salim Heddam
Aitazaz Ahsan Farooque
Soroush Abolfathi

Journal Title

Journal ISSN

Volume Title

Publisher

Elsevier Ltd

Open Access Color

GOLD

Green Open Access

Yes

OpenAIRE Downloads

OpenAIRE Views

Publicly Funded

No
Impulse
Top 1%
Influence
Top 10%
Popularity
Top 1%

Research Projects

Journal Issue

Abstract

Accurate prediction of daily river flow (Q<inf>t</inf>) remains a challenging yet essential task in hydrological modeling particularly crucial for flood mitigation and water resource management. This study introduces an advanced M5 Prime (M5P) predictive model designed to estimate Q<inf>t</inf> as well as one- and two-day-ahead river flow forecasts (i.e. Q<inf>t+1</inf> and Q<inf>t+2</inf>). The predictive performance of M5P ensembles incorporating Bootstrap Aggregation (BA) Disjoint Aggregating (DA) Additive Regression (AR) Vote (V) Iterative classifier optimizer (ICO) Random Subspace (RS) and Rotation Forest (ROF) were comprehensively evaluated. The proposed models were applied to a case study data in Tuolumne County US using a dataset comprising measured precipitation (P<inf>t</inf>) evaporation (E<inf>t</inf>) and Q<inf>t</inf>. A wide range of input scenarios were explored for predicting Q<inf>t</inf> Q<inf>t+1</inf> and Q<inf>t+2</inf>. Results indicate that P<inf>t</inf> and Q<inf>t</inf> significantly influence prediction accuracy. Notably relying solely on the most correlated variable (e.g. Q<inf>t-1</inf>) does not guarantee robust prediction of Q<inf>t</inf>. However extending the forecast horizon mitigates the influence of low-correlation input variables on model accuracy. Performance metrics indicate that the DA-M5P model achieves superior results with Nash-Sutcliff Efficiency of 0.916 and root mean square error of 23 m3/s followed by ROF-M5P BA-M5P AR-M5P AR-M5P RS-M5P V-M5P ICO-M5P and the standalone M5P model. The ensemble M5P modeling framework enhanced the predictive capability of the stand-alone M5P algorithm by 1.2 %–22.6 % underscoring its efficacy and potential for advancing hydrological forecasting. © 2024 Elsevier B.V. All rights reserved.

Description

Keywords

Forecasting, Hybrid Machine Learning, M5p, Machine Learning, Predictive Model, River Flow, M5P, Hybrid Machine Learning, Predictive Model, River Flow, Machine Learning, Forecasting, Social sciences (General), H1-99, Hybrid machine learning, Q1-390, Science (General), Predictive model, River flow, Machine learning, M5P, Forecasting, Research Article

Fields of Science

Citation

WoS Q

Scopus Q

OpenCitations Logo
OpenCitations Citation Count
41

Source

Heliyon

Volume

10

Issue

20

Start Page

e37965

End Page

PlumX Metrics
Citations

CrossRef : 61

Scopus : 59

PubMed : 2

Captures

Mendeley Readers : 40

SCOPUS™ Citations

59

checked on Apr 09, 2026

Google Scholar Logo
Google Scholar™
OpenAlex Logo
OpenAlex FWCI
12.9026

Sustainable Development Goals

CLEAN WATER AND SANITATION6
CLEAN WATER AND SANITATION
SUSTAINABLE CITIES AND COMMUNITIES11
SUSTAINABLE CITIES AND COMMUNITIES