Loading…

A stacking neuro-fuzzy framework to forecast runoff from distributed meteorological stations

Neuro-fuzzy models have been used to predict runoff from rainfall, a hydrological phenomenon associated with a degree of uncertainty. However, rainfall can be measured from different meteorological stations, and runoff forecasting can be biased. Thus, the aim of this work is to propose a new stackin...

Full description

Saved in:
Bibliographic Details
Published in:Applied soft computing 2022-03, Vol.118, p.108535, Article 108535
Main Authors: Querales, Marvin, Salas, Rodrigo, Morales, Yerel, Allende-Cid, Héctor, Rosas, Harvey
Format: Article
Language:English
Subjects:
Citations: Items that this one cites
Items that cite this one
Online Access:Get full text
Tags: Add Tag
No Tags, Be the first to tag this record!
Description
Summary:Neuro-fuzzy models have been used to predict runoff from rainfall, a hydrological phenomenon associated with a degree of uncertainty. However, rainfall can be measured from different meteorological stations, and runoff forecasting can be biased. Thus, the aim of this work is to propose a new stacking neuro-fuzzy framework for predicting runoff from physically distributed meteorological stations. As a method to estimate single one-day-ahead runoff and as a stacking approach, the Self-Identification Neuro-fuzzy Inference model (SINFIM) and Self-Organizing Neuro-fuzzy Inference System (SONFIS) were developed, respectively. As a case study, data from two Chilean watersheds (the Diguillín River (Ñuble region) and Colorado River (Maule region)) and average daily runoff and average daily rainfall recorded over eighteen years were collected from the Chilean Directorate of Water Resources (DGA). The experimental results show good adjustment in the single forecasting of runoff with meteorological stations showing adjustment and efficiency indexes of greater than 80% in the validation set and being able to efficiently predict both high and low runoff values. However, better results were obtained with the stacking model with values being higher than single runoff predictions and those of state-of-art approaches. Therefore, the general framework proposed represents a good approach for forecasting runoff since it can improve predictions and generate more accurate runoff values than single models. •Runoff forecasting with the stacking model is better than single tools.•The proposed allows to obtain better runoff predictions than other stacking models.•The proposed model improved runoff forecasting, regarding the number of stations.
ISSN:1568-4946
1872-9681
DOI:10.1016/j.asoc.2022.108535