Gaussian mutation–orca predation algorithm–deep residual shrinkage network (DRSN)–temporal convolutional network (TCN)–random forest model: an advanced machine learning model for predicting monthly rainfall and filtering irrelevant data

Abstract Monitoring water resources requires accurate predictions of rainfall data. Our study introduces a novel deep learning model named the deep residual shrinkage network (DRSN)—temporal convolutional network (TCN) to remove redundant features and extract temporal features from rainfall data. Th...

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Published in:Environmental Sciences Europe
Main Authors: Mohammad Ehteram, Mahdie Afshari Nia, Fatemeh Panahi, Hanieh Shabanian
Format: Article in Journal/Newspaper
Language:English
Published: SpringerOpen 2024
Subjects:
Online Access:https://doi.org/10.1186/s12302-024-00841-9
https://doaj.org/article/1054675a85534cb8afdfe23cedfdf451
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spelling ftdoajarticles:oai:doaj.org/article:1054675a85534cb8afdfe23cedfdf451 2024-02-11T10:07:41+01:00 Gaussian mutation–orca predation algorithm–deep residual shrinkage network (DRSN)–temporal convolutional network (TCN)–random forest model: an advanced machine learning model for predicting monthly rainfall and filtering irrelevant data Mohammad Ehteram Mahdie Afshari Nia Fatemeh Panahi Hanieh Shabanian 2024-01-01T00:00:00Z https://doi.org/10.1186/s12302-024-00841-9 https://doaj.org/article/1054675a85534cb8afdfe23cedfdf451 EN eng SpringerOpen https://doi.org/10.1186/s12302-024-00841-9 https://doaj.org/toc/2190-4715 doi:10.1186/s12302-024-00841-9 2190-4715 https://doaj.org/article/1054675a85534cb8afdfe23cedfdf451 Environmental Sciences Europe, Vol 36, Iss 1, Pp 1-22 (2024) Deep learning models Hybrid models Feature selection Optimizers Environmental sciences GE1-350 Environmental law K3581-3598 article 2024 ftdoajarticles https://doi.org/10.1186/s12302-024-00841-9 2024-01-21T01:43:09Z Abstract Monitoring water resources requires accurate predictions of rainfall data. Our study introduces a novel deep learning model named the deep residual shrinkage network (DRSN)—temporal convolutional network (TCN) to remove redundant features and extract temporal features from rainfall data. The TCN model extracts temporal features, and the DRSN enhances the quality of the extracted features. Then, the DRSN–TCN is coupled with a random forest (RF) model to model rainfall data. Since the RF model may be unable to classify and predict complex patterns and data, our study develops the RF model to model outputs with high accuracy. Since the DRSN–TCN model uses advanced operators to extract temporal features and remove irrelevant features, it can improve the performance of the RF model for predicting rainfall. We use a new optimizer named the Gaussian mutation (GM)–orca predation algorithm (OPA) to set the DRSN–TCN–RF (DTR) parameters and determine the best input scenario. This paper introduces a new machine learning model for rainfall prediction, improves the accuracy of the original TCN, and develops a new optimization method for input selection. The models used the lagged rainfall data to predict monthly data. GM–OPA improved the accuracy of the orca predation algorithm (OPA) for feature selection. The GM–OPA reduced the root mean square error (RMSE) values of OPA and particle swarm optimization (PSO) by 1.4%–3.4% and 6.14–9.54%, respectively. The GM–OPA can simplify the modeling process because it can determine the most important input parameters. Moreover, the GM–OPA can automatically determine the optimal input scenario. The DTR reduced the testing mean absolute error values of the TCN–RAF, DRSN–TCN, TCN, and RAF models by 5.3%, 21%, 40%, and 46%, respectively. Our study indicates that the proposed model is a reliable model for rainfall prediction. Article in Journal/Newspaper Orca Directory of Open Access Journals: DOAJ Articles Environmental Sciences Europe 36 1
institution Open Polar
collection Directory of Open Access Journals: DOAJ Articles
op_collection_id ftdoajarticles
language English
topic Deep learning models
Hybrid models
Feature selection
Optimizers
Environmental sciences
GE1-350
Environmental law
K3581-3598
spellingShingle Deep learning models
Hybrid models
Feature selection
Optimizers
Environmental sciences
GE1-350
Environmental law
K3581-3598
Mohammad Ehteram
Mahdie Afshari Nia
Fatemeh Panahi
Hanieh Shabanian
Gaussian mutation–orca predation algorithm–deep residual shrinkage network (DRSN)–temporal convolutional network (TCN)–random forest model: an advanced machine learning model for predicting monthly rainfall and filtering irrelevant data
topic_facet Deep learning models
Hybrid models
Feature selection
Optimizers
Environmental sciences
GE1-350
Environmental law
K3581-3598
description Abstract Monitoring water resources requires accurate predictions of rainfall data. Our study introduces a novel deep learning model named the deep residual shrinkage network (DRSN)—temporal convolutional network (TCN) to remove redundant features and extract temporal features from rainfall data. The TCN model extracts temporal features, and the DRSN enhances the quality of the extracted features. Then, the DRSN–TCN is coupled with a random forest (RF) model to model rainfall data. Since the RF model may be unable to classify and predict complex patterns and data, our study develops the RF model to model outputs with high accuracy. Since the DRSN–TCN model uses advanced operators to extract temporal features and remove irrelevant features, it can improve the performance of the RF model for predicting rainfall. We use a new optimizer named the Gaussian mutation (GM)–orca predation algorithm (OPA) to set the DRSN–TCN–RF (DTR) parameters and determine the best input scenario. This paper introduces a new machine learning model for rainfall prediction, improves the accuracy of the original TCN, and develops a new optimization method for input selection. The models used the lagged rainfall data to predict monthly data. GM–OPA improved the accuracy of the orca predation algorithm (OPA) for feature selection. The GM–OPA reduced the root mean square error (RMSE) values of OPA and particle swarm optimization (PSO) by 1.4%–3.4% and 6.14–9.54%, respectively. The GM–OPA can simplify the modeling process because it can determine the most important input parameters. Moreover, the GM–OPA can automatically determine the optimal input scenario. The DTR reduced the testing mean absolute error values of the TCN–RAF, DRSN–TCN, TCN, and RAF models by 5.3%, 21%, 40%, and 46%, respectively. Our study indicates that the proposed model is a reliable model for rainfall prediction.
format Article in Journal/Newspaper
author Mohammad Ehteram
Mahdie Afshari Nia
Fatemeh Panahi
Hanieh Shabanian
author_facet Mohammad Ehteram
Mahdie Afshari Nia
Fatemeh Panahi
Hanieh Shabanian
author_sort Mohammad Ehteram
title Gaussian mutation–orca predation algorithm–deep residual shrinkage network (DRSN)–temporal convolutional network (TCN)–random forest model: an advanced machine learning model for predicting monthly rainfall and filtering irrelevant data
title_short Gaussian mutation–orca predation algorithm–deep residual shrinkage network (DRSN)–temporal convolutional network (TCN)–random forest model: an advanced machine learning model for predicting monthly rainfall and filtering irrelevant data
title_full Gaussian mutation–orca predation algorithm–deep residual shrinkage network (DRSN)–temporal convolutional network (TCN)–random forest model: an advanced machine learning model for predicting monthly rainfall and filtering irrelevant data
title_fullStr Gaussian mutation–orca predation algorithm–deep residual shrinkage network (DRSN)–temporal convolutional network (TCN)–random forest model: an advanced machine learning model for predicting monthly rainfall and filtering irrelevant data
title_full_unstemmed Gaussian mutation–orca predation algorithm–deep residual shrinkage network (DRSN)–temporal convolutional network (TCN)–random forest model: an advanced machine learning model for predicting monthly rainfall and filtering irrelevant data
title_sort gaussian mutation–orca predation algorithm–deep residual shrinkage network (drsn)–temporal convolutional network (tcn)–random forest model: an advanced machine learning model for predicting monthly rainfall and filtering irrelevant data
publisher SpringerOpen
publishDate 2024
url https://doi.org/10.1186/s12302-024-00841-9
https://doaj.org/article/1054675a85534cb8afdfe23cedfdf451
genre Orca
genre_facet Orca
op_source Environmental Sciences Europe, Vol 36, Iss 1, Pp 1-22 (2024)
op_relation https://doi.org/10.1186/s12302-024-00841-9
https://doaj.org/toc/2190-4715
doi:10.1186/s12302-024-00841-9
2190-4715
https://doaj.org/article/1054675a85534cb8afdfe23cedfdf451
op_doi https://doi.org/10.1186/s12302-024-00841-9
container_title Environmental Sciences Europe
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