Marine heatwaves in the Mediterranean Sea: a convolutional neural network study for extreme event prediction

<p>In recent decades, the Mediterranean Sea has experienced a notable rise in the occurrence and intensity of extreme warm temperature events, referred to as marine heatwaves (MHWs). Hence, the ability to forecast Mediterranean MHWs in the short term is an area of ongoing research. Here, we in...

Full description

Saved in:
Bibliographic Details
Main Authors: A. Parasyris, V. Metheniti, N. Kampanis, S. Darmaraki
Format: Article
Language:English
Published: Copernicus Publications 2025-05-01
Series:Ocean Science
Online Access:https://os.copernicus.org/articles/21/897/2025/os-21-897-2025.pdf
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850194192963207168
author A. Parasyris
V. Metheniti
N. Kampanis
S. Darmaraki
author_facet A. Parasyris
V. Metheniti
N. Kampanis
S. Darmaraki
author_sort A. Parasyris
collection DOAJ
description <p>In recent decades, the Mediterranean Sea has experienced a notable rise in the occurrence and intensity of extreme warm temperature events, referred to as marine heatwaves (MHWs). Hence, the ability to forecast Mediterranean MHWs in the short term is an area of ongoing research. Here, we introduce a novel machine learning (ML) approach specifically tailored for short-term predictions of MHWs in the basin using an attention U-Net convolutional neural network. Trained on daily sea surface temperature anomalies (SSTAs) and gridded fields of MHW presence and absence between 1982–2017, our model generates a spatiotemporal forecast of MHW occurrence up to 7 d in advance. To ensure robust performance, we explore various configurations, including different forecast horizons and U-Net architectures, number of input days, features, and different subset splits of train–test datasets. Comparative analysis against a persistence benchmark reveals an improvement of 15 % in forecasting accuracy of MHW presence for a 7 d forecast horizon. We also demonstrate an improvement of MHW prediction accuracy as the forecast horizon decreases, albeit with a smaller discrepancy between the persistence benchmark, which also results in high accuracy for the 3 d forecasts. Our proposed ML methodology offers a data-driven prediction of MHWs with reduced computational requirements, which can be applied across different regions of the global ocean, providing relevant stakeholders and management authorities with essential lead time for implementing effective mitigation strategies.</p>
format Article
id doaj-art-7b3346ffa89e4e508dff2fc8ba59bd0d
institution OA Journals
issn 1812-0784
1812-0792
language English
publishDate 2025-05-01
publisher Copernicus Publications
record_format Article
series Ocean Science
spelling doaj-art-7b3346ffa89e4e508dff2fc8ba59bd0d2025-08-20T02:14:03ZengCopernicus PublicationsOcean Science1812-07841812-07922025-05-012189791210.5194/os-21-897-2025Marine heatwaves in the Mediterranean Sea: a convolutional neural network study for extreme event predictionA. Parasyris0V. Metheniti1N. Kampanis2S. Darmaraki3Foundation for Research and Technology – Hellas, Institute of Applied and Computational Mathematics, 70013 Heraklion, GreeceFoundation for Research and Technology – Hellas, Institute of Applied and Computational Mathematics, 70013 Heraklion, GreeceFoundation for Research and Technology – Hellas, Institute of Applied and Computational Mathematics, 70013 Heraklion, GreeceFoundation for Research and Technology – Hellas, Institute of Applied and Computational Mathematics, 70013 Heraklion, Greece<p>In recent decades, the Mediterranean Sea has experienced a notable rise in the occurrence and intensity of extreme warm temperature events, referred to as marine heatwaves (MHWs). Hence, the ability to forecast Mediterranean MHWs in the short term is an area of ongoing research. Here, we introduce a novel machine learning (ML) approach specifically tailored for short-term predictions of MHWs in the basin using an attention U-Net convolutional neural network. Trained on daily sea surface temperature anomalies (SSTAs) and gridded fields of MHW presence and absence between 1982–2017, our model generates a spatiotemporal forecast of MHW occurrence up to 7 d in advance. To ensure robust performance, we explore various configurations, including different forecast horizons and U-Net architectures, number of input days, features, and different subset splits of train–test datasets. Comparative analysis against a persistence benchmark reveals an improvement of 15 % in forecasting accuracy of MHW presence for a 7 d forecast horizon. We also demonstrate an improvement of MHW prediction accuracy as the forecast horizon decreases, albeit with a smaller discrepancy between the persistence benchmark, which also results in high accuracy for the 3 d forecasts. Our proposed ML methodology offers a data-driven prediction of MHWs with reduced computational requirements, which can be applied across different regions of the global ocean, providing relevant stakeholders and management authorities with essential lead time for implementing effective mitigation strategies.</p>https://os.copernicus.org/articles/21/897/2025/os-21-897-2025.pdf
spellingShingle A. Parasyris
V. Metheniti
N. Kampanis
S. Darmaraki
Marine heatwaves in the Mediterranean Sea: a convolutional neural network study for extreme event prediction
Ocean Science
title Marine heatwaves in the Mediterranean Sea: a convolutional neural network study for extreme event prediction
title_full Marine heatwaves in the Mediterranean Sea: a convolutional neural network study for extreme event prediction
title_fullStr Marine heatwaves in the Mediterranean Sea: a convolutional neural network study for extreme event prediction
title_full_unstemmed Marine heatwaves in the Mediterranean Sea: a convolutional neural network study for extreme event prediction
title_short Marine heatwaves in the Mediterranean Sea: a convolutional neural network study for extreme event prediction
title_sort marine heatwaves in the mediterranean sea a convolutional neural network study for extreme event prediction
url https://os.copernicus.org/articles/21/897/2025/os-21-897-2025.pdf
work_keys_str_mv AT aparasyris marineheatwavesinthemediterraneanseaaconvolutionalneuralnetworkstudyforextremeeventprediction
AT vmetheniti marineheatwavesinthemediterraneanseaaconvolutionalneuralnetworkstudyforextremeeventprediction
AT nkampanis marineheatwavesinthemediterraneanseaaconvolutionalneuralnetworkstudyforextremeeventprediction
AT sdarmaraki marineheatwavesinthemediterraneanseaaconvolutionalneuralnetworkstudyforextremeeventprediction