Full‐Depth Reconstruction of Long‐Term Meridional Overturning Circulation Variability From Satellite‐Measurable Quantities via Machine Learning

Abstract The meridional overturning circulation (MOC) plays a crucial role in the global distribution of heat, carbon, and other climate‐relevant tracers. Monitoring the evolution of MOC is essential for understanding climate variability, yet direct MOC observations are sparse and geographically lim...

Full description

Saved in:
Bibliographic Details
Main Authors: Huaiyu Wei, Kaushik Srinivasan, Andrew L. Stewart, Aviv Solodoch, Georgy E. Manucharyan, Andrew McC. Hogg
Format: Article
Language:English
Published: American Geophysical Union (AGU) 2025-07-01
Series:Journal of Advances in Modeling Earth Systems
Subjects:
Online Access:https://doi.org/10.1029/2024MS004915
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849729069322600448
author Huaiyu Wei
Kaushik Srinivasan
Andrew L. Stewart
Aviv Solodoch
Georgy E. Manucharyan
Andrew McC. Hogg
author_facet Huaiyu Wei
Kaushik Srinivasan
Andrew L. Stewart
Aviv Solodoch
Georgy E. Manucharyan
Andrew McC. Hogg
author_sort Huaiyu Wei
collection DOAJ
description Abstract The meridional overturning circulation (MOC) plays a crucial role in the global distribution of heat, carbon, and other climate‐relevant tracers. Monitoring the evolution of MOC is essential for understanding climate variability, yet direct MOC observations are sparse and geographically limited. Although satellite measurements have shown potential for short‐term monitoring of the MOC, it remains unclear whether MOC variability on decadal and longer timescales can be detected remotely. In this study, we leverage machine learning to reconstruct long‐term MOC variability from satellite‐measurable quantities, using climate simulations under pre‐industrial conditions. We demonstrate that our proposed non‐local dual‐branch neural network (DBNN) effectively reconstructs both the strength and vertical structure of the Atlantic MOC (AMOC) and the Southern Ocean MOCs across sub‐annual to multi‐decadal timescales. Using a neural network interpretation technique, we identify ocean bottom pressure near the western boundary and along dense‐water export pathways as the dominant input features for MOC reconstruction. This indicates that DBNN's predictions can be interpreted as an approximation of geostrophic balance. The DBNN also effectively reconstructs the AMOC in the equatorial region, where geostrophy breaks down. This success is attributed to the capability of DBNN in utilizing latitudinally non‐local ocean bottom pressure information and the meridional coherence of AMOC variability. Additionally, the DBNN accurately reconstructs Southern Ocean MOCs using only sea surface height and zonal wind stress as inputs, thereby avoiding reliance on ocean bottom pressure, which is subject to considerable measurement uncertainty in practice. This work demonstrates the possibility of continuous, long‐term MOC monitoring using satellite measurements.
format Article
id doaj-art-e08e6d13f87a4825bad46e30c8248d4f
institution DOAJ
issn 1942-2466
language English
publishDate 2025-07-01
publisher American Geophysical Union (AGU)
record_format Article
series Journal of Advances in Modeling Earth Systems
spelling doaj-art-e08e6d13f87a4825bad46e30c8248d4f2025-08-20T03:09:19ZengAmerican Geophysical Union (AGU)Journal of Advances in Modeling Earth Systems1942-24662025-07-01177n/an/a10.1029/2024MS004915Full‐Depth Reconstruction of Long‐Term Meridional Overturning Circulation Variability From Satellite‐Measurable Quantities via Machine LearningHuaiyu Wei0Kaushik Srinivasan1Andrew L. Stewart2Aviv Solodoch3Georgy E. Manucharyan4Andrew McC. Hogg5Department of Atmospheric and Oceanic Sciences University of California, Los Angeles Los Angeles CA USADepartment of Atmospheric and Oceanic Sciences University of California, Los Angeles Los Angeles CA USADepartment of Atmospheric and Oceanic Sciences University of California, Los Angeles Los Angeles CA USAInstitute of Earth Sciences The Hebrew University of Jerusalem Jerusalem IsraelSchool of Oceanography University of Washington Seattle WA USAResearch School of Earth Sciences Australian National University Canberra ACT AustraliaAbstract The meridional overturning circulation (MOC) plays a crucial role in the global distribution of heat, carbon, and other climate‐relevant tracers. Monitoring the evolution of MOC is essential for understanding climate variability, yet direct MOC observations are sparse and geographically limited. Although satellite measurements have shown potential for short‐term monitoring of the MOC, it remains unclear whether MOC variability on decadal and longer timescales can be detected remotely. In this study, we leverage machine learning to reconstruct long‐term MOC variability from satellite‐measurable quantities, using climate simulations under pre‐industrial conditions. We demonstrate that our proposed non‐local dual‐branch neural network (DBNN) effectively reconstructs both the strength and vertical structure of the Atlantic MOC (AMOC) and the Southern Ocean MOCs across sub‐annual to multi‐decadal timescales. Using a neural network interpretation technique, we identify ocean bottom pressure near the western boundary and along dense‐water export pathways as the dominant input features for MOC reconstruction. This indicates that DBNN's predictions can be interpreted as an approximation of geostrophic balance. The DBNN also effectively reconstructs the AMOC in the equatorial region, where geostrophy breaks down. This success is attributed to the capability of DBNN in utilizing latitudinally non‐local ocean bottom pressure information and the meridional coherence of AMOC variability. Additionally, the DBNN accurately reconstructs Southern Ocean MOCs using only sea surface height and zonal wind stress as inputs, thereby avoiding reliance on ocean bottom pressure, which is subject to considerable measurement uncertainty in practice. This work demonstrates the possibility of continuous, long‐term MOC monitoring using satellite measurements.https://doi.org/10.1029/2024MS004915meridional overturning circulationmachine learningneural networksatellite observationphysical oceanographyocean bottom pressure
spellingShingle Huaiyu Wei
Kaushik Srinivasan
Andrew L. Stewart
Aviv Solodoch
Georgy E. Manucharyan
Andrew McC. Hogg
Full‐Depth Reconstruction of Long‐Term Meridional Overturning Circulation Variability From Satellite‐Measurable Quantities via Machine Learning
Journal of Advances in Modeling Earth Systems
meridional overturning circulation
machine learning
neural network
satellite observation
physical oceanography
ocean bottom pressure
title Full‐Depth Reconstruction of Long‐Term Meridional Overturning Circulation Variability From Satellite‐Measurable Quantities via Machine Learning
title_full Full‐Depth Reconstruction of Long‐Term Meridional Overturning Circulation Variability From Satellite‐Measurable Quantities via Machine Learning
title_fullStr Full‐Depth Reconstruction of Long‐Term Meridional Overturning Circulation Variability From Satellite‐Measurable Quantities via Machine Learning
title_full_unstemmed Full‐Depth Reconstruction of Long‐Term Meridional Overturning Circulation Variability From Satellite‐Measurable Quantities via Machine Learning
title_short Full‐Depth Reconstruction of Long‐Term Meridional Overturning Circulation Variability From Satellite‐Measurable Quantities via Machine Learning
title_sort full depth reconstruction of long term meridional overturning circulation variability from satellite measurable quantities via machine learning
topic meridional overturning circulation
machine learning
neural network
satellite observation
physical oceanography
ocean bottom pressure
url https://doi.org/10.1029/2024MS004915
work_keys_str_mv AT huaiyuwei fulldepthreconstructionoflongtermmeridionaloverturningcirculationvariabilityfromsatellitemeasurablequantitiesviamachinelearning
AT kaushiksrinivasan fulldepthreconstructionoflongtermmeridionaloverturningcirculationvariabilityfromsatellitemeasurablequantitiesviamachinelearning
AT andrewlstewart fulldepthreconstructionoflongtermmeridionaloverturningcirculationvariabilityfromsatellitemeasurablequantitiesviamachinelearning
AT avivsolodoch fulldepthreconstructionoflongtermmeridionaloverturningcirculationvariabilityfromsatellitemeasurablequantitiesviamachinelearning
AT georgyemanucharyan fulldepthreconstructionoflongtermmeridionaloverturningcirculationvariabilityfromsatellitemeasurablequantitiesviamachinelearning
AT andrewmcchogg fulldepthreconstructionoflongtermmeridionaloverturningcirculationvariabilityfromsatellitemeasurablequantitiesviamachinelearning