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Title:HIDRA3 : a deep-learning model for multipoint ensemble sea level forecasting in the presence of tide gauge sensor failures
Authors:ID Rus, Marko (Author)
ID Mihanović, Hrvoje (Author)
ID Ličer, Matjaž (Author)
ID Kristan, Matej (Author)
Files:URL URL - Source URL, visit https://gmd.copernicus.org/articles/18/605/2025/
 
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MD5: EA0489B4AA961560F61647728049655E
 
Language:English
Typology:1.01 - Original Scientific Article
Organization:Logo NIB - National Institute of Biology
Abstract:Accurate modeling of sea level and storm surge dynamics with several days of temporal horizons is essential for effective coastal flood responses and the protection of coastal communities and economies. The classical approach to this challenge involves computationally intensive ocean models that typically calculate sea levels relative to the geoid, which must then be correlated with local tide gauge observations of sea surface height (SSH). A recently proposed deep-learning model, HIDRA2 (HIgh-performance Deep tidal Residual estimation method using Atmospheric data, version 2), avoids numerical simulations while delivering competitive forecasts. Its forecast accuracy depends on the availability of a sufficiently long history of recorded SSH observations used in training. This makes HIDRA2 less reliable for locations with less abundant SSH training data. Furthermore, since the inference requires immediate past SSH measurements as input, forecasts cannot be made during temporary tide gauge failures. We address the aforementioned issues using a new architecture, HIDRA3, that considers observations from multiple locations, shares the geophysical encoder across the locations, and constructs a joint latent state that is decoded into forecasts at individual locations. The new architecture brings several benefits: (i) it improves training at locations with scarce historical SSH data, (ii) it enables predictions even at locations with sensor failures, and (iii) it reliably estimates prediction uncertainties. HIDRA3 is evaluated by jointly training on 11 tide gauge locations along the Adriatic. Results show that HIDRA3 outperforms HIDRA2 and the Mediterranean basin Nucleus for European Modelling of the Ocean (NEMO) setup of the Copernicus Marine Environment Monitoring Service (CMEMS) by ∼ 15 % and ∼ 13 % mean absolute error (MAE) reductions at high SSH values, creating a solid new state of the art. The forecasting skill does not deteriorate even in the case of simultaneous failure of multiple sensors in the basin or when predicting solely from the tide gauges far outside the Rossby radius of a failed sensor. Furthermore, HIDRA3 shows remarkable performance with substantially smaller amounts of training data compared with HIDRA2, making it appropriate for sea level forecasting in basins with high regional variability in the available tide gauge data.
Keywords:sea level modeling, deep learning, storm surges
Publication status:Published
Publication version:Version of Record
Submitted for review:08.07.2024
Article acceptance date:04.12.2024
Publication date:04.02.2025
Year of publishing:2025
Number of pages:str. 605-620
Numbering:Vol. 18, iss. 3
PID:20.500.12556/DiRROS-21818 New window
UDC:004.85:622.847:551.461.2
ISSN on article:1991-9603
DOI:10.5194/gmd-18-605-2025 New window
COBISS.SI-ID:225239555 New window
Note:Soavtorji: Hrvoje Mihanović, Matjaž Ličer, Matej Kristan;
Publication date in DiRROS:03.04.2025
Views:846
Downloads:490
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Record is a part of a journal

Title:Geoscientific model development
Shortened title:Geosci. model dev.
Publisher:Copernicus
ISSN:1991-9603
COBISS.SI-ID:522511385 New window

Document is financed by a project

Funder:ARIS - Slovenian Research and Innovation Agency
Project number:P1-0237-2020
Name:Raziskave obalnega morja

Funder:ARIS - Slovenian Research and Innovation Agency
Project number:J2-2506-2020
Name:Adaptivne globoke metode zaznavanja za avtonomna plovila

Funder:ARIS - Slovenian Research and Innovation Agency
Project number:P2-0214-2019
Name:Računalniški vid

Licences

License:CC BY 4.0, Creative Commons Attribution 4.0 International
Link:http://creativecommons.org/licenses/by/4.0/
Description:This is the standard Creative Commons license that gives others maximum freedom to do what they want with the work as long as they credit the author.

Secondary language

Language:Slovenian
Keywords:modeliranje višine morske gladine, globoko učenje, poplavljanje


Collection

This document is a collection and includes these documents:
  1. Code for HIDRA3: a robust deep-learning model for multi-point sea-surface height forecasting
  2. Training and test datasets, pretrained weights and predictions for HIDRA3

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