An estimation of the Ocean Wave Heights using terrestrially seismic data

Traditionally, there are different approaches to monitoring the ocean wave field consisting of 1) measurements using insitu buoys, 2) numerical ocean wave modelling using wind forecast, and 3) satellite altimetry. Each of these ocean wave monitoring techniques have their own advantages and disadvant...

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Main Authors: Baranbooei, Samaneh, Bean, Christopher J.
Format: Conference Object
Language:English
Published: 2023
Subjects:
Online Access:https://dair.dias.ie/id/eprint/1400/
https://dair.dias.ie/id/eprint/1400/1/Poster-EGU.pdf
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spelling ftdublininstadvs:oai:dair.dias.ie:1400 2024-09-15T18:25:29+00:00 An estimation of the Ocean Wave Heights using terrestrially seismic data Baranbooei, Samaneh Bean, Christopher J. 2023-04-24 text https://dair.dias.ie/id/eprint/1400/ https://dair.dias.ie/id/eprint/1400/1/Poster-EGU.pdf en eng https://dair.dias.ie/id/eprint/1400/1/Poster-EGU.pdf Baranbooei, Samaneh </view/creators/Baranbooei=3ASamaneh=3A=3A.html> and Bean, Christopher J. </view/creators/Bean=3AChristopher_J=2E=3A=3A.html> (2023) An estimation of the Ocean Wave Heights using terrestrially seismic data. In: DIAS Research Forum, Burlington Road, Dublin 4. cc_by_4 Conference or Workshop Item PeerReviewed 2023 ftdublininstadvs 2024-07-09T23:31:09Z Traditionally, there are different approaches to monitoring the ocean wave field consisting of 1) measurements using insitu buoys, 2) numerical ocean wave modelling using wind forecast, and 3) satellite altimetry. Each of these ocean wave monitoring techniques have their own advantages and disadvantages associated with their spatial and temporal resolution. For example, buoys are physical point measurements with excellent temporal resolution (e.g., sub-hourly), but their spatial resolution is very poor (e.g., single point in space). Buoys are also expensive to maintain; ‘Real-time’ wave height estimations from numerical wave modelling is based on forecast wind, hence the model accuracy is dependent on wind prediction accuracy. . Compare to buoys, the temporal resolution of numerical models is poor (e.g., every 3 hours), but the spatial resolution is much better (various resolutions depending on the grid size); Satellite altimetry looks over a large region so the spatial coverage is very good but the temporal resolution is very poor (e.g., once every four days). In this work we consider terrestrial seismic (microseism) data as a proxy for wave heights. Under certain conditions, it has the potential for combined good spatial and temporal resolution, in quasireal time. This technique is based on the relationship between secondary microseism amplitudes recorded on land and the ocean wave-wave interactions which excite the sea floor, generating these secondary microseisms. Here we take a data driven approach, implementing an Artificial Neural Network (ANN) to quantify the complex underlying relationship between ocean wave height and microseism amplitude. Thus far we trained the ANN using the available seismic and numerical simulated data and then used the trained ANN to estimate significant Ocean Wave Height (SWH) at particular location(s) in the Northeast Atlantic using amplitudes from seismic station distributed across Ireland. Our preliminary results look very promising and show relatively small residuals for ... Conference Object Northeast Atlantic Dublin Institute for Advanced Studies: DIAS Institutional Repository
institution Open Polar
collection Dublin Institute for Advanced Studies: DIAS Institutional Repository
op_collection_id ftdublininstadvs
language English
description Traditionally, there are different approaches to monitoring the ocean wave field consisting of 1) measurements using insitu buoys, 2) numerical ocean wave modelling using wind forecast, and 3) satellite altimetry. Each of these ocean wave monitoring techniques have their own advantages and disadvantages associated with their spatial and temporal resolution. For example, buoys are physical point measurements with excellent temporal resolution (e.g., sub-hourly), but their spatial resolution is very poor (e.g., single point in space). Buoys are also expensive to maintain; ‘Real-time’ wave height estimations from numerical wave modelling is based on forecast wind, hence the model accuracy is dependent on wind prediction accuracy. . Compare to buoys, the temporal resolution of numerical models is poor (e.g., every 3 hours), but the spatial resolution is much better (various resolutions depending on the grid size); Satellite altimetry looks over a large region so the spatial coverage is very good but the temporal resolution is very poor (e.g., once every four days). In this work we consider terrestrial seismic (microseism) data as a proxy for wave heights. Under certain conditions, it has the potential for combined good spatial and temporal resolution, in quasireal time. This technique is based on the relationship between secondary microseism amplitudes recorded on land and the ocean wave-wave interactions which excite the sea floor, generating these secondary microseisms. Here we take a data driven approach, implementing an Artificial Neural Network (ANN) to quantify the complex underlying relationship between ocean wave height and microseism amplitude. Thus far we trained the ANN using the available seismic and numerical simulated data and then used the trained ANN to estimate significant Ocean Wave Height (SWH) at particular location(s) in the Northeast Atlantic using amplitudes from seismic station distributed across Ireland. Our preliminary results look very promising and show relatively small residuals for ...
format Conference Object
author Baranbooei, Samaneh
Bean, Christopher J.
spellingShingle Baranbooei, Samaneh
Bean, Christopher J.
An estimation of the Ocean Wave Heights using terrestrially seismic data
author_facet Baranbooei, Samaneh
Bean, Christopher J.
author_sort Baranbooei, Samaneh
title An estimation of the Ocean Wave Heights using terrestrially seismic data
title_short An estimation of the Ocean Wave Heights using terrestrially seismic data
title_full An estimation of the Ocean Wave Heights using terrestrially seismic data
title_fullStr An estimation of the Ocean Wave Heights using terrestrially seismic data
title_full_unstemmed An estimation of the Ocean Wave Heights using terrestrially seismic data
title_sort estimation of the ocean wave heights using terrestrially seismic data
publishDate 2023
url https://dair.dias.ie/id/eprint/1400/
https://dair.dias.ie/id/eprint/1400/1/Poster-EGU.pdf
genre Northeast Atlantic
genre_facet Northeast Atlantic
op_relation https://dair.dias.ie/id/eprint/1400/1/Poster-EGU.pdf
Baranbooei, Samaneh </view/creators/Baranbooei=3ASamaneh=3A=3A.html> and Bean, Christopher J. </view/creators/Bean=3AChristopher_J=2E=3A=3A.html> (2023) An estimation of the Ocean Wave Heights using terrestrially seismic data. In: DIAS Research Forum, Burlington Road, Dublin 4.
op_rights cc_by_4
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