A conceptually simple modeling approach for Jason-1 sea state bias correction based on 3 parameters exclusively derived from altimetric information
A conceptually simple modeling approach for Jason-1 sea state bias correction based on 3 parameters exclusively derived from altimetric information
A conceptually simple formulation is proposed for a new empirical sea state bias (SSB) model using information retrieved entirely from altimetric data. Nonparametric regression techniques are used, based on penalized smoothing splines adjusted to each predictor and then combined by a Generalized Additive Model. In addition to the significant wave height (SWH) and wind speed (U10), a mediator parameter designed by the mean wave period derived from radar altimetry, has proven to improve the model performance in explaining some of the SSB variability, especially in swell ocean regions with medium-high SWH and low U10. A collinear analysis of scaled sea level anomalies (SLA) variance differences shows conformity between the proposed model and the established SSB models. The new formulation aims to be a fast, reliable and flexible SSB model, in line with the well-settled SSB corrections, depending exclusively on altimetric information. The suggested method is computationally efficient and capable of generating a stable model with a small training dataset, a useful feature for forthcoming missions.
satellite altimetry, sea state bias, mean wave period, nonparametric estimation, GAM
576
Pires, Nelson
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Fernandes, M. Joana
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Gommenginger, Christine
f0db32be-34bb-44da-944b-c6b206ca4143
Scharroo, Remko
21c46f53-4df0-44c9-b60a-8b7c51443022
8 July 2016
Pires, Nelson
9291e6de-67c3-4b13-9b77-fe0d05f93419
Fernandes, M. Joana
c9f6bcb3-92c6-45bc-9103-1724185a5f75
Gommenginger, Christine
f0db32be-34bb-44da-944b-c6b206ca4143
Scharroo, Remko
21c46f53-4df0-44c9-b60a-8b7c51443022
Pires, Nelson, Fernandes, M. Joana, Gommenginger, Christine and Scharroo, Remko
(2016)
A conceptually simple modeling approach for Jason-1 sea state bias correction based on 3 parameters exclusively derived from altimetric information.
Remote Sensing, 8 (7), .
(doi:10.3390/rs8070576).
Abstract
A conceptually simple formulation is proposed for a new empirical sea state bias (SSB) model using information retrieved entirely from altimetric data. Nonparametric regression techniques are used, based on penalized smoothing splines adjusted to each predictor and then combined by a Generalized Additive Model. In addition to the significant wave height (SWH) and wind speed (U10), a mediator parameter designed by the mean wave period derived from radar altimetry, has proven to improve the model performance in explaining some of the SSB variability, especially in swell ocean regions with medium-high SWH and low U10. A collinear analysis of scaled sea level anomalies (SLA) variance differences shows conformity between the proposed model and the established SSB models. The new formulation aims to be a fast, reliable and flexible SSB model, in line with the well-settled SSB corrections, depending exclusively on altimetric information. The suggested method is computationally efficient and capable of generating a stable model with a small training dataset, a useful feature for forthcoming missions.
Text
remotesensing-08-00576
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More information
Accepted/In Press date: 4 July 2016
e-pub ahead of print date: 8 July 2016
Published date: 8 July 2016
Keywords:
satellite altimetry, sea state bias, mean wave period, nonparametric estimation, GAM
Organisations:
Marine Physics and Ocean Climate
Identifiers
Local EPrints ID: 401875
URI: http://eprints.soton.ac.uk/id/eprint/401875
ISSN: 2072-4292
PURE UUID: bac19ebd-d33f-48fe-9ac8-1e4a1d6cdd27
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Date deposited: 20 Oct 2016 16:16
Last modified: 15 Mar 2024 02:57
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Contributors
Author:
Nelson Pires
Author:
M. Joana Fernandes
Author:
Christine Gommenginger
Author:
Remko Scharroo
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