Hopfield neural network for sea surface current tracking from Tiungsat-1 data

This paper introduces a new approach for neural network application to coastal studies. The method is based on the utilization of the Hopfield neural network to model sea surface current movements from single TiungSAT-1 image. In matching process using Hopfield neural network, identified features ha...

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Main Authors: Marghany, Maged, Hashim, Mazlan, Cracknell, Arthur P.
Format: Book Section
Published: Springer Berlin / Heidelberg 2008
Subjects:
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author Marghany, Maged
Hashim, Mazlan
Cracknell, Arthur P.
author_facet Marghany, Maged
Hashim, Mazlan
Cracknell, Arthur P.
author_sort Marghany, Maged
collection ePrints
description This paper introduces a new approach for neural network application to coastal studies. The method is based on the utilization of the Hopfield neural network to model sea surface current movements from single TiungSAT-1 image. In matching process using Hopfield neural network, identified features have to be mathematically compared to each other in order to build an energy function that will be minimized. In this context, the neuron network has been taken in two dimensions; raw and column in order to match between the similar features of surface pattern. It was required that the two features were extracted from the same location. The Euler method is used to minimized the energy function of neuron equation. The study shows that the surface current features such as structure morphology of water plume can be automatically detected. In TiungSAT-1 data, green and near-infrared bands were competent at sea surface current features detection with high accuracy speed of ±0.14 m/s. It can be said that, Hopfield neural network has highly promised feature enhancement and detection in optical satellite sensor such as TiungSAT-1 image. In conclusion, Hopfield neural network can be used advance computational tool for modeling the pattern movement of sea surface in satellite data.
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institution Universiti Teknologi Malaysia - ePrints
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spelling utm.eprints-76112017-07-25T07:15:18Z http://eprints.utm.my/7611/ Hopfield neural network for sea surface current tracking from Tiungsat-1 data Marghany, Maged Hashim, Mazlan Cracknell, Arthur P. QA75 Electronic computers. Computer science This paper introduces a new approach for neural network application to coastal studies. The method is based on the utilization of the Hopfield neural network to model sea surface current movements from single TiungSAT-1 image. In matching process using Hopfield neural network, identified features have to be mathematically compared to each other in order to build an energy function that will be minimized. In this context, the neuron network has been taken in two dimensions; raw and column in order to match between the similar features of surface pattern. It was required that the two features were extracted from the same location. The Euler method is used to minimized the energy function of neuron equation. The study shows that the surface current features such as structure morphology of water plume can be automatically detected. In TiungSAT-1 data, green and near-infrared bands were competent at sea surface current features detection with high accuracy speed of ±0.14 m/s. It can be said that, Hopfield neural network has highly promised feature enhancement and detection in optical satellite sensor such as TiungSAT-1 image. In conclusion, Hopfield neural network can be used advance computational tool for modeling the pattern movement of sea surface in satellite data. Springer Berlin / Heidelberg 2008-06-28 Book Section PeerReviewed Marghany, Maged and Hashim, Mazlan and Cracknell, Arthur P. (2008) Hopfield neural network for sea surface current tracking from Tiungsat-1 data. In: Computational Science and Its Applications – ICCSA 2008. Lecture Notes in Computer Science, 5073/2 (Part 2). Springer Berlin / Heidelberg, Perugia, pp. 950-958. ISBN 978-3-540-69840-1 https://link.springer.com/chapter/10.1007/978-3-540-69848-7_75 10.1007/978-3-540-69848-7_75
spellingShingle QA75 Electronic computers. Computer science
Marghany, Maged
Hashim, Mazlan
Cracknell, Arthur P.
Hopfield neural network for sea surface current tracking from Tiungsat-1 data
title Hopfield neural network for sea surface current tracking from Tiungsat-1 data
title_full Hopfield neural network for sea surface current tracking from Tiungsat-1 data
title_fullStr Hopfield neural network for sea surface current tracking from Tiungsat-1 data
title_full_unstemmed Hopfield neural network for sea surface current tracking from Tiungsat-1 data
title_short Hopfield neural network for sea surface current tracking from Tiungsat-1 data
title_sort hopfield neural network for sea surface current tracking from tiungsat 1 data
topic QA75 Electronic computers. Computer science
work_keys_str_mv AT marghanymaged hopfieldneuralnetworkforseasurfacecurrenttrackingfromtiungsat1data
AT hashimmazlan hopfieldneuralnetworkforseasurfacecurrenttrackingfromtiungsat1data
AT cracknellarthurp hopfieldneuralnetworkforseasurfacecurrenttrackingfromtiungsat1data