Ocean-Surface Heterogeneity Mapping (OHMA) to Identify Regions of Change
Mapping heterogeneity of the ocean’s surface waters is important for understanding biogeographical distributions, ocean surface habitat mapping, and ocean surface stability. This article describes the Ocean-surface Heterogeneity MApping (OHMA) algorithm—an objective, replicable approach that uses hy...
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doaj-219f5cb37ac54228946162c5ef5aca462021-03-28T00:01:56ZengMDPI AGRemote Sensing2072-42922021-03-01131283128310.3390/rs13071283Ocean-Surface Heterogeneity Mapping (OHMA) to Identify Regions of ChangeRory Gordon Scarrott0Fiona Cawkwell1Mark Jessopp2Caroline Cusack3Eleanor O’Rourke4C.A.J.M. de Bie5Department of Geography, University College Cork, and MaREI Centre, Environmental Research Institute, University College Cork, T12 K8AF Cork, IrelandDepartment of Geography, University College Cork, T12K8AF Cork, IrelandSchool of Biological, Earth & Environmental Sciences, University College Cork, and MaREI Centre, Environmental Research Institute, University College Cork, T12 K8AF Cork, IrelandMarine Institute, Rinville, Oranmore, H91 R673 Co. Galway, IrelandFormerly Marine Institute, Rinville, Oranmore, H91 R673 Co. Galway, IrelandDepartment of Natural Resources, Faculty of Geo-Information Science and Earth Observation (ITC), University of Twente, PO Box 217, 7500 AE Enschede, The NetherlandsMapping heterogeneity of the ocean’s surface waters is important for understanding biogeographical distributions, ocean surface habitat mapping, and ocean surface stability. This article describes the Ocean-surface Heterogeneity MApping (OHMA) algorithm—an objective, replicable approach that uses hypertemporal, satellite-derived datasets to map the spatio-temporal heterogeneity of ocean surface waters. The OHMA produces a suite of complementary datasets—a surface spatio-temporal heterogeneity dataset, and an optimised spatio-temporal classification of the ocean surface. It was demonstrated here using a hypertemporal Sea Surface Temperature image dataset of the North Atlantic. Validation with Underway-derived temperature data showed higher heterogeneity areas were associated with stronger surface temperature gradients, or an increased presence of locally extreme temperature values. Using four exploratory case studies, spatio-temporal heterogeneity values were related to a range of region-specific surface and sub-surface characteristics including fronts, currents and bathymetry. The values conveyed the interactions between these parameters as a single metric. Such over-arching heterogeneity information is virtually impossible to map from in-situ instruments, or less temporally dense satellite datasets. This study demonstrated the OHMA approach is a useful and robust tool to explore, examine, and describe the ocean’s surface. It advances our capability to map biologically relevant measures of ocean surface heterogeneity. It can support ongoing efforts in Ocean Surface Partitioning, and attempts to understand marine species distributions. The study highlighted the need to establish dedicated spatio-temporal ocean validation sites, specifically measured using surface transits, to support advances in hypertemporal ocean data use, and exploitation. A number of future research avenues are also highlighted.https://www.mdpi.com/2072-4292/13/7/1283hypertemporal satellite imagerySSTNorth Atlanticheterogeneitysurface watersocean surface partitioning |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Rory Gordon Scarrott Fiona Cawkwell Mark Jessopp Caroline Cusack Eleanor O’Rourke C.A.J.M. de Bie |
spellingShingle |
Rory Gordon Scarrott Fiona Cawkwell Mark Jessopp Caroline Cusack Eleanor O’Rourke C.A.J.M. de Bie Ocean-Surface Heterogeneity Mapping (OHMA) to Identify Regions of Change Remote Sensing hypertemporal satellite imagery SST North Atlantic heterogeneity surface waters ocean surface partitioning |
author_facet |
Rory Gordon Scarrott Fiona Cawkwell Mark Jessopp Caroline Cusack Eleanor O’Rourke C.A.J.M. de Bie |
author_sort |
Rory Gordon Scarrott |
title |
Ocean-Surface Heterogeneity Mapping (OHMA) to Identify Regions of Change |
title_short |
Ocean-Surface Heterogeneity Mapping (OHMA) to Identify Regions of Change |
title_full |
Ocean-Surface Heterogeneity Mapping (OHMA) to Identify Regions of Change |
title_fullStr |
Ocean-Surface Heterogeneity Mapping (OHMA) to Identify Regions of Change |
title_full_unstemmed |
Ocean-Surface Heterogeneity Mapping (OHMA) to Identify Regions of Change |
title_sort |
ocean-surface heterogeneity mapping (ohma) to identify regions of change |
publisher |
MDPI AG |
series |
Remote Sensing |
issn |
2072-4292 |
publishDate |
2021-03-01 |
description |
Mapping heterogeneity of the ocean’s surface waters is important for understanding biogeographical distributions, ocean surface habitat mapping, and ocean surface stability. This article describes the Ocean-surface Heterogeneity MApping (OHMA) algorithm—an objective, replicable approach that uses hypertemporal, satellite-derived datasets to map the spatio-temporal heterogeneity of ocean surface waters. The OHMA produces a suite of complementary datasets—a surface spatio-temporal heterogeneity dataset, and an optimised spatio-temporal classification of the ocean surface. It was demonstrated here using a hypertemporal Sea Surface Temperature image dataset of the North Atlantic. Validation with Underway-derived temperature data showed higher heterogeneity areas were associated with stronger surface temperature gradients, or an increased presence of locally extreme temperature values. Using four exploratory case studies, spatio-temporal heterogeneity values were related to a range of region-specific surface and sub-surface characteristics including fronts, currents and bathymetry. The values conveyed the interactions between these parameters as a single metric. Such over-arching heterogeneity information is virtually impossible to map from in-situ instruments, or less temporally dense satellite datasets. This study demonstrated the OHMA approach is a useful and robust tool to explore, examine, and describe the ocean’s surface. It advances our capability to map biologically relevant measures of ocean surface heterogeneity. It can support ongoing efforts in Ocean Surface Partitioning, and attempts to understand marine species distributions. The study highlighted the need to establish dedicated spatio-temporal ocean validation sites, specifically measured using surface transits, to support advances in hypertemporal ocean data use, and exploitation. A number of future research avenues are also highlighted. |
topic |
hypertemporal satellite imagery SST North Atlantic heterogeneity surface waters ocean surface partitioning |
url |
https://www.mdpi.com/2072-4292/13/7/1283 |
work_keys_str_mv |
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