Data

NSW seabed landforms derived from marine lidar data 2022

data.nsw.gov.au
NSW Department of Climate Change, Energy, the Environment and Water (Owner)
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ctx_ver=Z39.88-2004&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Adc&rfr_id=info%3Asid%2FANDS&rft_id=http://data.nsw.gov.au/data/dataset/nsw-seabed-landforms-derived-from-marine-lidar-data-2022&rft.title=NSW seabed landforms derived from marine lidar data 2022&rft.identifier=http://data.nsw.gov.au/data/dataset/nsw-seabed-landforms-derived-from-marine-lidar-data-2022&rft.publisher=data.nsw.gov.au&rft.description=Show on SEED Web MapData Quality StatementDownload Package Seabed landforms derived from marine lidar data - 01 - Tweed to YambaDownload Package Seabed landforms derived from marine lidar data - 02 - Yamba to ArakoonDownload Package Seabed landforms derived from marine lidar data - 03 - Arakoon to ForsterDownload Package Seabed landforms derived from marine lidar data - 04 - Forster to NewcastleDownload Package Seabed landforms derived from marine lidar data - 05 - Newcastle to Broken BayDownload Seabed landforms derived from marine lidar data - 06 - Broken Bay to CronullaDownload Package Seabed landforms derived from marine lidar data - 07 - Cronulla to Jervis BayDownload Package Seabed landforms derived from marine lidar data - 08 - Jervis Bay to Batemans BayDownload Package Seabed landforms derived from marine lidar data - 09 - Batemans Bay to Cape HoweStorymap for seabed landformsMapservice - NSW seabed landforms derived from marine lidar data 2022Seabed landform features were classified from the New South Wales statewide marine lidar dataset, acquired in 2018 by Fugro Pty Ltd on behalf of the Department of Planning and Environment (data available for download on SEED, see below). Seabed features were extracted from the marine lidar data and classified into seabed landform classes. Classified landform features include reefs, plains, peaks, scarps, depressions and channels. These landforms capture variation in the shape and structure of reef outcrops along the NSW coastal and nearshore environment. \r\nFeatures were classified using the Seabed Landforms Classification Toolset developed for ArcGIS by the Coastal and Marine Unit, DPE (Linklater et al. 2023) which are publicly available on SEED (https://datasets.seed.nsw.gov.au/dataset/seabed-landforms-classification-toolset) and GitHub (https://github.com/LinklaterM/Seabed-Landforms-Classification-Toolset/). \r\n\r\nThe statewide dataset is provided as ArcGIS shapefiles divided into 9 segments along the coast. The data covers 4060 km2, extending from the coastline (0 m AHD) to a maximum of 50 m depth, reaching an average depth of 35 m. Data coverage extends a maximum distance of 9 km offshore, with coverage extending on average 3 km offshore.\r\n\r\nThis dataset provides an understanding of the extent and distribution of submerged reefs along the NSW coast, which contributes fundamental baseline information for managers, users and custodians of the marine environment. \r\n\r\nThis dataset was funded by the Marine Estate Management Authority and NSW Climate Change Fund through the Coastal Management Funding Package. \r\n\r\nPlease cite this dataset as: Linklater, M., Morris, B., Kinsela, M., Ingleton, T. and Hanslow, D. (2022), Exploring patterns of reef distribution along the southeast Australian coast using marine lidar data. Manuscript in preparation. \r\n\r\nNSW statewide marine lidar data – available for download on SEED: https://datasets.seed.nsw.gov.au/dataset/marine-lidar-topo-bathy-2018\r\n\r\nLinklater, M., Morris, B.D. and Hanslow, D.J. (2023), Classification of seabed landforms on continental and island shelves. Frontiers in Marine Science, 10, https://www.frontiersin.org/articles/10.3389/fmars.2023.1258556/full.\r\n\r\nLinklater, M., Ingleton, T. C., Kinsela, M. A., Morris, B. D., Allen, K. M., Sutherland, M. D., & Hanslow, D. J. 2019. Techniques for classifying seabed morphology and composition on a subtropical-temperate continental shelf. Geosciences, 9(3), 141.&rft.creator=Anonymous&rft.date=2024&rft.coverage=150.17,-37.55 150.17,-28.13 153.73,-28.13 153.73,-37.55 150.17,-37.55&rft_rights=Creative Commons Attribution http://www.opendefinition.org/licenses/cc-by&rft.type=dataset&rft.language=English Access the data

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Brief description

Seabed landform features were classified from the New South Wales statewide marine lidar dataset, acquired in 2018 by Fugro Pty Ltd on behalf of the Department of Planning and Environment (data available for download on SEED, see below). Seabed features were extracted from the marine lidar data and classified into seabed landform classes. Classified landform features include reefs, plains, peaks, scarps, depressions and channels. These landforms capture variation in the shape and structure of reef outcrops along the NSW coastal and nearshore environment.
Features were classified using the Seabed Landforms Classification Toolset developed for ArcGIS by the Coastal and Marine Unit, DPE (Linklater et al. 2023) which are publicly available on SEED (https://datasets.seed.nsw.gov.au/dataset/seabed-landforms-classification-toolset) and GitHub (https://github.com/LinklaterM/Seabed-Landforms-Classification-Toolset/).

The statewide dataset is provided as ArcGIS shapefiles divided into 9 segments along the coast. The data covers 4060 km2, extending from the coastline (0 m AHD) to a maximum of 50 m depth, reaching an average depth of 35 m. Data coverage extends a maximum distance of 9 km offshore, with coverage extending on average 3 km offshore.

This dataset provides an understanding of the extent and distribution of submerged reefs along the NSW coast, which contributes fundamental baseline information for managers, users and custodians of the marine environment.

This dataset was funded by the Marine Estate Management Authority and NSW Climate Change Fund through the Coastal Management Funding Package.

Please cite this dataset as: Linklater, M., Morris, B., Kinsela, M., Ingleton, T. and Hanslow, D. (2022), Exploring patterns of reef distribution along the southeast Australian coast using marine lidar data. Manuscript in preparation.

NSW statewide marine lidar data – available for download on SEED: https://datasets.seed.nsw.gov.au/dataset/marine-lidar-topo-bathy-2018

Linklater, M., Morris, B.D. and Hanslow, D.J. (2023), Classification of seabed landforms on continental and island shelves. Frontiers in Marine Science, 10, https://www.frontiersin.org/articles/10.3389/fmars.2023.1258556/full.

Linklater, M., Ingleton, T. C., Kinsela, M. A., Morris, B. D., Allen, K. M., Sutherland, M. D., & Hanslow, D. J. 2019. Techniques for classifying seabed morphology and composition on a subtropical-temperate continental shelf. Geosciences, 9(3), 141.

Full description

Show on SEED Web Map
Data Quality Statement
Download Package Seabed landforms derived from marine lidar data - 01 - Tweed to Yamba
Download Package Seabed landforms derived from marine lidar data - 02 - Yamba to Arakoon
Download Package Seabed landforms derived from marine lidar data - 03 - Arakoon to Forster
Download Package Seabed landforms derived from marine lidar data - 04 - Forster to Newcastle
Download Package Seabed landforms derived from marine lidar data - 05 - Newcastle to Broken Bay
Download Seabed landforms derived from marine lidar data - 06 - Broken Bay to Cronulla
Download Package Seabed landforms derived from marine lidar data - 07 - Cronulla to Jervis Bay
Download Package Seabed landforms derived from marine lidar data - 08 - Jervis Bay to Batemans Bay
Download Package Seabed landforms derived from marine lidar data - 09 - Batemans Bay to Cape Howe
Storymap for seabed landforms
Mapservice - NSW seabed landforms derived from marine lidar data 2022

This dataset is part of a larger collection

Click to explore relationships graph

150.17,-37.55 150.17,-28.13 153.73,-28.13 153.73,-37.55 150.17,-37.55

151.95,-32.84

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