From Geoscience Australia
Predicting Seabed Mud Content across the Australian Margin: Performance of Machine Learning Methods and their combinations with Ordinary Kriging and Inverse Distance Squared
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Created 14/01/2025
Updated 14/01/2025
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Additional Info
Field | Value |
---|---|
Title | Predicting Seabed Mud Content across the Australian Margin: Performance of Machine Learning Methods and their combinations with Ordinary Kriging and Inverse Distance Squared |
Language | eng |
Licence | notspecified |
Landing Page | https://devweb.dga.links.com.au/data/dataset/aee21dce-ef0e-4c9c-bca1-1a324d69b9ee |
Contact Point | |
Reference Period | 20/04/2018 |
Geospatial Coverage | {"type": "Polygon", "coordinates": [[[105.0, -40.0], [160.0, -40.0], [160.0, -8.0], [105.0, -8.0], [105.0, -40.0]]]} |
Data Portal | data.gov.au |
Data Source
This dataset was originally found on
data.gov.au
"Predicting Seabed Mud Content across the Australian Margin: Performance of Machine Learning Methods and their combinations with Ordinary Kriging and Inverse Distance Squared". Please visit the source to access the original metadata of the dataset:
https://devweb.dga.links.com.au/data/dataset/predicting-seabed-mud-content-across-the-australian-margin-performance-of-machine-learning-meth1
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Predicting Seabed Mud Content across the Australian Margin: Performance of...
In 2008, the performance of 14 statistical and mathematical methods for spatial interpolation was compared using samples of seabed mud content across the Australian Exclusive...
No duplicate datasets found.