Skip to main content
Publications | Persons | Institutes | Projects
[ report an error in this record ]basket (0): add | show Print this page

A new machine learning approach to seabed biotope classification
Cooper, K.M.; Barry, J. (2020). A new machine learning approach to seabed biotope classification. Ocean Coast. Manag. 198: 105361. https://dx.doi.org/10.1016/j.ocecoaman.2020.105361
In: Ocean & Coastal Management. Elsevier Science: Barking. ISSN 0964-5691; e-ISSN 1873-524X, more
Peer reviewed article  

Available in  Authors 

Keywords
    Aquatic communities > Benthos
    Classification
    Clustering
    Habitat > Biotopes
    Mapping
Author keywords
    Macrofauna, Machine learning, K-means, R shiny

Authors  Top 
  • Cooper, K.M., more
  • Barry, J.

Abstract
    Effective management in the marine environment requires a thorough understanding of the distribution of natural resources, including that of the benthos, the animals living in and on the seabed. Hitherto, it has been difficult to identify broadscale patterns in the benthos as the faunal clusters identified from individual surveys are not directly comparable. As a result, much reliance has been placed on one-off broadscale spatial surveys or matching samples to a common set of biotopes. In this study, new benthic macrofaunal data from discrete surveys are matched to existing broadscale cluster groups identified using unsupervised machine learning (k-means). This objective approach allows for continual improvements in our understanding of macrofaunal distribution patterns, thereby supporting ongoing conservation and marine spatial planning efforts. Other benefits are discussed. Finally, an R shiny web application is presented, allowing users to biotope match their own data.

All data in the Integrated Marine Information System (IMIS) is subject to the VLIZ privacy policy Top | Authors