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Predicting subsurface sonar observations with satellite-derived ocean surface data in the California Current Ecosystem
Author(s) -
Kellie R. Gadeken,
Maxwell B. Joseph,
Joseph McGlinchy,
Kristopher B. Karnauskas,
Carrie C. Wall
Publication year - 2021
Publication title -
plos one
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.99
H-Index - 332
ISSN - 1932-6203
DOI - 10.1371/journal.pone.0248297
Subject(s) - sonar , environmental science , extrapolation , remote sensing , satellite , range (aeronautics) , current (fluid) , satellite imagery , geology , oceanography , statistics , materials science , mathematics , engineering , composite material , aerospace engineering
Vessel-based sonar systems that focus on the water column provide valuable information on the distribution of underwater marine organisms, but such data are expensive to collect and limited in their spatiotemporal coverage. Satellite data, however, are widely available across large regions and provide information on surface ocean conditions. If satellite data can be linked to subsurface sonar measurements, it may be possible to predict marine life over broader spatial regions with higher frequency using satellite observations. Here, we use random forest models to evaluate the potential for predicting a sonar-derived proxy for subsurface biomass as a function of satellite imagery in the California Current Ecosystem. We find that satellite data may be useful for prediction under some circumstances, but across a range of sonar frequencies and depths, overall model performance was low. Performance in spatial interpolation tasks exceeded performance in spatial and temporal extrapolation, suggesting that this approach is not yet reliable for forecasting or spatial extrapolation. We conclude with some potential limitations and extensions of this work.

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