Prediction of chlorophyll-a as an indicator of harmful algal blooms using deep learning with Bayesian approximation for uncertainty assessment
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Published:2024-02
Issue:
Volume:630
Page:130627
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ISSN:0022-1694
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Container-title:Journal of Hydrology
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language:en
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Short-container-title:Journal of Hydrology
Author:
Busari I.ORCID,
Sahoo D.ORCID,
Jana R.B.
Funder
Clemson University
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