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Deep Learning for Simulating Harmful Algal Blooms Using Ocean Numerical Model

Sang‐Soo Baek, JongCheol Pyo, Yong Sung Kwon, Seong-Jun Chun, Seung Ho Baek, Chi‐Yong Ahn, Hee‐Mock Oh, Young Ok Kim, Kyung Hwa Cho

2021Frontiers in Marine Science28 citationsDOIOpen Access PDF

Abstract

In several countries, the public health and fishery industries have suffered from harmful algal blooms (HABs) that have escalated to become a global issue. Though computational modeling offers an effective means to understand and mitigate the adverse effects of HABs, it is challenging to design models that adequately reflect the complexity of HAB dynamics. This paper presents a method involving the application of deep learning to an ocean model for simulating blooms of Alexandrium catenella . The classification and regression convolutional neural network (CNN) models are used for simulating the blooms. The classification CNN determines the bloom initiation while the regression CNN estimates the bloom density. GoogleNet and Resnet 101 are identified as the best structures for the classification and regression CNNs, respectively. The corresponding accuracy and root means square error values are determined as 96.8% and 1.20 [log(cells L –1 )], respectively. The results obtained in this study reveal the simulated distribution to follow the Alexandrium catenella bloom. Moreover, Grad-CAM identifies that the salinity and temperature contributed to the initiation of the bloom whereas NH 4 -N influenced the growth of the bloom.

Topics & Concepts

Algal bloomBloomConvolutional neural networkRegressionRed tideComputer scienceArtificial intelligenceOceanographyDeep learningMachine learningEcologyStatisticsBiologyMathematicsGeologyPhytoplanktonNutrientMarine and coastal ecosystemsWater Quality Monitoring and AnalysisWastewater Treatment and Nitrogen Removal
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