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LSTM Networks to Improve the Prediction of Harmful Algal Blooms in the West Coast of Sabah

机译:LSTM网络提高沙巴西海岸有害藻类盛开的预测

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摘要

Harmful algal bloom (HAB) events have alarmed authorities of human health that have caused severe illness and fatalities, death of marine organisms, and massive fish killings. This work aimed to perform the long short-term memory (LSTM) method and convolution neural network (CNN) method to predict the HAB events in the West Coast of Sabah. The results showed that this method could be used to predict satellite time series data in which previous studies only used vector data. This paper also could identify and predict whether there is HAB occurrence in the region. A chlorophyll a concentration (Chl-a; mg/L) variable was used as an HAB indicator, where the data were obtained from MODIS and GEBCO bathymetry. The eight-day dataset interval was from January 2003 to December 2018. The results obtained showed that the LSTM model outperformed the CNN model in terms of accuracy using RMSE and the correlation coefficient r as the statistical criteria.
机译:有害的藻类盛开(HAB)事件具有令人震惊的人类健康机构,导致严重的疾病和死亡,海洋生物死亡,以及巨大的鱼类杀戮。这项工作旨在执行长期内存(LSTM)方法和卷积神经网络(CNN)方法来预测沙巴西海岸的HAB活动。结果表明,该方法可用于预测卫星时间序列数据,其中先前的研究仅使用了矢量数据。本文还可以识别和预测该地区是否存在HAB发生。叶绿素浓度(CHL-A; Mg / L)变量用作HAB指示器,其中数据是从MODIS和Gebco碱基测定的。八日的数据集间隔是从2003年1月到2018年12月。所获得的结果表明,LSTM模型在使用RMSE和相关系数R作为统计标准的准确性方面表现优于CNN模型。

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