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Improved Prediction of Harmful Algal Blooms in Four Major South Korea’s Rivers Using Deep Learning Models

机译:使用深度学习模型改进对韩国四大河流中有害藻华的预测

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摘要

Harmful algal blooms are an annual phenomenon that cause environmental damage, economic losses, and disease outbreaks. A fundamental solution to this problem is still lacking, thus, the best option for counteracting the effects of algal blooms is to improve advance warnings (predictions). However, existing physical prediction models have difficulties setting a clear coefficient indicating the relationship between each factor when predicting algal blooms, and many variable data sources are required for the analysis. These limitations are accompanied by high time and economic costs. Meanwhile, artificial intelligence and deep learning methods have become increasingly common in scientific research; attempts to apply the long short-term memory (LSTM) model to environmental research problems are increasing because the LSTM model exhibits good performance for time-series data prediction. However, few studies have applied deep learning models or LSTM to algal bloom prediction, especially in South Korea, where algal blooms occur annually. Therefore, we employed the LSTM model for algal bloom prediction in four major rivers of South Korea. We conducted short-term (one week) predictions by employing regression analysis and deep learning techniques on a newly constructed water quality and quantity dataset drawn from 16 dammed pools on the rivers. Three deep learning models (multilayer perceptron, MLP; recurrent neural network, RNN; and long short-term memory, LSTM) were used to predict chlorophyll-a, a recognized proxy for algal activity. The results were compared to those from OLS (ordinary least square) regression analysis and actual data based on the root mean square error (RSME). The LSTM model showed the highest prediction rate for harmful algal blooms and all deep learning models out-performed the OLS regression analysis. Our results reveal the potential for predicting algal blooms using LSTM and deep learning.
机译:有害藻华是一种每年都会造成环境破坏,经济损失和疾病暴发的现象。仍然缺少对该问题的根本解决方案,因此,抵消藻华的影响的最佳选择是改善预警(预测)。但是,现有的物理预测模型很难设置明确的系数来指示预测藻华时各个因素之间的关系,并且分析需要大量可变数据源。这些限制伴随着高昂的时间和经济成本。同时,人工智能和深度学习方法在科学研究中变得越来越普遍。将长期短期记忆(LSTM)模型应用于环境研究问题的尝试正在增加,因为LSTM模型对于时序数据预测具有良好的性能。但是,很少有研究将深度学习模型或LSTM应用于藻华预测,尤其是在每年发生藻华的韩国。因此,我们将LSTM模型用于预测韩国四大河流中的藻华。我们对来自河流上16个水塘的新建水质和水量数据集进行了回归分析和深度学习,运用了回归分析和深度学习技术进行了短期(一周)预测。三种深度学习模型(多层感知器,MLP;递归神经网络,RNN;和长期短期记忆,LSTM)被用来预测叶绿素-a,藻类活性是公认的代理。将结果与来自OLS(普通最小二乘)回归分析的结果和基于均方根误差(RSME)的实际数据进行比较。 LSTM模型显示出对有害藻华的最高预测率,所有深度学习模型均优于OLS回归分析。我们的结果揭示了使用LSTM和深度学习预测藻华的潜力。

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