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Integrated explainable deep learning prediction of harmful algal blooms

机译:有害藻华的集成可解释深度学习预测

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摘要

Harmful algal blooms (HABs) can cause serious problems for aquatic ecosystems and human health, as well as massive social costs. Therefore, continuous monitoring and prevention are required. Water quality management is an important task to minimize such algae, and future occurrences can be accurately predicted through optimal water resource management. In this study, we developed a convolutional neural network model using eight water quality variables and four weather variables to predict the concentration of chlorophyll-a in four major Korean rivers. In addition, Deep SHAP was applied to aid in policy decision-making and identify the influence on variables affecting chlorophyll-a. This integrated prediction model showed a 38.01 reduction in root mean square error and 36.16 improvement in R-squared compared to the long short-term memory (LSTM) model. This demonstrated the effectiveness of the proposed integrated prediction approach. Furthermore, despite simultaneously predicting HABs at all monitoring stations and training 394 times faster than LSTM-based models, the proposed method exhibited a significant improvement in efficiency and elucidated variable influences that existing models failed to explain. The proposed integrated prediction model can predict HAB spread, identify variable influences to aid decision-makers, and effectively implement preemptive responses, thus reducing economic losses and preserving aquatic ecosystems.
机译:有害藻华 (HAB) 会给水生生态系统和人类健康带来严重问题,并造成巨大的社会成本。因此,需要持续监测和预防。水质管理是减少此类藻类的重要任务,通过优化水资源管理可以准确预测未来的发生。在这项研究中,我们开发了一个卷积神经网络模型,使用8个水质变量和4个天气变量来预测韩国四条主要河流中叶绿素a的浓度。此外,Deep SHAP还用于辅助政策决策,并确定对影响叶绿素a的变量的影响。与长短期记忆 (LSTM) 模型相比,该集成预测模型的均方根误差减少了 38.01%,R 平方提高了 36.16%。这证明了所提出的综合预测方法的有效性。此外,尽管同时预测所有监测站的 HAB 并且训练速度比基于 LSTM 的模型快 394 倍,但所提出的方法在效率方面表现出显着提高,并阐明了现有模型无法解释的变量影响。所提出的综合预测模型可以预测有害藻华的传播,识别可变影响因素以帮助决策者,并有效地实施先发制人的应对措施,从而减少经济损失并保护水生生态系统。

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