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Research on Water Quality Prediction Based on SARIMA-LSTM: A Case Study of Beilun Estuary

机译:基于Sarima-LSTM的水质预测研究 - 以北仑河口为例

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As water environment is an important part of mangrove ecosystem, an efficient prediction of water quality is the foundation for judging the health of wetland ecosystem. And it also contributes a lot to the smooth development of environmental protection work. Based on the data of water quality and weather in Beilun Estuary, this paper chooses permanganate index and the content of ammonia nitrogen, which can reflect the water quality, as forecasting targets. We propose a multi-feature prediction method called SARIMA-LSTM on the basis of seasonal autoregressive integrated moving average model and long short-term memory. Through the combination of linear and non-linear model, this method can possess a better prediction effect considering the influence of weather on water quality. And the experimental results of four models show that this method has higher accuracy, stability and reliability.
机译:随着水环境是红树林生态系统的重要组成部分,有效地预测水质是判断湿地生态系统健康的基础。它还为环境保护工作的顺利发展有很大贡献。基于北仑河口水质及天气数据,本文选择了高锰酸盐指数和氨氮的含量,可以反映水质,作为预测目标。我们在季节性自回归集成移动平均模型和长短期记忆的基础上提出了一种称为Sarima-LSTM的多特征预测方法。通过线性和非线性模型的组合,考虑到天气对水质的影响,这种方法可以具有更好的预测效果。四种模型的实验结果表明,该方法具有更高的精度,稳定性和可靠性。

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