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Determination of the Optimal Training Principle and Input Variables in Artificial Neural Network Model for the Biweekly Chlorophyll-a Prediction: A Case Study of the Yuqiao Reservoir China

机译:双周叶绿素-a预测的人工神经网络模型的最优训练原理和输入变量的确定:以中国玉桥水库为例

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摘要

Predicting the levels of chlorophyll-a (Chl-a) is a vital component of water quality management, which ensures that urban drinking water is safe from harmful algal blooms. This study developed a model to predict Chl-a levels in the Yuqiao Reservoir (Tianjin, China) biweekly using water quality and meteorological data from 1999-2012. First, six artificial neural networks (ANNs) and two non-ANN methods (principal component analysis and the support vector regression model) were compared to determine the appropriate training principle. Subsequently, three predictors with different input variables were developed to examine the feasibility of incorporating meteorological factors into Chl-a prediction, which usually only uses water quality data. Finally, a sensitivity analysis was performed to examine how the Chl-a predictor reacts to changes in input variables. The results were as follows: first, ANN is a powerful predictive alternative to the traditional modeling techniques used for Chl-a prediction. The back program (BP) model yields slightly better results than all other ANNs, with the normalized mean square error (NMSE), the correlation coefficient (Corr), and the Nash-Sutcliffe coefficient of efficiency (NSE) at 0.003 mg/l, 0.880 and 0.754, respectively, in the testing period. Second, the incorporation of meteorological data greatly improved Chl-a prediction compared to models solely using water quality factors or meteorological data; the correlation coefficient increased from 0.574-0.686 to 0.880 when meteorological data were included. Finally, the Chl-a predictor is more sensitive to air pressure and pH compared to other water quality and meteorological variables.
机译:预测叶绿素-a(Chl-a)的水平是水质管理的重要组成部分,可确保城市饮用水免受有害藻华的侵害。本研究使用1999-2012年的水质和气象数据,每两周开发了一个模型,以预测玉桥水库(中国天津市)中的Chl-a水平。首先,比较了六个人工神经网络(ANN)和两种非人工神经网络方法(主要成分分析和支持向量回归模型),以确定适当的训练原理。随后,开发了三种具有不同输入变量的预测变量,以检验将气象因素纳入Chl-a预测的可行性,该预测通常仅使用水质数据。最后,进行了敏感性分析,以检查Chl-a预测变量如何对输入变量的变化做出反应。结果如下:首先,人工神经网络是用于Chl-a预测的传统建模技术的有力预测替代方法。反向程序(BP)模型产生的结果比所有其他人工神经网络略好,归一化均方误差(NMSE),相关系数(Corr)和Nash-Sutcliffe效率系数(NSE)为0.003 mg / l,测试期间分别为0.880和0.754。其次,与仅使用水质因子或气象数据的模型相比,纳入气象数据极大地改善了Chl-a预测;当包括气象数据时,相关系数从0.574-0.686增加到0.880。最后,与其他水质和气象变量相比,Chl-a预测因子对气压和pH值更敏感。

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  • 总页数 16
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