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Prediction of chlorophyll-a in the Daning River of Three Gorges Reservoir by principal component scores in multiple linear regression models

机译:利用多元线性回归模型中的主成分评分预测三峡水库大宁河中的叶绿素a

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After the impoundment of the Three Gorges Reservoir (TGR) since 2003, eutrophication has occurred and has become severe in Daning River. To predict chlorophyll-a (Chl-a) levels, the relationships between Chl-a and 11/13 routine monitoring data on water quality and hydrodynamics in Daning River were studied by principal component scores in the multiple linear regression model (principal component regression (PCR) model). In order to determine the hydrodynamic effect on simulated accuracy, two 0-day ahead prediction models were established: model A without hydrodynamic factors as variables, and model B with hydrodynamic factors (surface water velocity and water residence time) as variables. Based on the results of correlation analysis, score 1 and 2 with significant loads of phosphorus and nitrogen nutrients were omitted in developing model A (R~2 = 0.355); while score 2 with significant loads of nitrogen was omitted in developing model B (R~2 = 0.777). The results of validation using a new dataset showed that model B achieved a better fitted relationship between the predicted and observed values of Chl-a. It indicated hydrodynamics play an important role in limiting algal growth. The results suggested that a PCR model incorporating hydrodynamics processes has been suitable for the Chl-a concentration simulation and algal blooming prediction in Daning River of TGR.
机译:自2003年以来,在三峡水库(TGR)蓄水之后,富营养化现象已经发生,并且在大宁河变得更加严重。为了预测叶绿素a(Chl-a)水平,通过多元线性回归模型中的主成分评分研究了Ching-a与大宁河水质和水动力学11/13常规监测数据之间的关系。 PCR)模型)。为了确定流体动力对模拟精度的影响,建立了两个提前0天的预测模型:没有流体动力因素作为变量的模型A,以及具有流体动力因素(地表水速度和水停留时间)作为变量的模型B。根据相关性分析的结果,在开发模型A中,磷和氮养分含量较高的得分1和2被忽略了(R〜2 = 0.355);而在开发模型B中忽略了氮含量较高的得分2(R〜2 = 0.777)。使用新数据集的验证结果表明,模型B在Chl-a的预测值和观察值之间实现了更好的拟合关系。这表明流体动力学在限制藻类生长中起重要作用。结果表明,结合水动力学过程的PCR模型已经适合于TGR大宁河的Chl-a浓度模拟和藻华预测。

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