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Use of principal component scores in multiple linear regression models for prediction of Chlorophyll-a in reservoirs

机译:在多元线性回归模型中使用主成分评分预测储层中的叶绿素-a

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Chlorophyll-a is a well-accepted index for phytoplankton abundance and population of primary producers in an aquatic environment. The relationships between Chlorophyll-a and 16 chemical, physical and biological water quality variables in amlidere reservoir (Ankara, Turkey) were studied by using principal component scores (PCS) in multiple linear regression analysis (MLR) to predict Chlorophyll-a levels. Principal component analysis was used to simplify the complexity of relations between water quality variables. Score values obtained by PC scores were used as independent variables in the multiple linear regression models. Two approaches were used in the present statistical analysis. In the first approach, only five selected score values obtained by PC analysis were used for the prediction of Chlorophyll-a levels and predictive success (R-2) of the model found as 56.3%. In the second approach, where all score values obtained from the PC analysis were used as independent variables, predictive power was turned out to be 90.8%. Both approaches could be used to predict Chlorophyll-a levels in reservoirs successfully. (C) 2004 Elsevier B.V. All rights reserved.
机译:叶绿素-a是水生环境中浮游植物丰度和初级生产者种群数量的公认指标。通过使用多元线性回归分析(MLR)中的主成分评分(PCS)预测叶绿素a水平,研究了amlidere水库(土耳其安卡拉)中叶绿素a与16种化学,物理和生物水质变量之间的关系。主成分分析用于简化水质变量之间关系的复杂性。通过PC得分获得的得分值在多元线性回归模型中用作自变量。本统计分析中使用了两种方法。在第一种方法中,仅将通过PC分析获得的五个选定得分值用于叶绿素a水平的预测,模型的预测成功率(R-2)为56.3%。在第二种方法中,将从PC分析获得的所有得分值都用作独立变量,预测力被证明是90.8%。两种方法都可以成功地预测储层中的叶绿素a水平。 (C)2004 Elsevier B.V.保留所有权利。

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