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首页> 外文期刊>Ecological Modelling >APPLICATION OF MULTIVARIATE STATISTICS IN DETECTING TEMPORAL AND SPATIAL PATTERNS OF WATER CHEMISTRY IN LAKE GEORGE, NEW YORK
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APPLICATION OF MULTIVARIATE STATISTICS IN DETECTING TEMPORAL AND SPATIAL PATTERNS OF WATER CHEMISTRY IN LAKE GEORGE, NEW YORK

机译:多元统计量在确定纽约州乔治湖水化学时空分布中的应用

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摘要

Cluster and component analyses were used to identify temporal and spatial patterns of water chemistry in Lake George, a meso-oligotrophic lake in northeastern New York, during 1981-1993. The lake includes two major basins that have similar area and volume, but different biological community structure, plankton assemblages, watershed area, and watershed development. Analyses were based on total phosphorus, particulate phosphorus, dissolved organic phosphorus, dissolved inorganic phosphorus, nitrate, calcium, chlorophyll a, silica, chloride, and pH, individually or in combinations. Total phosphorus, chlorophyll a, chloride, and particulate phosphorus were included in the first linear component indicating that these are probably the most important analytes in explaining the total variance of the data. In spring or summer, three or four components explained 86 or 84% of the total variance, respectively. Cluster analysis based on the major components or on the original variables indicated that there are distinct differences in water chemistry between the two major basins of the lake. The only long-term temporal pattern that could be detected by cluster analysis was an increase in chloride concentrations. Cluster analysis is found to be a useful tool to detect both step (abrupt) and monotonic (gradual) changes in time and space. [References: 50]
机译:1981年至1993年,通过聚类和成分分析确定了乔治湖(纽约东北部的中贫营养湖)中水化学的时空分布。该湖泊包括两个主要盆地,面积和体积相似,但生物群落结构,浮游生物组合,分水岭面积和分水岭发育不同。分析基于总磷,颗粒磷,溶解的有机磷,溶解的无机磷,硝酸盐,钙,叶绿素a,二氧化硅,氯化物和pH值,分别或组合进行。总磷,叶绿素a,氯化物和颗粒磷都包含在第一线性成分中,表明这些磷可能是解释数据总方差的最重要分析物。在春季或夏季,三个或四个分量分别解释了总方差的86%或84%。根据主要成分或原始变量进行的聚类分析表明,该湖两个主要盆地之间的水化学性质存在明显差异。可以通过聚类分析检测到的唯一长期时间模式是氯化物浓度的增加。发现聚类分析是检测时间和空间的阶跃(突变)和单调(渐进)变化的有用工具。 [参考:50]

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