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Turning Routine Data into Systems Insight: Multivariate Analysis of Water Quality Dynamics in a Major Drinking Water Reservoir

机译:将例行数据转换为系统洞察:主要饮用水储层中水质动态的多变量分析

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Long-term water quality datasets generated by the routine monitoring activities of public water supply utilities are often underutilized in terms of the information they contain regarding system dynamics. This study demonstrates the insight that may be derived from thorough analysis of such data, in terms of evaluating key factors underlying spatial and temporal patterns in the water quality of major storage reservoirs. Principal component (PCA) and multivariate curve resolution-alternating least squares (MCR-ALS) analyses were applied to three consecutive years of monitoring data, comprising 22 physicochemical parameters, measured at three sampling stations within a major drinking water reservoir. Reservoir nitrogen levels were found to be most strongly influenced by urban run-off from the south-eastern catchment region, while total phosphorus levels were more closely linked to inflows to the northern end of the reservoir from the mainly agricultural neighbouring catchment. Elevations in soluble reactive phosphorus (SRP) were correlated with increases in the vertical temperature gradient of the water column at the relatively shallow northern end, suggesting possible release from sediments as a major source. SRP and thermal gradient, as opposed to absolute water temperature, were found to be the factors most closely aligned with chlorophyll-α levels in the reservoir. The analyses highlighted the catchment origins and in-storage foci of key factors driving algal productivity within the reservoir, suggesting that water quality management strategies may be further informed by investigation of sediment characteristics and interplay between physical, chemical and biological processes at the northern end of the reservoir.
机译:由常规监测公共供水公用事业的日常监测活动产生的长期水质数据集通常在其包含关于系统动态的信息方面未化。本研究表明,在评估主要储存储层水质中的空间和时间模式下面的关键因素方面,可以从对这些数据进行全面分析的洞察力。主要成分(PCA)和多变量曲线分辨率 - 交替的最小二乘(MCR-ALS)分析被应用于包括22个物理化学参数的三年,其在主要饮用水储存器中的三个采样站测量。发现水库氮水平受到东南集水区城市径流的影响最大,而总磷水平与流入水库的北端,从主要农业邻近的集水区流入。可溶性反应性磷(SRP)的升高与相对浅北端的水柱的垂直温度梯度的增加相关,表明可能从沉积物中释放为主要来源。发现SRP和热梯度与绝对水温相反,发现与储存器中的叶绿素-α水平最紧密地对准的因素。该分析突出了推动水库内推动藻类生产率的关键因素的集水源和储存焦点,这表明可以通过调查沉积物特征和北端物理,化学和生物过程之间的相互作用进一步了解水质管理策略水库。

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