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Estimating and Predicting Metal Concentration Using Online Turbidity Values and Water Quality Models in Two Rivers of the Taihu Basin Eastern China

机译:利用在线浊度值和水质模型估算和预测太湖流域两条河流中的金属浓度

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摘要

Turbidity (T) has been widely used to detect the occurrence of pollutants in surface water. Using data collected from January 2013 to June 2014 at eleven sites along two rivers feeding the Taihu Basin, China, the relationship between the concentration of five metals (aluminum (Al), titanium (Ti), nickel (Ni), vanadium (V), lead (Pb)) and turbidity was investigated. Metal concentration was determined using inductively coupled plasma mass spectrometry (ICP-MS). The linear regression of metal concentration and turbidity provided a good fit, with R2 = 0.86–0.93 for 72 data sets collected in the industrial river and R2 = 0.60–0.85 for 60 data sets collected in the cleaner river. All the regression presented good linear relationship, leading to the conclusion that the occurrence of the five metals are directly related to suspended solids, and these metal concentration could be approximated using these regression equations. Thus, the linear regression equations were applied to estimate the metal concentration using online turbidity data from January 1 to June 30 in 2014. In the prediction, the WASP 7.5.2 (Water Quality Analysis Simulation Program) model was introduced to interpret the transport and fates of total suspended solids; in addition, metal concentration downstream of the two rivers was predicted. All the relative errors between the estimated and measured metal concentration were within 30%, and those between the predicted and measured values were within 40%. The estimation and prediction process of metals’ concentration indicated that exploring the relationship between metals and turbidity values might be one effective technique for efficient estimation and prediction of metal concentration to facilitate better long-term monitoring with high temporal and spatial density.
机译:浊度(T)已被广泛用于检测地表水中污染物的发生。使用2013年1月至2014年6月在沿中国太湖流域的两条河流的11个站点收集的数据,五种金属(铝(Al),钛(Ti),镍(Ni),钒(V))的浓度之间的关系,铅(Pb))和浊度进行了研究。使用感应耦合等离子体质谱法(ICP-MS)测定金属浓度。金属浓度和浊度的线性回归提供了很好的拟合,对于工业河流中收集的72个数据集,R 2 = 0.86–0.93,R 2 = 0.60–0.85在更清洁的河流中收集的60个数据集。所有的回归都显示出良好的线性关系,从而得出以下结论:五种金属的存在与悬浮固体直接相关,并且可以使用这些回归方程来估算这些金属的浓度。因此,使用线性回归方程式使用2014年1月1日至6月30日的在线浊度数据估算金属浓度。在预测中,引入了WASP 7.5.2(水质分析模拟程序)模型来解释水的运移和迁移。总悬浮固体的命运;此外,还预测了两条河流下游的金属浓度。估计和测量的金属浓度之间的所有相对误差都在30%以内,而预测和测量值之间的所有相对误差都在40%以内。金属浓度的估计和预测过程表明,探索金属与浊度值之间的关系可能是一种有效的金属浓度估计和预测方法,以促进在高时空密度下进行更好的长期监测的有效技术。

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