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INTELLIGENT SYSTEM FOR REMOTELY MONITORING MANGANESE CONCENTRATIONS IN WATER RESERVOIRS

机译:储集层锰浓度智能监测系统

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Continuously monitoring and managing manganese (Mn) concentrations in drinking water reservoirs is of paramount importance for water suppliers, as high soluble Mn levels can lead to the discoloration of potable water. Traditional Mn management involves regular manual water sampling and laboratory analyses. In cases where critical Mn concentration thresholds are exceeded, appropriate treatment procedures are adopted. Despite the Mn level currently being manually sampled throughout the year, in many subtropical monomictic lakes - such as Advancetown Lake on the Gold Coast - Mn concentrations in the epilimnion, where the water is drawn for potable use, are usually only elevated during winter, with the onset of partial or full lake destratification. Vertical profiling systems (VPS) have been installed in Seqwater's stored water reservoirs to continuously collect physical parameters such as: water temperature; specific conductivity; turbidity; pH; REDOX; chlorophyll-a, blue-green algae; and dissolved oxygen. These may be used to accurately determine the transport processes of Mn within the lake system. Therefore, a historical database of VPS and Mn laboratory testing data provides the opportunity to develop a data-driven prediction model that can autonomously forecast seven days in advance the Mn concentrations at the drawn-off depth for water treatment plants. In this study, a VPS was employed alongside physically collected water quality data, and analysed to deliver data-driven predictive models associated with the real-time VPS data collection. These models were able to forecast future Mn concentrations up to seven days ahead with correlation coefficients higher than 0.83 for an independent test dataset. Importantly, the peak concentrations in the epilimnion during lake destratification were predicted with correlation coefficients of greater than 0.90. The models also display the probabilities of the Mn to exceed critical thresholds, thus assisting operators in Mn treatment decision-making. Such a tool is highly beneficial for water suppliers, as the cost and time spent monitoring Mn concentrations can be significantly reduced and more proactive forecasting and planning for elevated levels of Mn can be enabled.
机译:对于饮用水供应商而言,持续监测和管理饮用水水库中的锰(Mn)浓度至关重要,因为高可溶性锰含量会导致饮用水变色。传统的锰管理涉及定期的手动水采样和实验室分析。如果超过了锰的临界阈值,则采用适当的处理程序。尽管目前全年都在手动采样锰水平,但在许多亚热带的单片湖泊中,例如黄金海岸的Advancetown湖,上层饮用水中的锰浓度通常仅在冬季升高,湖泊部分或全部地层破坏的开始。垂直轮廓系统(VPS)已安装在Seqwater的储水库中,以连续收集物理参数,例如:水温;比电导率浊度pH值氧化还原;叶绿素-a,蓝绿色藻类;和溶解氧。这些可用于准确确定锰在湖泊系统中的传输过程。因此,VPS和Mn实验室测试数据的历史数据库为开发数据驱动的预测模型提供了机会,该模型可以提前7天自主预测水处理厂抽取深度处的Mn浓度。在这项研究中,将VPS与实际收集的水质数据一起使用,并进行分析以提供与实时VPS数据收集相关的数据驱动的预测模型。对于一个独立的测试数据集,这些模型能够预测最多7天的未来Mn浓度,相关系数高于0.83。重要的是,预测湖层化过程中上层扬子的峰值浓度具有大于0.90的相关系数。该模型还显示了锰超过临界阈值的可能性,从而帮助操作员进行锰处理决策。这种工具对水供应商非常有利,因为可以显着降低监测锰浓度的成本和时间,并可以更主动地预测和计划锰含量的升高。

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