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Data-mining analysis of in-sewer infiltration patterns: seasonal characteristics of clear water seepage into Brussels main sewers

机译:下水道入渗模式的数据挖掘分析:布鲁塞尔主要下水道的清水渗漏的季节特征

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Parasitic clear water infiltration is known to increase the waste water volumes in most sewerage systems. Amongst others, a problem arising from that is a significant variation of waste water pollutant concentration over time, which complicates the purification process and increases its cost. Capitalizing on new extensive databases, we propose a new method for the identification of clear water infiltration rates based on data-mining and data consolidation of long time data series. Based on a straightforward anthropogenic tracer, together with a simple but rigorous water budget, the infiltrated volumes are quantified day-by-day for the entire zone treated by a major waste water treatment plant. Brussels city is used as an example of the applicability of the method over several years, demonstrating the significant seasonal changes in sewer infiltration rates in the area and the progress achieved so far by structural sewer repair.
机译:众所周知,寄生的清水渗透会增加大多数污水处理系统中的废水量。其中,由此产生的问题是废水污染物浓度随时间的显着变化,这使净化过程复杂化并增加了成本。利用新的广泛数据库,我们提出了一种基于长时间数据序列的数据挖掘和数据合并来识别净水入渗率的新方法。基于简单的人为示踪剂以及简单但严格的水预算,每天对由主要废水处理厂处理的整个区域的渗透量进行定量。布鲁塞尔市作为该方法几年来适用性的一个例子,证明了该地区下水道渗透率的明显季节性变化以及迄今为止通过结构性下水道维修取得的进展。

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