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From mess to mass: A methodology for calculating storm event pollutant loads with their uncertainties, from continuous raw data time series

机译:从混乱到大规模:从连续原始数据时间序列中计算风暴事件污染物负荷及其不确定性的方法

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With the increasing implementation of continuous monitoring of both discharge and water quality in sewer systems, large data bases are now available. In order to manage large amounts of data and calculate various variables and indicators of interest it is necessary to apply automated methods for data processing. This paper deals with the processing of short time step turbidity time series to estimate TSS (Total Suspended Solids) and COD (Chemical Oxygen Demand) event loads in sewer systems during storm events and their associated uncertainties. The following steps are described: (i) sensor calibration, (ii) estimation of data uncertainties, (iii) correction of raw data, (iv) data pre-validation tests, (v) final validation, and (vi) calculation of TSS and COD event loads and estimation of their uncertainties. These steps have been implemented in an integrated software tool. Examples of results are given for a set of 33 storm events monitored in a stormwater separate sewer system.
机译:随着对下水道系统中排放和水质的连续监控的实施越来越多,现在可以使用大型数据库。为了管理大量数据并计算各种感兴趣的变量和指标,有必要将自动化方法应用于数据处理。本文处理短时浊度时间序列的处理过程,以估计暴雨事件期间下水道系统中的TSS(总悬浮固体)和COD(化学需氧量)事件负荷及其相关的不确定性。描述了以下步骤:(i)传感器校准,(ii)数据不确定性估计,(iii)原始数据校正,(iv)数据预验证测试,(v)最终验证和(vi)TSS的计算以及COD事件负载及其不确定性的估计。这些步骤已在集成软件工具中实现。给出了在雨水分离下水道系统中监视的33个暴雨事件的结果示例。

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