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Data Mining Application in Assessment of Weather-Based Influent Scenarios for a WWTP: Getting the Most Out of Plant Historical Data

机译:数据挖掘在污水处理厂基于天气的进水情景评估中的应用:充分利用工厂历史数据

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Since the introduction of environmental legislations and directives, the impact of combined sewer overflows (CSO) on receiving water bodies has become a priority concern in water and wastewater treatment industry. Time-consuming and expensive local sampling and monitoring campaigns are usually carried out to estimate the characteristic flow and pollutant concentrations of CSO water. This study focuses on estimating the frequency and duration of wet-weather events and their impacts on influent flow and wastewater characteristics of the largest Italian wastewater treatment plant (WWTP) located in Castiglione Torinese. Eight years (viz. 2009-2016) of historical data in addition to arithmetic mean daily precipitation rates (P-I) of the plant catchment area are elaborated. Relationships between P-I and volumetric influent flow rate (Q(in)), chemical oxygen demand (COD), ammonium (N-NH4), and total suspended solids (TSS) are investigated. A time series data mining (TSDM) method is implemented with MATLAB computing package for segmentation of time series by use of a sliding window algorithm (SWA) to partition the available records associated with wet and dry weather events. According to the TSDM results, a case-specific wet-weather definition is proposed for the Castiglione Torinese WWTP. Two significant weather-based influent scenarios are assessed by kernel density estimation. The results confirm that the method suggested within this study based on plant routinely collected data can be used for planning the emergency response and long-term preparedness for extreme climate conditions in a WWTP. Implementing the obtained results in dynamic process simulation models can improve the plant operational efficiency in managing the fluctuating loads.
机译:自从引入环境法规和指令以来,下水道溢流(CSO)对接收水体的影响已成为水和废水处理行业的优先考虑事项。通常进行耗时且昂贵的本地采样和监测活动来估计CSO水的特征流量和污染物浓度。这项研究的重点是估算位于Castiglione Torinese的意大利最大的废水处理厂(WWTP)的潮湿天气事件的频率和持续时间及其对进水流量和废水特性的影响。阐述了八年(即2009-2016年)的历史数据以及植物集水区的算术平均日降水率(P-I)。研究了P-I与进水体积流量(Q(in)),化学需氧量(COD),铵(N-NH4)和总悬浮固体(TSS)之间的关系。使用MATLAB计算软件包实现了时间序列数据挖掘(TSDM)方法,用于通过使用滑动窗口算法(SWA)划分与潮湿和干旱天气事件相关的可用记录来对时间序列进行分段。根据TSDM的结果,针对Castiglione Torinese污水处理厂提出了针对具体情况的潮湿天气定义。通过内核密度估计可以评估两种基于天气的重要进水方案。结果证实,本研究中建议的基于工厂常规收集数据的方法可用于规划污水处理厂的极端气候条件的应急响应和长期准备。在动态过程仿真模型中实施获得的结果可以提高工厂在管理波动负载方面的运营效率。

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