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Sewer system flow components identification using signal processing.

机译:下水道系统流量成分的识别采用信号处理。

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The development of a continuous model to simulate the behaviour of sewer systems requires detailed information on each component of the flows contributing to the global discharge. In this paper authors investigate a novel method based on signal processing and long time series data implemented with a 2 min time step (flow rate, conductivity, pH and turbidity) in order to identify the dry weather components in a separated stormwater sewer system draining an industrial catchment. The wavelet analysis is applied to the recorded data to identify main components in dry weather flow after the removing of the signal noise. This paper highlights also a method to detect inflow into sewer system and shows how hydrological modelling can be used to characterise the relevant components. These techniques could be used as a basis for several applications.
机译:开发连续模型以模拟下水道系统的行为需要有关有助于全球排放的流量各组成部分的详细信息。本文作者研究了一种基于信号处理和长时间序列数据的新方法,该方法以2分钟的时间步长(流速,电导率,pH和浊度)实现,以识别排泄污水的单独雨水排水系统中的干燥天气成分。工业集水区。小波分析应用于记录的数据,以在去除信号噪声后识别干燥天气流中的主要成分。本文还重点介绍了一种检测流入下水道系统的流量的方法,并展示了如何使用水文模型来表征相关组件。这些技术可以用作多种应用的基础。

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