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首页> 外文期刊>Journal of Hydroinformatics >Data reconstruction of flow time series in water distribution systems - a new method that accommodates multiple seasonality
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Data reconstruction of flow time series in water distribution systems - a new method that accommodates multiple seasonality

机译:供水系统中流量时间序列的数据重建-一种适应多个季节的新方法

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The purpose of this paper is to present a simple yet highly effective method to reconstruct missing data in flow time series. The presence of missing values in network flow data severely restricts their use for an adequate management of billing systems and for network operation. Despite significant technology improvements, missing values are frequent due to metering, data acquisition and storage issues. The proposed method is based on a weighted function for forecast and backcast obtained from existing time series models that accommodate multiple seasonality. A comprehensive set of tests were run to demonstrate the effectiveness of this new method and results indicated that a model for flow data reconstruction should incorporate daily and seasonal components for more accurate predictions, the window size used for forecast and backcast should range between 1 and 4 weeks, and the use of two disjoint training sets to generate flow predictions is more robust to detect anomalous events than other existing methods. Results obtained for flow data reconstruction provide evidence of the effectiveness of the proposed approach.
机译:本文的目的是提出一种简单而高效的方法来重建流量时间序列中的缺失数据。网络流数据中缺失值的存在严重限制了它们在计费系统的适当管理和网络操作中的使用。尽管进行了重大的技术改进,但由于计量,数据采集和存储问题,经常会丢失值。所提出的方法基于从用于适应多个季节的现有时间序列模型获得的预测和反向预测的加权函数。进行了全面的测试,以证明此新方法的有效性,结果表明,流量数据重建模型应包含每日和季节性成分,以进行更准确的预测,用于预测和反向预测的窗口大小应介于1-4之间周,并且使用两个不相交的训练集来生成流量预测比其他现有方法更可靠地检测异常事件。流量数据重建获得的结果提供了所提出方法有效性的证据。

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