一种高分辨率流迹滤波算法,以改善水的最终用途分析

L. Pastor-Jabaloyes, F. Arregui, R. Cobacho
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引用次数: 3

摘要

在设计水终端识别自动工具时遇到的主要困难之一是记录的流动轨迹中存在的固有噪声。噪声主要是由于监测设备无法准确记录用水量和数据记录仪无法记录从水表接收的信号而不失真造成的。开发了一种通用滤波算法来去除噪声并简化水消耗流迹,旨在改进未来的自动终端用户识别算法。通过对21,647个事件的分析,评估了所提出的过滤方法的性能。用水量数据来自两项不同的水最终用途研究,消费者和监测设备具有不同的特征。结果表明,该算法能够平均去除构成所检查的复杂事件流迹的数据点的70%。简化的流迹允许更快、更准确的分解和分类算法,而不会丢失重要信息或扭曲原始信号。采用克林-古普塔效率系数对所提滤波算法拟合原始流迹的能力进行了基准测试,得到了0.79以上的平均值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A filtering algorithm for high-resolution flow traces to improve water end-use analysis
One of the main difficulties encountered when designing automatic tools for water end use identification is the inherent noise present in recorded flow traces. Noise is mainly caused by the inability of the monitoring equipment to accurately register water consumption and data-loggers to register, without distortion, the signal received from the water meter. A universal filtering algorithm has been developed to remove noise and simplify water consumption flow traces with the aim of improving future automatic end use identification algorithms. The performance of the proposed filtering methodology is assessed through the analysis of 21,647 events. Water consumption data were sourced from two different water end use studies, having consumers and monitoring equipment with dissimilar characteristics. The results obtained show that the algorithm is capable of removing an average of 70% of the data points that constitute the flow traces of the complex events examined. The simplified flow traces allow for faster and more accurate disaggregation and classification algorithms, without losing significant information or distorting the original signal. The ability of the proposed filtering algorithm to fit the original flow traces was benchmarked using the Kling-Gupta efficiency coefficient, obtaining an average value above 0.79.
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