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Abnormal Data Region Discrimination and Cross-Monitoring Points Historical Correlation Repair of Water Intake Data

机译:异常数据区域辨别与交叉监测点历史相关修复水进口数据

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摘要

For the problems of abnormal values existing in the water intake monitoring data and centralized uploaded report, the abnormal data region discrimination (ADRD) algorithm and the cross-monitoring points historical correlation repair (CMHCR) method are proposed to discriminate and repair the abnormal data. The characteristics of abnormal data distribution are analyzed, and the ADRD algorithm is proposed. ADRD uses the relationship between 0 values and the abnormal large value, and the ratio of the abnormal large value to the expectation to distinguish the abnormal data region. The correlation between the monitoring data of current detection points and the historical data of different detection points is analyzed. The results show that the data of current monitoring point and the historical data of corresponding point do not fully conform to the maximum correlation. Therefore, the CMHCR method is proposed to repair abnormal data. Experiments based on actual half year water intake data of 2016 and 2017 are performed by using ADRD. The experimental results show that the proposed algorithm and method can correctly distinguish the abnormal data region and repair the abnormal data properly.
机译:对于存在于进水监测数据和集中式上传的报告中存在异常值的问题,提出了异常数据区域辨别(ADRD)算法和交叉监测点历史相关修复(CMHCR)方法来区分和修复异常数据。分析了异常数据分布的特性,提出了ADRD算法。 ADRD使用0值与异常大值之间的关系,以及异常大值与区分异常数据区域的预期的比率。分析了电流检测点的监测数据与不同检测点的历史数据之间的相关性。结果表明,当前监测点和相应点的历史数据的数据没有完全符合最大相关性。因此,提出了CMHCR方法来修复异常数据。通过使用ADRD进行基于2016年和2017年的实际半年进水数据的实验。实验结果表明,该算法和方法可以正确地区分异常数据区域并正确修复异常数据。

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