A Newly Designed Method for On-Line Error Estimation of Smart Meter

Shuanggui Cao, Hua Lin, Wei Xiancan, Ghen Wei
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Abstract

The method of manual verification of smart meters used at the current stage usually suffers from high cost, poor efficiency, and small coverage. A new method is presented to solve the error of energy meter by iteration. Firstly, the daily electricity data is collected and sifted through to classify the data for light-load and no-load meters. Then, by applying the outlier line-loss rate treatment method, it can obtain the invariable-loss & line-loss rate & the suspected out-of-tolerance meter and their initial values. After that, the meter error, invariable-loss, and line-loss rate can be calculated by the improved meter error estimation model. Based on the computed results, the data with relatively high and low line-loss rate are removed. It is to guarantee that the line-loss rate of data is within a small range. The sifted process removes the outliers and avoids the mis-deletion of the valid data, which improves the calculation accuracy. The proposed method proves to be effective in out-of-tolerance meter search by verifying the data from two different scale distribute-electricity transformer districts (DETDs) and comparing with the traditional least-squares method (LSM). The algorithm is easily applicable to small computation burdens.
一种新的智能电表在线误差估计方法
现阶段采用的智能电表人工检定方法,成本高、效率低、覆盖范围小。提出了一种用迭代法求解电能表误差的新方法。首先对日常用电数据进行采集和筛选,对轻载和空载电表进行数据分类。然后,应用异常线损率处理方法,得到不变线损率、线损率、疑似超差仪表及其初始值。然后利用改进的电表误差估计模型计算电表误差、不变损耗和线损率。根据计算结果,分别剔除线损率较高和较低的数据。它是为了保证数据的线损率在小范围内。筛选过程去除了异常值,避免了有效数据的误删,提高了计算精度。通过对两个不同规模配电变区的数据进行验证,并与传统的最小二乘法进行比较,证明了该方法在超差仪表搜索中是有效的。该算法易于适用于计算量小的情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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