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Handling bad or missing smart meter data through advanced data imputation

机译:通过高级数据插补处理不良或丢失的智能电表数据

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Smart meters and other the modern distribution measurement devices provide new and more data, but usually they are subject to longer delays and lower reliability than transmission system SCADA. Accurate and robust use of the modern distribution system measurements will be a cornerstone of the future advanced distribution management systems. This paper presents a novel and computationally efficient data processing method for imputing bad and missing load power measurements to create full power consumption data sets. The imputed data periods have a continuous profile with respect to the adjacent available measurements, which is a highly desirable feature for time-series (power flow) analyses. The method is shown to be superior in accuracy to a utility best practice approach. Our simulations use actual AMI data collected from 128 smart meters on the Georgia Tech campus.
机译:智能电表和其他现代配电测量设备可提供新的和更多的数据,但与传输系统SCADA相比,它们通常具有更长的延迟和更低的可靠性。准确,可靠地使用现代配电系统测量将是未来高级配电管理系统的基石。本文提出了一种新颖的计算有效的数据处理方法,用于估算不良和缺失的负载功率测量结果,以创建完整的功耗数据集。推算的数据周期相对于相邻的可用测量值具有连续的轮廓,这对于时间序列(功率流)分析而言是非常理想的功能。结果表明,该方法的准确性优于实用程序最佳实践方法。我们的模拟使用从佐治亚理工大学校园内的128个智能电表收集的实际AMI数据。

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