微电网损失:当整体大于部分之和

Maxim Buevich, Xiao Zhang, Oliver Shih, Dan Schnitzer, Tristan Escalada, Arthur Jacquiau-Chamski, Jon Thacker, Anthony G. Rowe
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引用次数: 13

摘要

非技术损耗(NTL)在发展中国家提供可靠的电力服务时是一个重大挑战,在这些国家,非技术损耗通常占总发电量的11-15%[1]。NTL是由多种因素引起的,如盗窃、未计量的家庭和无法支付,这些因素可能导致系统不稳定、电网故障和供应商的重大经济损失。在本文中,我们研究了微电网中NTL与总损耗分离的误差来源和技术。我们采用并比较了两类检测NTL的方法:(1)模型驱动和(2)数据驱动。模型驱动类考虑状态不确定性的主要来源,包括线路损耗、仪表消耗、仪表校准误差、数据包丢失和样本同步误差。在数据驱动类中,我们使用了两种基于训练数据学习网格状态的方法。第一种方法在电网运行的无ntl时期使用回归技术来捕获状态误差和总消耗之间的关系。第二种方法使用在合成NTL数据上训练的支持向量机。这两类方法都可以提供基于检测到的NTL数量的置信区间。我们对部署在海地Les Anglais的525个家庭微电网收集的无线电表数据进行了实验评估和比较。我们看到两者都非常有效,但是数据驱动类更容易实现。在这两种情况下,我们都能够通过实验评估在多大程度上我们可以可靠地将NTL与总损失分开。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Microgrid Losses: When the Whole Is Greater Than the Sum of Its Parts
Non-Technical Loss (NTL) represents a major challenge when providing reliable electrical service in developing countries, where it often accounts for 11-15% of total generation capacity [1]. NTL is caused by a variety of factors such as theft, unmetered homes, and inability to pay, which at volume can lead to system instability, grid failure, and major financial losses for providers. In this paper, we investigate error sources and techniques for separating NTL from total losses in microgrids. We adopt and compare two classes of approaches for detecting NTL: (1) model- driven and (2) data- driven. The model-driven class considers the primary sources of state uncertainty including line losses, meter consumption, meter calibration error, packet loss, and sample synchronization error. In the data-driven class, we use two approaches that learn grid state based on training data. The first approach uses a regression technique on an NTL-free period of grid operation to capture the relationship between state error and total consumption. The second approach uses an SVM trained on synthetic NTL data. Both classes of approaches can provide a confidence interval based on the amount of detected NTL. We experimentally evaluate and compare the approaches on wireless meter data collected from a 525-home microgrid deployed in Les Anglais, Haiti. We see that both are quite effective, but that the data-driven class is significantly easier to implement. In both cases, we are able to experimentally evaluate to what degree we can reliably separate NTL from total losses.
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