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Comparing Time Series Classification And Forecasting To Automatically Detect Distributed Generation

机译:比较时间序列分类和预测自动检测分布式生成

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This paper introduces tools for the automatic detection of "hidden" behind-the-meter solar generation in case where there is no monitoring or connection agreement contract with the system operator. The objective is to reach the highest precision while discriminating the nodes with and without solar generation. The proposed methods are based on exogeneous information (smart meter and temperature data) and artificial intelligence techniques consisting of neural networks as well as analytical classification algorithms. A wide range of models differing in size, architecture and number of parameters has been investigated, and the best performing ones are presented in the article. The first method involves time series classification (TSC), and the second involves time series forecasting (TSF). Open-access consumption data were used for the training of the neural networks. The implemented solutions were tested across all the nodes of the simulated electrical grid and the sensitivity of the tools was analyzed with regard to the level of PV penetration. One of the proposed tools is able to detect up to 100% of new PV installation, depending on the exogenous conditions.
机译:本文介绍了在没有与系统运营商的监控或连接协议合同的情况下自动检测“隐藏”米的“隐藏”后面的太阳能发电的工具。目标是达到最高精度,同时区分有和没有太阳能的节点。所提出的方法基于由神经网络以及分析分类算法组成的同一信息(智能仪表和温度数据)和人工智能技术。已经研究了各种型号,架构和参数数量不同的型号,并在文章中介绍了最佳执行。第一种方法涉及时间序列分类(TSC),第二种方法涉及时间序列预测(TSF)。开放访问消费数据用于培训神经网络。在模拟电网的所有节点上测试了所实施的解决方案,并且在PV渗透水平方面分析了工具的灵敏度。其中一个拟议的工具能够检测高达100%的新型光伏安装,具体取决于外源条件。

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