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Online identification of appliances from power consumption data collected by smart meters

机译:通过智能电表收集的功耗数据在线识别设备

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摘要

The efficient use of resources is a matter of great concern in today's society, especially in the energy sector. Although the main strategy to decrease energy use has long been focused on supply, over the last few years, there has been a shift to the demand side. Under this new line of action, demand-side management networks have emerged and extended from the household level to larger installations, with the appearance of the concepts of Smart Grids and even Smart Cities. The extended use of Smart Meters for measuring residential electricity consumption facilitates the creation of such intelligent environments. In this context, this article proposes a system which extracts value from the collected consumer information to identify the appliances belonging to that smart environment by means of machine learning techniques. Considering the large amount of information that would be handled when millions of homes were sending data, big data technology has been used. An experiment to evaluate the classification method was carried out with seven devices and three different configurations. The results are also reported, achieving promising results, with recognition rates of 75 % after 1 h of training and 100 % after 4 h.
机译:资源的有效利用是当今社会尤其是能源部门高度关注的问题。尽管减少能源消耗的主要策略长期以来一直集中在供应上,但在过去几年中,已经向需求侧转移。在这一新的行动方针下,随着智能电网甚至智能城市概念的出现,需求方管理网络已经出现并从家庭层面扩展到更大的设施。智能电表在测量居民用电量中的广泛使用促进了这种智能环境的创建。在这种情况下,本文提出了一种系统,该系统从收集的消费者信息中提取价值,以借助机器学习技术来识别属于该智能环境的设备。考虑到数百万个家庭在发送数据时会处理大量信息,因此已使用大数据技术。使用七个设备和三种不同的配置进行了评估分类方法的实验。还报告了结果,取得了可喜的结果,训练1小时后的识别率为75%,4小时后为100%。

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