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Data Driven Framework for Load Profile Generation in Medium Voltage Networks via Transfer Learning

机译:通过转移学习在中压网络中生成负载曲线的数据驱动框架

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This paper presents a framework to create daily active power load profiles adapted to the social demographic characteristics of the areas serviced by medium to low voltage (MV/LV) distribution transformers, to reduce the number of measurement devices to be installed in the distribution grid. The core concept is the use of transfer learning with a domain adaptation approach, which uses actual MV load consumption of the transformers where the data is available to transfer load patterns from one transformer to another. The framework has three main steps: clustering historical load profiles by consumption types; training a supervised classification model which relates consumption type and social demographic attributes; implementing the transfer learning method to generate a daily profile. The framework shows positive transfer learning between transformers, creating load profiles that correspond with activities in the servicing areas. The implementation is demonstrated with real data from two municipalities in the Netherlands.
机译:本文提出了一个框架,以创建适合于中低压(MV / LV)配电变压器服务区域的社会人口统计特征的每日有功功率负荷曲线,以减少要安装在配电网中的测量设备的数量。核心概念是将转移学习与域自适应方法结合使用,该方法使用变压器的实际MV负载消耗,在此情况下,数据可用于将负载模式从一个变压器转移到另一个变压器。该框架包括三个主要步骤:按消耗类型对历史负载配置文件进行聚类;训练与消费类型和社会人口统计特征有关的监督分类模型;实施转移学习方法以生成每日个人资料。该框架显示了变压器之间积极的转移学习,并创建了与服务区域中的活动相对应的负载曲线。来自荷兰两个城市的真实数据演示了该实施方案。

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