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首页> 外文期刊>E3S Web of Conferences >Characterization and Classification of Daily Electricity Consumption Profiles: Shape Factors and k-Means Clustering Technique
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Characterization and Classification of Daily Electricity Consumption Profiles: Shape Factors and k-Means Clustering Technique

机译:日常用电曲线的表征和分类:形状因子和k-均值聚类技术

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This paper exposes a method to classify the electric consumption profiles of different types of consumers, based on patterns given. The direct characteristics method is used in this paper, this method is also known as shape factors deduction (SFs) to easily define consumption profiles by using the load patterns resulting from measurements in the time domain, considering weekdays and time ranges. After the characterization of load profiles, k-means clustering technique is applied to SFs. The SFs are segmented in such a way that, in each group similar SFs are gathered. The characterization and classification of electric profiles has important applications, such as the application of specific tariffs according the consumer type, determination of optimal location of generation resources in electrical distribution systems, detection of anomalies in transmission and distribution of electricity or classify geographical areas according to electricity consumption and perform an optimum balance of feeders in electrical substations.
机译:本文介绍了一种基于给定模式对不同类型用户的用电量分布进行分类的方法。本文使用直接特征方法,该方法也称为形状因子推导(SFs),它通过使用在时域中进行测量得出的负载模式(考虑工作日和时间范围)来轻松定义消耗曲线。表征负荷曲线后,将k均值聚类技术应用于SF。 SF的分段方式是,在每个组中收集相似的SF。电力配置文件的表征和分类具有重要的应用,例如根据用户类型应用特定的电价,确定配电系统中发电资源的最佳位置,检测电力传输和分配中的异常情况或根据以下情况对地理区域进行分类电力消耗,并实现变电站中馈线的最佳平衡。

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