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首页> 外文期刊>Applied stochastic models in business and industry >Clustering electricity consumers using high‐dimensional regression mixture models
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Clustering electricity consumers using high‐dimensional regression mixture models

机译:使用高维回归混合模型对电力消费者进行聚类

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Abstract A massive amount of data about individual electrical consumptions are now provided with new metering technologies and smart grids. These new data are especially useful for load profiling and load modeling at different scales of the electrical network. A new methodology based on mixture of high‐dimensional regression models is used to perform clustering of individual customers. It leads to uncovering clusters corresponding to different regression models. Temporal information is incorporated in order to prepare the next step, the fit of a forecasting model in each cluster. Only the electrical signal is involved, slicing the electrical signal into consecutive curves to consider it as a discrete time series of curves. Interpretation of the models is given on a real smart meter dataset of Irish customers.
机译:摘要 现在,随着新的计量技术和智能电网的出现,有关个人用电量的大量数据被提供。这些新数据对于电网不同尺度的负荷剖析和负荷建模特别有用。使用一种基于高维回归模型混合的新方法对单个客户进行聚类。它导致发现对应于不同回归模型的聚类。合并时间信息是为了准备下一步,即每个聚类中预测模型的拟合。仅涉及电信号,将电信号切成连续的曲线,将其视为曲线的离散时间序列。模型的解释是在爱尔兰客户的真实智能电表数据集上给出的。

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