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Whole Time Series Data Streams Clustering: Dynamic Profiling of the Electricity Consumption

机译:整个时间序列数据流聚类:电力消耗的动态分析

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摘要

Data from smart grids are challenging to analyze due to their very large size, high dimensionality, skewness, sparsity, and number of seasonal fluctuations, including daily and weekly effects. With the data arriving in a sequential form the underlying distribution is subject to changes over the time intervals. Time series data streams have their own specifics in terms of the data processing and data analysis because, usually, it is not possible to process the whole data in memory as the large data volumes are generated fast so the processing and the analysis should be done incrementally using sliding windows. Despite the proposal of many clustering techniques applicable for grouping the observations of a single data stream, only a few of them are focused on splitting the whole data streams into the clusters. In this article we aim to explore individual characteristics of electricity usage and recommend the most suitable tariff to the customer so they can benefit from lower prices. This work investigates various algorithms (and their improvements) what allows us to formulate the clusters, in real time, based on smart meter data.
机译:由于其尺寸大,高度,偏差,稀疏性和季节性波动数,包括日常和每周效果,来自智能电网的数据挑战。通过以顺序形式到达的数据,底层分布可能会在时间间隔内进行更改。时间序列数据流在数据处理和数据分析方面都有自己的细节,因为通常,通常不可能在很快生成大数据卷中,因此无法处理内存中的整个数据,因此处理和分析应该逐步完成处理和分析使用滑动窗口。尽管提出了适用于对单个数据流的观察分组的许多聚类技术,但其中只有少数部分侧重于将整个数据流分成群集。在本文中,我们的目标是探讨电力使用的个性特征,并为客户推荐最适合的关税,以便他们可以从更低的价格中受益。这项工作调查了各种算法(及其改进)允许我们实时基于智能仪表数据来制定集群。

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