基于高斯混合模型和k -均值聚类行为分析的分时用户两阶段模式识别——以泰国PEA为例

Pornchai Chaweewat, J. Singh, W. Ongsakul
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引用次数: 1

摘要

在大数据包围的数字时代,数据和信息成为宝贵的财富。数据挖掘应该是处理大数据的主要和首要过程。本研究利用高斯混合过程研究基于分时电价(TOU)的电力客户特征。K-means聚类将基于分时电价的电力客户分成不同的群体,即多数和少数消费概况。然后,针对每个客户的主要负荷情况,制定了与预测的α级保密区间相对应的保密区间(CI)。输入数据收集自2016年1月至12月期间PEA的1000个TOU客户。然后,将工作日和非工作日的所有个人消费模式分为12组,代表1000名TOU PEA客户样本的整体模式。研究结果表明,采用数据聚类过程进行特征提取有助于提取分时电价用户元数据的内在特征,并形成用户元数据的消费模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Two Stages Pattern Recognition for Time-of-use Customers based on Behavior Analytic by Using Gaussian Mixture Models and K-mean Clustering: a Case Study of PEA, Thailand
Data and information become valuable possession in digital era where we are surrounded with big data. Data mining is supposed to be major and first process to tackle with big data. This study investigates featured features of Time-of-Use (TOU) based electricity customers using Gaussian mixture process. K-means clustering clusters TOU based electricity customer into various groups i.e., majority and minority consumption profile. Then, confidential interval (CI) corresponding with forecasted α-level confidential is formulated for each customer’s major load profile. The input data is collected from 1,000 PEA’s TOU customers during January to December 2016. Then, all individual consumption patterns of both working and nonworking day are grouping into 12 groups to be represented overall pattern of the sample of 1,000 TOU’s PEA customers. The outcome of this study shows that feature extraction with data clustering processes using could help to extract intrinsic features and formulate consumption patterns of metadata of TOU customers.
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