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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

机译:通过使用高斯混合模型和k平均聚类,基于行为分析的行为分析的两个阶段对使用时间的客户提供模式识别:豌豆,泰国的案例研究

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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.
机译:数据和信息在数字时代中的宝贵拥有,我们被大数据包围。数据挖掘应该是具有大数据的主要和第一个过程。本研究调查了使用高斯混合过程的使用时间(TOU)电力客户的特征。 K-mears Clasting Clusters Tou的电力客户进入各种群体中,大多数和少数群体消费概况。然后,为每个客户的主要负载概况配制了与预测α级机密相应的机密间隔(CI)。从2016年1月到12月的1,000豌豆的Tou客户收集了输入数据。然后,所有工作和非工作日的个人消费模式都将分组为12组,以代表1000个Tou的豌豆客户样本的整体模式。本研究的结果表明,使用数据聚类过程的特征提取可以帮助提取内在特征并制定TOU客户元数据的消费模式。

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