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Smart Meter Data Analytics = Electri...
~
Chen, Qixin.
Smart Meter Data Analytics = Electricity Consumer Behavior Modeling, Aggregation, and Forecasting /
紀錄類型:
書目-語言資料,印刷品 : Monograph/item
正題名/作者:
Smart Meter Data Analytics/ by Yi Wang, Qixin Chen, Chongqing Kang.
其他題名:
Electricity Consumer Behavior Modeling, Aggregation, and Forecasting /
作者:
Wang, Yi.
其他作者:
Kang, Chongqing.
面頁冊數:
XXI, 293 p. 141 illus., 125 illus. in color.online resource. :
Contained By:
Springer Nature eBook
標題:
Natural Resource and Energy Economics. -
電子資源:
https://doi.org/10.1007/978-981-15-2624-4
ISBN:
9789811526244
Smart Meter Data Analytics = Electricity Consumer Behavior Modeling, Aggregation, and Forecasting /
Wang, Yi.
Smart Meter Data Analytics
Electricity Consumer Behavior Modeling, Aggregation, and Forecasting /[electronic resource] :by Yi Wang, Qixin Chen, Chongqing Kang. - 1st ed. 2020. - XXI, 293 p. 141 illus., 125 illus. in color.online resource.
Overview for Smart Meter Data Analytics -- Smart Meter Data Compression Based on Load Feature Identification -- A Combined Data-Driven Approach for Electricity Theft Detection -- GAN-based Model for Residential Load Generation -- Ensemble Clustering for Individual Electricity Consumption Patterns Extraction -- Sparse and Redundant Representation-Based Partial Usage Pattern Extraction -- Data-Driven Personalized Price Design in Retail Market Using Smart Meter Data -- Deep Learning-Based Socio-demographic Information Identification -- Cross-domain Feature Selection and Coding for Household Energy Behavior -- Clustering of Electricity Consumption Behavior Dynamics Toward Big Data Applications -- Enhancing Short-term Probabilistic Residential Load Forecasting with Quantile LSTM -- An Ensemble Forecasting Method for the Aggregated Load With Subprofiles -- Prospects of Future Research Issues on Smart Meter Data Analytics.
This book aims to make the best use of fine-grained smart meter data to process and translate them into actual information and incorporated into consumer behavior modeling and distribution system operations. It begins with an overview of recent developments in smart meter data analytics. Since data management is the basis of further smart meter data analytics and its applications, three issues on data management, i.e., data compression, anomaly detection, and data generation, are subsequently studied. The following works try to model complex consumer behavior. Specific works include load profiling, pattern recognition, personalized price design, socio-demographic information identification, and household behavior coding. On this basis, the book extends consumer behavior in spatial and temporal scale. Works such as consumer aggregation, individual load forecasting, and aggregated load forecasting are introduced. We hope this book can inspire readers to define new problems, apply novel methods, and obtain interesting results with massive smart meter data or even other monitoring data in the power systems.
ISBN: 9789811526244
Standard No.: 10.1007/978-981-15-2624-4doiSubjects--Topical Terms:
1113585
Natural Resource and Energy Economics.
LC Class. No.: HD9502-9502.5
Dewey Class. No.: 333.79
Smart Meter Data Analytics = Electricity Consumer Behavior Modeling, Aggregation, and Forecasting /
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Overview for Smart Meter Data Analytics -- Smart Meter Data Compression Based on Load Feature Identification -- A Combined Data-Driven Approach for Electricity Theft Detection -- GAN-based Model for Residential Load Generation -- Ensemble Clustering for Individual Electricity Consumption Patterns Extraction -- Sparse and Redundant Representation-Based Partial Usage Pattern Extraction -- Data-Driven Personalized Price Design in Retail Market Using Smart Meter Data -- Deep Learning-Based Socio-demographic Information Identification -- Cross-domain Feature Selection and Coding for Household Energy Behavior -- Clustering of Electricity Consumption Behavior Dynamics Toward Big Data Applications -- Enhancing Short-term Probabilistic Residential Load Forecasting with Quantile LSTM -- An Ensemble Forecasting Method for the Aggregated Load With Subprofiles -- Prospects of Future Research Issues on Smart Meter Data Analytics.
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