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Smart energy management = data drive...
~
Zhou, Kaile.
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Smart energy management = data driven methods for energy service innovation /
Record Type:
Electronic resources : Monograph/item
Title/Author:
Smart energy management/ by Kaile Zhou, Lulu Wen.
Reminder of title:
data driven methods for energy service innovation /
Author:
Zhou, Kaile.
other author:
Wen, Lulu.
Published:
Singapore :Springer Singapore : : 2022.,
Description:
xv, 310 p. :ill. (chiefly col.), digital ;24 cm.
[NT 15003449]:
Chapter 1 Introduction -- Chapter 2 Residential Electricity Consumption Pattern Mining based on Fuzzy Clustering -- Chapter 3 Load Profiling Considering Shape Similarity using Shape-based Clustering -- Chapter 4 Load Classification and Driven Factors Identification based on Ensemble Clustering -- Chapter 5 Power Demand and Probability Density Forecasting based on Deep Learning -- Chapter 6 Load Forecasting of Residential Buildings based on Deep Learning -- Chapter 7 Incentive-based Demand Response with Deep Learning and Reinforcement Learning -- Chapter 8 Residential Electricity Pricing based on Multi-Agent Simulation -- Chapter 9 Integrated Energy Services based on Integrated Demand Response -- Chapter 10 Electric Vehicle Charging Scheduling Considering Different Charging Demands -- Chapter 11 P2P Electricity Trading Pricing in Energy Blockchain Environment -- Chapter 12 Credit-Based P2P Electricity Trading in Energy Blockchain Environment.
Contained By:
Springer Nature eBook
Subject:
Electric power distribution - Management. -
Online resource:
https://doi.org/10.1007/978-981-16-9360-1
ISBN:
9789811693601
Smart energy management = data driven methods for energy service innovation /
Zhou, Kaile.
Smart energy management
data driven methods for energy service innovation /[electronic resource] :by Kaile Zhou, Lulu Wen. - Singapore :Springer Singapore :2022. - xv, 310 p. :ill. (chiefly col.), digital ;24 cm.
Chapter 1 Introduction -- Chapter 2 Residential Electricity Consumption Pattern Mining based on Fuzzy Clustering -- Chapter 3 Load Profiling Considering Shape Similarity using Shape-based Clustering -- Chapter 4 Load Classification and Driven Factors Identification based on Ensemble Clustering -- Chapter 5 Power Demand and Probability Density Forecasting based on Deep Learning -- Chapter 6 Load Forecasting of Residential Buildings based on Deep Learning -- Chapter 7 Incentive-based Demand Response with Deep Learning and Reinforcement Learning -- Chapter 8 Residential Electricity Pricing based on Multi-Agent Simulation -- Chapter 9 Integrated Energy Services based on Integrated Demand Response -- Chapter 10 Electric Vehicle Charging Scheduling Considering Different Charging Demands -- Chapter 11 P2P Electricity Trading Pricing in Energy Blockchain Environment -- Chapter 12 Credit-Based P2P Electricity Trading in Energy Blockchain Environment.
This book provides a relatively whole view of data-driven decision-making methods for energy service innovation and energy system optimization. Through personalized energy services provision and energy efficiency improvement, the book can contribute to the green transformation of energy system and the sustainable development of the society. The book gives a new way to achieve smart energy management, based on various data mining and machine learning methods, including fuzzy clustering, shape-based clustering, ensemble clustering, deep learning, and reinforcement learning. The applications of these data-driven methods in improving energy efficiency and supporting energy service innovation are presented. Moreover, this book also investigates the role of blockchain in supporting peer-to-peer (P2P) electricity trading innovation, thus supporting smart energy management. The general scope of this book mainly includes load clustering, load forecasting, price-based demand response, incentive-based demand response, and energy blockchain-based electricity trading. The intended readership of the book includes researchers and engineers in related areas, graduate and undergraduate students in university, and some other general interested audience. The important features of the book are: (1) it introduces various data-driven methods for achieving different smart energy management tasks; (2) it investigates the role of data-driven methods in supporting various energy service innovation; and (3) it explores energy blockchain in P2P electricity trading, and thus supporting smart energy management.
ISBN: 9789811693601
Standard No.: 10.1007/978-981-16-9360-1doiSubjects--Topical Terms:
3308489
Electric power distribution
--Management.
LC Class. No.: TK3091 / .Z56 2022
Dewey Class. No.: 621.319
Smart energy management = data driven methods for energy service innovation /
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Chapter 1 Introduction -- Chapter 2 Residential Electricity Consumption Pattern Mining based on Fuzzy Clustering -- Chapter 3 Load Profiling Considering Shape Similarity using Shape-based Clustering -- Chapter 4 Load Classification and Driven Factors Identification based on Ensemble Clustering -- Chapter 5 Power Demand and Probability Density Forecasting based on Deep Learning -- Chapter 6 Load Forecasting of Residential Buildings based on Deep Learning -- Chapter 7 Incentive-based Demand Response with Deep Learning and Reinforcement Learning -- Chapter 8 Residential Electricity Pricing based on Multi-Agent Simulation -- Chapter 9 Integrated Energy Services based on Integrated Demand Response -- Chapter 10 Electric Vehicle Charging Scheduling Considering Different Charging Demands -- Chapter 11 P2P Electricity Trading Pricing in Energy Blockchain Environment -- Chapter 12 Credit-Based P2P Electricity Trading in Energy Blockchain Environment.
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This book provides a relatively whole view of data-driven decision-making methods for energy service innovation and energy system optimization. Through personalized energy services provision and energy efficiency improvement, the book can contribute to the green transformation of energy system and the sustainable development of the society. The book gives a new way to achieve smart energy management, based on various data mining and machine learning methods, including fuzzy clustering, shape-based clustering, ensemble clustering, deep learning, and reinforcement learning. The applications of these data-driven methods in improving energy efficiency and supporting energy service innovation are presented. Moreover, this book also investigates the role of blockchain in supporting peer-to-peer (P2P) electricity trading innovation, thus supporting smart energy management. The general scope of this book mainly includes load clustering, load forecasting, price-based demand response, incentive-based demand response, and energy blockchain-based electricity trading. The intended readership of the book includes researchers and engineers in related areas, graduate and undergraduate students in university, and some other general interested audience. The important features of the book are: (1) it introduces various data-driven methods for achieving different smart energy management tasks; (2) it investigates the role of data-driven methods in supporting various energy service innovation; and (3) it explores energy blockchain in P2P electricity trading, and thus supporting smart energy management.
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Business and Management (SpringerNature-41169)
based on 0 review(s)
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W9438732
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11.線上閱覽_V
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EB TK3091 .Z56 2022
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