Big Data Analysis for Smart Electrical Energy Distribution Systems
Academic Press
Will be published approx. on 1. April 2029
Book
Paperback/Softback
310 pages
978-0-323-85556-3 (ISBN)
Description
Big Data Analysis for Smart Electrical Energy Distribution Systems covers the application of big data analytics and techniques with selective applications for the operation, analysis, planning and design of future electrical distribution systems. The book provides data-driven applications in smart distribution systems, machine learning techniques for renewable energy predictions, and load forecasting examples for intelligent techno-economic operation and control of the network as a microgrid. This title gives those within this multidisciplinary field a comprehensive look at machine learning techniques for renewable energy prediction, demand forecasting, and intelligent techno-economic operation and control of distributed energy systems.With electricity networks changing rapidly due to the increased integration of intermittent and variable power generation from renewable energy sources, mismatch between the supply and demand of electricity is also on the rise. Hence, the use of new renewables is a widely discussed topic.
More details
Language
English
Place of publication
Oxford
United Kingdom
Publishing group
Elsevier Science & Technology
Target group
Professional and scholarly
Primary: Post grads and researchers within the area of multi-discipline engineering with courses in Smart Grid, Distributed Smart Energy Systems, Big Data Analytics, Energy Informatics.
Secondary: Research scientists, academicians, computer and power engineers, power system operators, smart energy system planners.
Product notice
Paperback (trade)
Unsewn / adhesive bound
Illustrations
Approx. 100 illustrations (50 in full color)
Dimensions
Height: 229 mm
Width: 152 mm
ISBN-13
978-0-323-85556-3 (9780323855563)
Copyright in bibliographic data is held by Nielsen Book Services Limited or its licensors: all rights reserved.
Schweitzer Classification
Persons
Professor (Dr) Mohan Kolhe is with the University of Agder (Norway) as full professor in electrical power engineering with focus in smart grid and renewable energy. He has received the offer of professorship in smart grid from the Norwegian University of Science and Technology (NTNU). He has more than twenty-five years' academic experience at international level on electrical and renewable energy systems. He is a leading renewable energy technologist and has previously held academic positions at the world's prestigious universities e.g. University College London (UK / Australia), University of Dundee (UK); University of Jyvaskyla (Finland); and Hydrogen Research Institute, QC (Canada). He was a member of the Government of South Australia's Renewable Energy Board (2009-2011) and worked on developing renewable energy policies.Presently he is leading the EU FP7 Smart Grid-ICT project 'Scalable Energy Management Infrastructure for Household' as Technical Manager. This project is in collaboration with 12 EU partners from 4 EU countries.His academic work ranges from the smart grid, grid integration of renewable energy systems, home energy management system, integrated renewable energy systems for hydrogen production, techno-economics of energy systems, solar and wind energy engineering, development of business models for distributed generation. Pushpendra Singh is Associate Professor in Electrical Engineering in the Institute of Engineering and Technology at JK Lakshmipat University, Jaipur, India.
Editor
Professor, University of Agder, Kristiansand, Norway
Associate Professor in Electrical Engineering, Institute of Engineering and Technology, JK Lakshmipat University, Jaipur, India
Content
1. Big data analytics in distributed electrical energy system
2. Data-driven applications for distributed electrical energy network topologies
3. Machine learning techniques for load forecasting and their relative analysis
4. Artificial intelligence techniques for modelling of power intensive load
5. Data driven approaches for demand side management of power intensive loads with grid constraints
6. Renewable energy prediction within distributed network
7. Economic load dispatching through data-based computing techniques for distributed generators
8. Electric vehicles charging stations coordination using predictive stochastic analysis
9. Deregulated electrical energy pricing predictions for distributed electrical energy network operation
10. Voltage security assessments in electrical energy network using power system operational data11. Smart device for power flow management within distributed network
12. Communication of big data in smart grid
13. Smart grid communication through cognitive radio using co-operative spectrum sensing
2. Data-driven applications for distributed electrical energy network topologies
3. Machine learning techniques for load forecasting and their relative analysis
4. Artificial intelligence techniques for modelling of power intensive load
5. Data driven approaches for demand side management of power intensive loads with grid constraints
6. Renewable energy prediction within distributed network
7. Economic load dispatching through data-based computing techniques for distributed generators
8. Electric vehicles charging stations coordination using predictive stochastic analysis
9. Deregulated electrical energy pricing predictions for distributed electrical energy network operation
10. Voltage security assessments in electrical energy network using power system operational data11. Smart device for power flow management within distributed network
12. Communication of big data in smart grid
13. Smart grid communication through cognitive radio using co-operative spectrum sensing