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Electric Power Systems: Advanced Forecasting Techniques and Optimal Generation Scheduling

Electric Power Systems: Advanced Forecasting Techniques and Optimal Generation Scheduling by João P. S. Catalão
English | 2012 | ISBN: 1439893942 | ISBN-13: 9781439893944 | 462 pages | PDF | 14,1 MB

helps readers develop their skills in modeling, simulating, and optimizing electric power systems. Carefully balancing theory and practice, it presents novel, cutting-edge developments in forecasting and scheduling.
The focus is on understanding and solving pivotal problems in the management of electric power generation systems.

Methods for Coping with Uncertainty and Risk in Electric Power Generation

Outlining real-world problems, the book begins with an overview of electric power generation systems. Since the ability to cope with uncertainty and risk is crucial for power generating companies, the second part of the book examines the latest methods and models for self-scheduling, load forecasting, short-term electricity price forecasting, and wind power forecasting.

Toward Optimal Coordination between Hydro, Thermal, and Wind Power

Using case studies, the third part of the book investigates how to achieve the most favorable use of available energy sources. Chapters in this section discuss price-based scheduling for generating companies, optimal scheduling of a hydro producer, hydro-thermal coordination, unit commitment with wind generators, and optimal optimization of multigeneration systems.

Written in a pedagogical style that will appeal to graduate students, the book also expands on research results that are useful for engineers and researchers. It presents the latest techniques in increasingly important areas of power system operations and planning.

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Tags: Electric, Systems, Advanced, Forecasting, Techniques, Optimal, Generation, Scheduling

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