Reprint

Hybrid Advanced Optimization Methods with Evolutionary Computation Techniques in Energy Forecasting

Edited by
October 2018
250 pages
  • ISBN978-3-03897-286-0 (Paperback)
  • ISBN978-3-03897-287-7 (PDF)

This book is a reprint of the Special Issue Hybrid Advanced Optimization Methods with Evolutionary Computation Techniques in Energy Forecasting that was published in

Chemistry & Materials Science
Engineering
Environmental & Earth Sciences
Physical Sciences
Summary

More accurate and precise energy demand forecasts are required when energy decisions are made in a competitive environment. Particularly in the Big Data era, forecasting models are always based on a complex function combination, and energy data are always complicated. Examples include seasonality, cyclicity, fluctuation, dynamic nonlinearity, and so on. These forecasting models have resulted in an over-reliance on the use of informal judgment and higher expenses when lacking the ability to determine data characteristics and patterns. The hybridization of optimization methods and superior evolutionary algorithms can provide important improvements via good parameter determinations in the optimization process, which is of great assistance to actions taken by energy decision-makers.

This book aimed to attract researchers with an interest in the research areas described above. Specifically, it sought contributions to the development of any hybrid optimization methods (e.g., quadratic programming techniques, chaotic mapping, fuzzy inference theory, quantum computing, etc.) with advanced algorithms (e.g., genetic algorithms, ant colony optimization, particle swarm optimization algorithm, etc.) that have superior capabilities over the traditional optimization approaches to overcome some embedded drawbacks, and the application of these advanced hybrid approaches to significantly improve forecasting accuracy.

Format
  • Paperback
License
© 2019 by the authors; CC BY license
Keywords
wind power forecasting; Beveridge-Nelson decomposition method; relevance vector machine; ant lion optimizer; parameter intelligent optimization; back propagation (BP); forecasting accuracy; modified firefly algorithm; wind speed; singular spectrum analysis; icing forecasting; back propagation neural network; mind evolutionary computation; bat algorithm; support vector machine; extreme learning machine with kernel; variance-covariance; demand side management; demand response; home energy management system; meta-heuristic techniques; support vector regression; empirical mode decomposition (EMD); particle swarm optimization (PSO); genetic algorithm (GA); load forecasting; chaotic mapping function; support vector regression (SVR); quantum genetic algorithm (QGA); electricity demand forecasting; ice cover prediction; adaptive support vector machine (ASVM); genetic tabu search (GATS); two-stage data processing; ensemble empirical mode decomposition; fast independent component analysis; wind speed forecasting; empirical mode decomposition; general regression neural network; fruit fly optimization algorithm; icing prediction; general regression neural network (GRNN); fruit fly optimization algorithm (FOA); data inconsistency rate (IR); support vector regression; chaos theory; quantum behavior; bat algorithm (BA); load forecasting; wind power prediction; ensemble empirical mode decomposition-permutation entropy (EEMD-PE); least squares support vector machine (LSSVM); heuristic algorithm