
Short-Term Load Forecasting by Artificial Intelligent Technologies
MDPI (Publisher)
1st Edition
Published on 28. January 2019
Book
Paperback/Softback
444 pages
978-3-03897-582-3 (ISBN)
Description
In last few decades, short-term load forecasting (STLF) has been one of the most important research issues for achieving higher efficiency and reliability in power system operation, to facilitate the minimization of its operation cost by providing accurate input to day-ahead scheduling, contingency analysis, load flow analysis, planning, and maintenance of power systems. There are lots of forecasting models proposed for STLF, including traditional statistical models (such as ARIMA, SARIMA, ARMAX, multi-variate regression, Kalman filter, exponential smoothing, and so on) and artificial-intelligence-based models (such as artificial neural networks (ANNs), knowledge-based expert systems, fuzzy theory and fuzzy inference systems, evolutionary computation models, support vector regression, and so on).
Recently, due to the great development of evolutionary algorithms (EA) and novel computing concepts (e.g., quantum computing concepts, chaotic mapping functions, and cloud mapping process, and so on), many advanced hybrids with those artificial-intelligence-based models are also proposed to achieve satisfactory forecasting accuracy levels. In addition, combining some superior mechanisms with an existing model could empower that model to solve problems it could not deal with before; for example, the seasonal mechanism from the ARIMA model is a good component to be combined with any forecasting models to help them to deal with seasonal problems.
Recently, due to the great development of evolutionary algorithms (EA) and novel computing concepts (e.g., quantum computing concepts, chaotic mapping functions, and cloud mapping process, and so on), many advanced hybrids with those artificial-intelligence-based models are also proposed to achieve satisfactory forecasting accuracy levels. In addition, combining some superior mechanisms with an existing model could empower that model to solve problems it could not deal with before; for example, the seasonal mechanism from the ARIMA model is a good component to be combined with any forecasting models to help them to deal with seasonal problems.
More details
Language
English
Place of publication
Basel
Switzerland
Target group
Professional and scholarly
College/higher education
Professionals/Scholars
Edition type
New edition
Product notice
Klappenbroschur
Illustrations
Illustrations
Dimensions
Height: 24.4 cm
Width: 17 cm
Thickness: 31 mm
Weight
948 gr
ISBN-13
978-3-03897-582-3 (9783038975823)
DOI
10.3390/books978-3-03897-583-0
Schweitzer Classification
Persons
Guest editor
School of Computer Science and Technology, Jiangsu Normal University, China.
College of Shipbuilding Engineering, Harbin Engineering University, China.
College of Mathematics & Information Science, PingDingShan University, China.