Self-Organizing Map (SOM) in Wind Speed Forecasting: A New Approach in Computational Intelligence (CI) Forecasting Methods

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Authors
Esmaeili, Mohammad Amin
Advisors
Twomey, Janet M.
Issue Date
2011-05-04
Type
Conference paper
Keywords
Research Projects
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Citation
Esmaeili, Mohammad Amin (2011). Self-Organizing Map (SOM) in Wind Speed Forecasting: A New Approach in Computational Intelligence (CI) Forecasting Methods. -- In Proceedings: 7th Annual Symposium: Graduate Research and Scholarly Projects. Wichita, KS: Wichita State University, p. 69-70
Abstract

Two critical issues in renewable energy are how to make wind energy cost effective and how to integrate wind energy into electricity grids. Within many approaches to cost reduction, wind speed forecasting was mentioned as an effective approach because accurate forecasting of wind speed has a direct impact on the scheduling of a power system, and also the dynamic control of the wind turbine. This research investigates the practical use of Self Organizing Map (SOM) as a special type of neural network based forecasting method. In this paper, forecasting the average, maximum and minimum of one-day-ahead wind speed based on the past wind speed states of the previous 24 hours is the objective.

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Description
Paper presented to the 7th Annual Symposium on Graduate Research and Scholarly Projects (GRASP) held at the Marcus Welcome Center, Wichita State University, May 4, 2011.
Research completed at the Department of Industrial and Manufacturing Engineering
Publisher
Wichita State University. Graduate School
Journal
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Series
GRASP
v.7
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