A Statistical Analysis and Datamining Approach for Wind Speed Predication
Journal: INTERNATIONAL JOURNAL OF COMPUTERS & TECHNOLOGY (Vol.14, No. 2)Publication Date: 2014-12-22
Authors : Mahesh K; Dr M V Vijayakumar; Gangadharaiah. Y.H .;
Page : 5464-5478
Keywords : Wind Speed prediction; Datamining; ANN; Weibull; Rayleigh; PROLOG.;
Abstract
The wind power industry has seen an unprecedented growth in last few years. The surge in orders for wind turbines has resulted in a producer’s market. This market imbalance, the relative immaturity of the wind industry, and rapid developments in data processing technology have created an opportunity to improve the performance of wind farms and change misconceptions surrounding their operations. This research offers a new paradigm for the wind power industry, data-driven modeling. Each wind Mast generates extensive data for many parameters, registered as frequently as every minute. As the predictive performance approach is novel to wind industry, it is essential to establish a viable research road map. This paper proposes a data-mining-based methodology for long term wind forecasting (ANN), which is suitable to deal with large real databases. The paper includes a case study based on a real database of ?five years of wind speed data for a site and discusses results of wind power density was determined by using the Weibull and Rayleigh probability density functions. Wind speed?? predicted using wind speed data with Datamining methodology using intelligent technology as Artificial Neural Networks (ANN) and a PROLOG program designed to calculate the monthly mean wind speed.
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