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Recognition of Wind Speed Patterns Using Multi-Scale Subspace Grids with Decision Trees

Year 2013, Volume: 3 Issue: 2, 458 - 462, 01.06.2013

Abstract

The wind speed patterns are essential and indispensable requirement for the efficient utilization of the wind power generated by wind turbines. For this reason, this paper proposes a new approach in order to recognize the wind speed patterns from the multidimensional meteorological data. The meteorological dataset used in this study includes wind direction, air temperature, atmospheric pressure, relative humidity and wind speed parameters. Firstly, the proposed approach eliminated the dimensionality problem of the total dataset by means of obtaining the lower dimensional subspaces with the principal component analysis and the multiple discriminant analysis. Secondly, the proposed approach alleviated the problem of small sample sizes by means of achieving the coarse scales as generic rules at the lower dimensional subspaces. The total dataset includes 3244 observations for each meteorological parameter. In this study, 3100 data points were used for extracting the rules and 144 data points were utilized for testing the extracted rules. As a result, it is mined that the proposed approach leads to reveal the wind speed patterns in a usable and comprehensive manner.

References

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Year 2013, Volume: 3 Issue: 2, 458 - 462, 01.06.2013

Abstract

References

  • Y.C. Shen, G.T.R. Lin, K.P. Li and B.J.C. Yuan, “An assessment of exploiting renewable energy sources with concerns of policy and technology”, Energy Policy, vol. 38, no. 8, pp. 4604-4616, August 2010.
  • N.L. Panwar, S.C. Kaushik and S. Kothari, “Role of renewable energy sources in environmental protection: A review”, Renewable and Sustainable Energy Reviews, vol. 15, no. 3, pp. 1513-1524, April 2011.
  • I. Colak, S. Sagiroglu, M. Demirtas and M. Yesilbudak, “A data mining approach: Analyzing wind speed and insolation period data in Turkey for installations of wind and solar power plants”, Energy Conversion and Management, vol. 65, pp. 185-197, January 2013.
  • G. Zhang, H.X. Li and M. Gan, “Design a wind speed prediction model using probabilistic fuzzy system”, IEEE Transactions on Industrial Informatics, vol. 8, no. 4, pp. 819-827, November 2012.
  • I. Colak, S. Sagiroglu and M. Yesilbudak, “Data mining and wind power prediction: A literature review”, Renewable Energy, vol. 46, pp. 241-247, October 2012.
  • H. Chai and C. Domeniconi, “An evaluation of gene selection methods for multi-class microarray data classification”, 2nd European Workshop on Data Mining and Text Mining in Bioinformatics, pp. 7-14, 24 September 2004, Pisa, Italy.
  • H. Xiong, Y. Zhang and X.W. Chen, “Data-dependent kernel machines for microarray data classification”, IEEE/ACM Transactions on Computational Biology and Bioinformatics, vol. 4, no. 4, pp. 583-595, October-December 2007.
  • R.P. Regi, A. Ortega and S. Asgharzadeh, “Sequential diagonal linear discriminant analysis (seqdlda) for microarray classification and gene identification”, IEEE Computational Systems Bioinformatics Conference, Workshops and Poster Abstracts, pp. 112-113, 8-11 August 2005, Stanford, California.
  • M.A. Wani, “Incremental hybrid approach for microarray classification”, 7th International Conference on Machine Learning and Applications, pp. 514-520, 11-13 December 2008, San Diego, California.
  • M.A. Wani, “Microarray classification using sub-space grids”, 10th International Conference on Machine Learning and Applications, pp. 389-394, 18-21 December 2011, Hawaii, USA.
  • A. Kusiak and W. Li, “Estimation of wind speed: A data-driven approach”, Journal of Wind Engineering and Industrial Aerodynamics, vol. 98, no. 10-11, pp. 559-567, October-November 2010.
  • L.C. Calvo, S.S. Sanz, N.K. Bossi, A.P. Figueras, L. Prietoc, R.G. Herrera and E.H. Martín, “Extraction of synoptic pressure patterns for long-term wind speed estimation computing”, Energy, vol. 36, no. 3, pp. 1571-1581, March 2011. farms using evolutionary
  • L. Chen and C.W. Letchford, “Proper orthogonal decomposition of two vertical profiles of full-scale nonstationary downburst wind speeds”, Journal of Wind Engineering and Industrial Aerodynamics, vol. 93, no. 3, pp. 187-216, March 2005.
  • E. Lapira, D. Brisset, H.D. Ardakani, D. Siegel and J. Lee, “Wind turbine performance assessment using multi-regime modeling approach”, Renewable Energy, vol. 45, pp. 86-95, September 2012.
  • D.J. Burke and M.J.O. Malley, “A study of principal component analysis applied to spatially distributed wind power”, IEEE Transactions on Power Systems, vol. 26, no. 4, pp. 2084-2092, November 2011.
  • W.H. Yang and D.Q. Dai, “Two-dimensional maximum margin feature extraction for face recognition”, IEEE Transactions on Systems, Man, and Cybernetics-Part B: Cybernetics, vol. 39, no. 4, pp. 1002-1012, August 2009.
  • Y. Li, “On incremental and robust subspace learning”, Pattern Recognition, vol. 37, no. 7, pp. 1509-1518, July 2004.
  • G. Sundaramoorthi, A. Yezzi and A.C. Mennucci, “Coarse-to-fine segmentation and tracking using sobolev active contours”, IEEE Transactions on Pattern Analysis and Machine Intelligence, vol. 30, no. 5, pp. 851-864, May 2008.
  • A. Pascual, M.L. Martín, F. Valero, M.Y. Luna and A. Morata, “Wintertime connections between extreme wind patterns in Spain and large-scale geopotential height field”, Atmospheric Research, vol. 122, pp. 213- 228, March 2013.
  • S.H. Fang and T.N. Lin, “Projection-based location system via multiple discriminant analysis in wireless local area networks”, IEEE Transactions on Vehicular Technology, vol. 58, no. 9, November 2009.
  • J. McBain and M. Timusk, “Feature extraction for novelty detection as applied to fault detection in machinery”, Pattern Recognition Letters, vol. 32, no. 7, pp. 1054-1061, May 2011.
  • M.A. Wani, “Introducing subspace grids to recognise patterns in multidimensional data”, 11th International Conference on Machine Learning and Applications, pp. 33-39, 12-15 December 2012, Florida, USA.
  • M.J.A. Berry and G. Linoff, “Decision trees”, Data Mining Techniques: For Marketing, Sales, and Customer Relationship Management, Indianapolis: Wiley Publishing, 2004, pp. 165-166.
  • J. Han and M. Kamber, “Classification by decision tree induction”, Data Mining: Concepts and Techniques, San Francisco: Morgan Kaufmann Publishers, 2006, pp. 291-292.
There are 24 citations in total.

Details

Primary Language English
Journal Section Articles
Authors

M. Arif Wani This is me

Mehmet Yesilbudak This is me

Publication Date June 1, 2013
Published in Issue Year 2013 Volume: 3 Issue: 2

Cite

APA Wani, M. A., & Yesilbudak, M. (2013). Recognition of Wind Speed Patterns Using Multi-Scale Subspace Grids with Decision Trees. International Journal Of Renewable Energy Research, 3(2), 458-462.
AMA Wani MA, Yesilbudak M. Recognition of Wind Speed Patterns Using Multi-Scale Subspace Grids with Decision Trees. International Journal Of Renewable Energy Research. June 2013;3(2):458-462.
Chicago Wani, M. Arif, and Mehmet Yesilbudak. “Recognition of Wind Speed Patterns Using Multi-Scale Subspace Grids With Decision Trees”. International Journal Of Renewable Energy Research 3, no. 2 (June 2013): 458-62.
EndNote Wani MA, Yesilbudak M (June 1, 2013) Recognition of Wind Speed Patterns Using Multi-Scale Subspace Grids with Decision Trees. International Journal Of Renewable Energy Research 3 2 458–462.
IEEE M. A. Wani and M. Yesilbudak, “Recognition of Wind Speed Patterns Using Multi-Scale Subspace Grids with Decision Trees”, International Journal Of Renewable Energy Research, vol. 3, no. 2, pp. 458–462, 2013.
ISNAD Wani, M. Arif - Yesilbudak, Mehmet. “Recognition of Wind Speed Patterns Using Multi-Scale Subspace Grids With Decision Trees”. International Journal Of Renewable Energy Research 3/2 (June 2013), 458-462.
JAMA Wani MA, Yesilbudak M. Recognition of Wind Speed Patterns Using Multi-Scale Subspace Grids with Decision Trees. International Journal Of Renewable Energy Research. 2013;3:458–462.
MLA Wani, M. Arif and Mehmet Yesilbudak. “Recognition of Wind Speed Patterns Using Multi-Scale Subspace Grids With Decision Trees”. International Journal Of Renewable Energy Research, vol. 3, no. 2, 2013, pp. 458-62.
Vancouver Wani MA, Yesilbudak M. Recognition of Wind Speed Patterns Using Multi-Scale Subspace Grids with Decision Trees. International Journal Of Renewable Energy Research. 2013;3(2):458-62.