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Comparison of kernel functions of support vector machines: A case study for the solar cell output power prediction

Cilt: 7 Sayı: 1 11 Nisan 2020
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Comparison of kernel functions of support vector machines: A case study for the solar cell output power prediction

Öz

Four kernel functions of support vector machines (SVM), namely, radial basis function, sigmoid function, linear function and polynomial function, were applied for the prediction of solar cell output power. Two types of SVM model such as epsilon-SRV and nu-SVR were chosen for each kernel function. Measured values of temperature T (°C) and irradiance E (〖kWh.m〗^(-2)) were used as inputs and solar cell output power P (kW) was used as output. The accuracy of each kernel function was evaluated using well known statistical parameters. Radial basis function using nu-SVR and polynomial function using epsilon-SVR provided similar and better results than other kernels. However, polynomial function has taken more analysis run time while radial basis function used more number of support vectors than other kernels. They may be more computationally expensive.

Anahtar Kelimeler

Kaynakça

  1. R., BoroumandJazi, G., Mekhlif, S., Jameel, M., 2012, “Exergy analysis of solar energy applications”, Renewable and Sustainable Energy Reviews, 16(1)), 350-356.
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  3. Hossain, R., Maung, A., Than O,. Shawkat, A., 2013,”Hybrid Prediction Method for Solar Power Using Different Computational Intelligence Algorithms”,Smart Grid and Renewable Energy, 4,76-87.
  4. Soteris, A., Kalogirou Şencan, A., 2010, “Artificial Intelligence Techniques in Solar Energy Applications”, www.intechopen, 315-340.
  5. Hussein, A., Kazem, Jabar, H., Yousif, Miqdam T Chaichan, 2016, ”Modelling of Daily Solar Energy System Prediction using Support Vector Machine for Oman”, International Journal of Applied Engineering Research,11(20), 10166-10172.
  6. Anuwar, F., Omar, A., 2016,” Future Solar Irradiance Prediction using Least Square Support Vector Machine”, International Journal on Advanced Science Engineering Information Technology, 6(4), 513-520.
  7. Yekkehkhany, B., Safari, A., Homayouni S., Hasanlou, M., 2014,” A Comparison Study of Different Kernel Functions for SVM-based Classification of Multi-temporal Polarimetry SAR Data”, The International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences, Volume XL-2/W3, The 1st ISPRS International Conference on Geospatial Information Research, 15–17, Tehran, Iran.
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Ayrıntılar

Birincil Dil

İngilizce

Konular

Makine Mühendisliği

Bölüm

Araştırma Makalesi

Yayımlanma Tarihi

11 Nisan 2020

Gönderilme Tarihi

8 Ekim 2019

Kabul Tarihi

27 Şubat 2020

Yayımlandığı Sayı

Yıl 2020 Cilt: 7 Sayı: 1

Kaynak Göster

APA
Nurwaha, D. (2020). Comparison of kernel functions of support vector machines: A case study for the solar cell output power prediction. International Journal of Energy Applications and Technologies, 7(1), 1-6. https://doi.org/10.31593/ijeat.630789
AMA
1.Nurwaha D. Comparison of kernel functions of support vector machines: A case study for the solar cell output power prediction. International Journal of Energy Applications and Technologies. 2020;7(1):1-6. doi:10.31593/ijeat.630789
Chicago
Nurwaha, Deogratias. 2020. “Comparison of kernel functions of support vector machines: A case study for the solar cell output power prediction”. International Journal of Energy Applications and Technologies 7 (1): 1-6. https://doi.org/10.31593/ijeat.630789.
EndNote
Nurwaha D (01 Nisan 2020) Comparison of kernel functions of support vector machines: A case study for the solar cell output power prediction. International Journal of Energy Applications and Technologies 7 1 1–6.
IEEE
[1]D. Nurwaha, “Comparison of kernel functions of support vector machines: A case study for the solar cell output power prediction”, International Journal of Energy Applications and Technologies, c. 7, sy 1, ss. 1–6, Nis. 2020, doi: 10.31593/ijeat.630789.
ISNAD
Nurwaha, Deogratias. “Comparison of kernel functions of support vector machines: A case study for the solar cell output power prediction”. International Journal of Energy Applications and Technologies 7/1 (01 Nisan 2020): 1-6. https://doi.org/10.31593/ijeat.630789.
JAMA
1.Nurwaha D. Comparison of kernel functions of support vector machines: A case study for the solar cell output power prediction. International Journal of Energy Applications and Technologies. 2020;7:1–6.
MLA
Nurwaha, Deogratias. “Comparison of kernel functions of support vector machines: A case study for the solar cell output power prediction”. International Journal of Energy Applications and Technologies, c. 7, sy 1, Nisan 2020, ss. 1-6, doi:10.31593/ijeat.630789.
Vancouver
1.Deogratias Nurwaha. Comparison of kernel functions of support vector machines: A case study for the solar cell output power prediction. International Journal of Energy Applications and Technologies. 01 Nisan 2020;7(1):1-6. doi:10.31593/ijeat.630789

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