skip to main content

Improving Stability and Convergence for Adaptive Radial Basis Function Neural Networks Algorithm. (On-Line Harmonics Estimation Application)

Tafila Technichal University, Jordan

Published: 22 Mar 2017.
Editor(s): H Hadiyanto

Citation Format:
Abstract

In this paper, an adaptive Radial Basis Function Neural Networks (RBFNN) algorithm is used to estimate the fundamental and harmonic components of nonlinear load current. The performance of the adaptive RBFNN is evaluated based on the difference between the original signal and the constructed signal (the summation between fundamental and harmonic components). Also, an extensive investigation is carried out to propose a systematic and optimal selection of the Adaptive RBFNN parameters. These parameters will ensure fast and stable convergence and minimum estimation error. The results show an improving for fundamental and harmonics estimation comparing to the conventional RBFNN. Also, the results show how to control the computational steps and how they are related to the estimation error. The methodology used in this paper facilitates the development and design of signal processing and control systems.

Article History: Received Dec 15, 2016; Received in revised form Feb 2nd 2017; Accepted 13rd 2017; Available online

How to Cite This Article: Almaita, E.K and Shawawreh J.Al (2017) Improving Stability and Convergence for Adaptive Radial Basis Function Neural Networks Algorithm (On-Line Harmonics Estimation Application).  International Journal of Renewable Energy Develeopment, 6(1), 9-17.

http://dx.doi.org/10.14710/ijred.6.1.9-17

Fulltext View|Download
Keywords: Energy efficiency, Power quality, Radial basis function, neural networks, adaptive, harmonic

Article Metrics:

  1. Akagi, H. (1996). New trends in active filters for power conditioning. Industry Applications, IEEE Transactions on, 32(6), 1312–1322
  2. Akagi, H., Watanabe, E. H., & Aredes, M. (2007). The Instantaneous Power Theory. Instantaneous Power Theory and Applications to Power Conditioning. Wiley-IEEE Press
  3. Almaita, E. (2016). Harmonic Assessment in Jordanian Power Grid Based on Load Type Classification, 11, 58–64
  4. Almaita, E., & Asumadu, J. A. (2011a). Dynamic harmonic identification in converter waveforms using radial basis function neural networks (RBFNN) and p-q power theory. 2011 IEEE International Conference on Industrial Technology
  5. Almaita, E., & Asumadu, J. A. (2011b). On-line harmonic estimation in power system based on sequential training radial basis function neural network. 2011 IEEE International Conference on Industrial Technology
  6. Almaita, E. K. H. (2012). Adaptive Radial Basis Function Neural Networks-Based Real Time Harmonics Estimation and PWM Control for Active Power Filters
  7. Chang, G. W., Chen, C. I., & Teng, Y. F. (2010). Radial-basis-function-based neural network for harmonic detection. IEEE Transactions on Industrial Electronics, 57(6), 2171–2179
  8. Đurić, M. B., & Đurišić, Ž. R. (2010). Combined Fourier and zero crossing technique for frequency measurement in power networks in the presence of harmonics
  9. Haykin, S. S. (1999). Neural networks : a comprehensive foundation. Upper Saddle River, N.J.: Prentice Hall
  10. Izhar, M., Hadzer, C. M., Masri, S., & Idris, S. (2003). A study of the fundamental principles to power system harmonic. National Power Engineering Conference, PECon 2003 - Proceedings, 225–232
  11. Kasabov, N. K. (1996). Foundations of neural networks, fuzzy systems, and knowledge engineering. Cambridge, Mass.: MIT Press. Retrieved from
  12. Liu, Y., Wang, X., Liu, Y., & Cui, S. (2016). Resolution-Enhanced Harmonic and Interharmonic Measurement for Power Quality Analysis in Cyber-Physical Energy System. Sensors, 16(7), 946
  13. Moody, J., & Darken, C. J. (1989). Fast learning in networks of locally-tuned processing units. Neural Computation, 1(2), 281–294
  14. Rahmani, S., Hamadi, A., & Al-Haddad, K. (2009). A new combination of shunt hybrid power filter and thyristor controlled reactor for harmonics and reactive power compensation. 2009 IEEE Electrical Power and Energy Conference, EPEC 2009, (1), 1–6
  15. Sumaryadi, Gumilang, H., & Susilo, A. (2009). Effect of power system harmonic on degradation process of transformer insulation system. Proceedings of the IEEE International Conference on Properties and Applications of Dielectric Materials, 261–264
  16. Wang, Y., Wong, M., & Member, S. (2015). Historical Review of Parallel Hybrid Active Power Filter for Power Quality Improvement. Tencon 2015, 5–15
  17. Yasmeena, & Das, G. T. R. (2016). A review of UPQC topologies for reduced DC link voltage with MATLAB simulation models. 1st International Conference on Emerging Trends in Engineering, Technology and Science, ICETETS 2016 - Proceedings
  18. Yousef, R., & Hindi, K. (2005). Training radial basis function networks using reduced sets as center points. International Journal of Information Technology, 2(1), 21–35
  19. Zhang, S. Z. S., Li, D. L. D., & Wang, X. W. X. (2010). Control Techniques for Active Power Filters. Electrical and Control Engineering (ICECE), 2010 International Conference on, 850, 3493–3498. 0
  20. Zouidi, A., Fnaiech, F., AL-Haddad, K., & Rahmani, S. (2008). Adaptive linear combiners a robust neural network technique for on-line harmonic tracking. Proceedings - 34th Annual Conference of the IEEE Industrial Electronics Society, IECON 2008, (1), 530–534

Last update:

  1. A Multi-Levels Geo-Location based Crawling Method for Social Media Platforms

    Shadi Alzubi, Darah Aqel, Alaa Mughaid, Yaser Jararweh. 2019 Sixth International Conference on Social Networks Analysis, Management and Security (SNAMS), 2019. doi: 10.1109/SNAMS.2019.8931856
  2. Qualitative analysis of effective factors on the feasibility of utilizing solar technology in the poultry industry

    Z. Mohammadi, S. M. Mirdamadi, S. J. Farajollah Hosseini, F. Lashgarara. International Journal of Environmental Science and Technology, 18 (3), 2021. doi: 10.1007/s13762-020-02870-2
  3. A Multi-agent Design of a Computer Player for Nine Men's Morris Board Game using Deep Reinforcement Learning

    Jafar Abukhait, Ahmad Aljaafreh, Naeem Al-Oudat. 2019 Sixth International Conference on Social Networks Analysis, Management and Security (SNAMS), 2019. doi: 10.1109/SNAMS.2019.8931879
  4. P-Stemmer or NLTK Stemmer for Arabic Text Classification?

    Mohammed Elbes, Amal Aldajah, Odai Sadaqa. 2019 Sixth International Conference on Social Networks Analysis, Management and Security (SNAMS), 2019. doi: 10.1109/SNAMS.2019.8931818
  5. Facilitating On-Line Harmonic Estimation Based on Robust Adaptive RBFNN

    Eyad K. Almaita, Jumana Al Shwawreh. 2019 Sixth International Conference on Social Networks Analysis, Management and Security (SNAMS), 2019. doi: 10.1109/SNAMS.2019.8931811

Last update: 2024-12-26 23:13:52

  1. A Multi-Levels Geo-Location based Crawling Method for Social Media Platforms

    Shadi Alzubi, Darah Aqel, Alaa Mughaid, Yaser Jararweh. 2019 Sixth International Conference on Social Networks Analysis, Management and Security (SNAMS), 2019. doi: 10.1109/SNAMS.2019.8931856
  2. A Multi-agent Design of a Computer Player for Nine Men's Morris Board Game using Deep Reinforcement Learning

    Jafar Abukhait, Ahmad Aljaafreh, Naeem Al-Oudat. 2019 Sixth International Conference on Social Networks Analysis, Management and Security (SNAMS), 2019. doi: 10.1109/SNAMS.2019.8931879
  3. P-Stemmer or NLTK Stemmer for Arabic Text Classification?

    Mohammed Elbes, Amal Aldajah, Odai Sadaqa. 2019 Sixth International Conference on Social Networks Analysis, Management and Security (SNAMS), 2019. doi: 10.1109/SNAMS.2019.8931818
  4. Facilitating On-Line Harmonic Estimation Based on Robust Adaptive RBFNN

    Eyad K. Almaita, Jumana Al Shwawreh. 2019 Sixth International Conference on Social Networks Analysis, Management and Security (SNAMS), 2019. doi: 10.1109/SNAMS.2019.8931811