Differential Flatness Using the Predictive Neural Network Control Law for Hybrid Power System

Cilt: 5 Sayı: 2 1 Haziran 2015
  • Ilyes Tegani
  • Abdenacer Aboubou
  • Ramzi Saadi
  • Mohamed Yacine Ayad
  • Mohamed Becherif
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Differential Flatness Using the Predictive Neural Network Control Law for Hybrid Power System

Abstract

In this paper, a control design for a renewable energy hybrid power system that is fed by a photovoltaic (PV), Wind turbine (WT) and fuel cell (FC) sources with a batteries (Batt) storage device is presented. The energy generated is managed through a nonlinear approach based on the differential flatness property. The control technique used in this work permits the entire description of the state’s trajectories, and so to improve the dynamic response, stability and robustness of the proposed hybrid system by decreasing the static error in the output regulated voltage. The control law of this approach is improved using the predictive neural network (PNN) to ensure a better tracking for the reference trajectory signals. The obtained results show that the proposed flatness-PNN is able to manage well the power flow in a hybrid system with multirenewable sources, providing more stability by decreasing the perturbation in the controlled DC bus voltage.

Keywords

Kaynakça

  1. P. Thounthong, S. Rael, and B. Davat, "Energy management of fuel cell/battery/supercapacitor hybrid power source for vehicle applications". Journal of Power Sources, 2009. 193(1): p. 376-385.
  2. O. Palizban and K. Kauhaniemi, "Hierarchical control structure in microgrids with distributed generation: Island and grid-connected mode". Renewable and Sustainable Energy Reviews, 2015. 44: p. 797-813.
  3. A. Pohjoranta, et al., "Model predictive control of the solid oxide fuel cell stack temperature with models based on experimental data". Journal of Power Sources, 2015. : p. 239-250.
  4. A.M. Bouzid, et al., "A survey on control of electric power distributed generation systems for microgrid applications". Renewable and Sustainable Energy Reviews, 2015. 44: p. 751-766.
  5. A. Karray and M. Feki, "Adaptive and sliding mode control of a mobile manipulator actuated by DC motors". International Journal of Automation and Control, 2014. (2): p. 173-190.
  6. S.M. Rakhtala Rostami, A. Ranjbar Noei, and R. Gaderi, "Control of PEM fuel cell system via higher order sliding mode control". International Journal of Automation and Control, 2012. 6(3): p. 310-329.
  7. K.E. Johnson, et al., "Control of variable-speed wind turbines: maximizing energy capture". Control Systems, IEEE, 26(3): p. 70-81. adaptive techniques for R. Marino and P. Tomei. Adaptive Control of Stepper motors via nonlinear extended matching. in IF AC Workshop on Motion Control for Intelligent Automation. A. Luviano-Juárez, J. Cortés-Romero, and H. Sira- Ramírez, "Trajectory Tracking Control of a Mobile Robot Through Linearization Scheme". Journal of Dynamic Systems, Measurement, and Control, 2015. 137(5): p. 051001.
  8. T. Taniguchi, L. Eciolaza, and M. Sugeno. Model Following Control of a Unicycle Mobile Robot via Dynamic Feedback Linearization Based on Piecewise Bilinear Models. in Information Processing and Management of Uncertainty in Knowledge-Based Systems. 2014. Springer.

Ayrıntılar

Birincil Dil

İngilizce

Konular

-

Bölüm

-

Yazarlar

Ilyes Tegani Bu kişi benim

Abdenacer Aboubou Bu kişi benim

Ramzi Saadi Bu kişi benim

Mohamed Yacine Ayad Bu kişi benim

Mohamed Becherif Bu kişi benim

Yayımlanma Tarihi

1 Haziran 2015

Gönderilme Tarihi

3 Şubat 2016

Kabul Tarihi

-

Yayımlandığı Sayı

Yıl 2015 Cilt: 5 Sayı: 2

Kaynak Göster

APA
Tegani, I., Aboubou, A., Saadi, R., Ayad, M. Y., & Becherif, M. (2015). Differential Flatness Using the Predictive Neural Network Control Law for Hybrid Power System. International Journal Of Renewable Energy Research, 5(2), 635-647. https://izlik.org/JA98AZ99EP
AMA
1.Tegani I, Aboubou A, Saadi R, Ayad MY, Becherif M. Differential Flatness Using the Predictive Neural Network Control Law for Hybrid Power System. International Journal Of Renewable Energy Research. 2015;5(2):635-647. https://izlik.org/JA98AZ99EP
Chicago
Tegani, Ilyes, Abdenacer Aboubou, Ramzi Saadi, Mohamed Yacine Ayad, ve Mohamed Becherif. 2015. “Differential Flatness Using the Predictive Neural Network Control Law for Hybrid Power System”. International Journal Of Renewable Energy Research 5 (2): 635-47. https://izlik.org/JA98AZ99EP.
EndNote
Tegani I, Aboubou A, Saadi R, Ayad MY, Becherif M (01 Haziran 2015) Differential Flatness Using the Predictive Neural Network Control Law for Hybrid Power System. International Journal Of Renewable Energy Research 5 2 635–647.
IEEE
[1]I. Tegani, A. Aboubou, R. Saadi, M. Y. Ayad, ve M. Becherif, “Differential Flatness Using the Predictive Neural Network Control Law for Hybrid Power System”, International Journal Of Renewable Energy Research, c. 5, sy 2, ss. 635–647, Haz. 2015, [çevrimiçi]. Erişim adresi: https://izlik.org/JA98AZ99EP
ISNAD
Tegani, Ilyes - Aboubou, Abdenacer - Saadi, Ramzi - Ayad, Mohamed Yacine - Becherif, Mohamed. “Differential Flatness Using the Predictive Neural Network Control Law for Hybrid Power System”. International Journal Of Renewable Energy Research 5/2 (01 Haziran 2015): 635-647. https://izlik.org/JA98AZ99EP.
JAMA
1.Tegani I, Aboubou A, Saadi R, Ayad MY, Becherif M. Differential Flatness Using the Predictive Neural Network Control Law for Hybrid Power System. International Journal Of Renewable Energy Research. 2015;5:635–647.
MLA
Tegani, Ilyes, vd. “Differential Flatness Using the Predictive Neural Network Control Law for Hybrid Power System”. International Journal Of Renewable Energy Research, c. 5, sy 2, Haziran 2015, ss. 635-47, https://izlik.org/JA98AZ99EP.
Vancouver
1.Ilyes Tegani, Abdenacer Aboubou, Ramzi Saadi, Mohamed Yacine Ayad, Mohamed Becherif. Differential Flatness Using the Predictive Neural Network Control Law for Hybrid Power System. International Journal Of Renewable Energy Research [Internet]. 01 Haziran 2015;5(2):635-47. Erişim adresi: https://izlik.org/JA98AZ99EP