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Published in: Soft Computing 18/2019

27-03-2019 | Focus

Optimized deep learning neural network model for doubly fed induction generator in wind energy conversion systems

Published in: Soft Computing | Issue 18/2019

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Abstract

Design of controller for a doubly fed induction generator driven by a variable speed wind turbine employing deep learning neural networks whose weights are tuned by grey artificial bee colony algorithm is developed and simulated in this work. This paper presents the mathematical modelling of the doubly fed induction generator (DFIG) and the controller design is implemented using the third generation deep learning neural network (DLNN). In the proposed work, the variable speed wind turbine generator torque is regulated employing a proportional–integral–derivative (PID) controller. The gains of the PID controller are tuned using DLNN model. The proposed density-based grey artificial bee colony (D-GABC) algorithm provides the optimal dataset required for training DLNN model. As well, the weights of the developed neural network controller are also optimized by D-GABC algorithm to avoid premature convergence and to reduce the incurred computational time of the network model. The effectiveness of the proposed DLNN-based controller for DFIG in wind energy conversion is proved and observed to be better than that of the other methods proposed in the previous literature works in respect of the simulated results obtained.

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Literature
go back to reference Alatas B (2010) Chaotic bee colony algorithms for global numerical optimization. Expert Syst Appl 37(8):5682–5687CrossRef Alatas B (2010) Chaotic bee colony algorithms for global numerical optimization. Expert Syst Appl 37(8):5682–5687CrossRef
go back to reference Bakouri A, Mahmoudi H, Abbou A (2016) Intelligent control for doubly fed induction generator connected to the electrical network. Int J Power Electron Drive Syst 7(3):688–700 Bakouri A, Mahmoudi H, Abbou A (2016) Intelligent control for doubly fed induction generator connected to the electrical network. Int J Power Electron Drive Syst 7(3):688–700
go back to reference Bakouri A, Mahmoudi H, Abbou A (2017) Modeling and robust control with wind speed estimation by artificial neural networks of a DFIG windturbine under both normal operation and grid fault. Int Rev Electr Eng 12(2):100–109 Bakouri A, Mahmoudi H, Abbou A (2017) Modeling and robust control with wind speed estimation by artificial neural networks of a DFIG windturbine under both normal operation and grid fault. Int Rev Electr Eng 12(2):100–109
go back to reference Bekakra Y, Attous DB (2014) Optimal tuning of PI controller using PSO optimization for indirect power control for DFIG based wind turbine with MPPT. Int J Syst Assur Eng Manag 5(3):219–229CrossRef Bekakra Y, Attous DB (2014) Optimal tuning of PI controller using PSO optimization for indirect power control for DFIG based wind turbine with MPPT. Int J Syst Assur Eng Manag 5(3):219–229CrossRef
go back to reference Bharti OP, Saket RK, Nagar SK (2017) Controller design for doubly fed induction generator using particle swarm optimization technique. Renew Energy 114:1394–1406CrossRef Bharti OP, Saket RK, Nagar SK (2017) Controller design for doubly fed induction generator using particle swarm optimization technique. Renew Energy 114:1394–1406CrossRef
go back to reference Boghdady TA, Sayed MM, Elzahab EA (2016) Maximization of generated power from wind energy conversion system using a new evolutionary algorithm. Renew Energy 99:631–646CrossRef Boghdady TA, Sayed MM, Elzahab EA (2016) Maximization of generated power from wind energy conversion system using a new evolutionary algorithm. Renew Energy 99:631–646CrossRef
go back to reference Boualouch A, Nasser T, Essadki A, Boukhriss A, Frigui A (2017) A robust power control of a DFIG used in wind turbine conversion system. Int Energy J 17(1):1–10 Boualouch A, Nasser T, Essadki A, Boukhriss A, Frigui A (2017) A robust power control of a DFIG used in wind turbine conversion system. Int Energy J 17(1):1–10
go back to reference Boudjellal B, Benslimane T (2016) Artificial Neural Network-based control of wind energy conversion system based on a doubly fed induction generator. Mediterr J Meas Control 12(2):553–560 Boudjellal B, Benslimane T (2016) Artificial Neural Network-based control of wind energy conversion system based on a doubly fed induction generator. Mediterr J Meas Control 12(2):553–560
go back to reference Bryc W (1995) The normal distribution: characterizations with applications. Springer, Berlin. ISBN 0-387-97990-5MATHCrossRef Bryc W (1995) The normal distribution: characterizations with applications. Springer, Berlin. ISBN 0-387-97990-5MATHCrossRef
go back to reference Chaoui H, Okoye O (2016) Nonlinear power control of doubly fed induction generator wind turbines using neural networks. In: 2016 IEEE 25th international symposium industrial electronics (ISIE), pp 562–567 Chaoui H, Okoye O (2016) Nonlinear power control of doubly fed induction generator wind turbines using neural networks. In: 2016 IEEE 25th international symposium industrial electronics (ISIE), pp 562–567
go back to reference Grzegorczyk K, Kurdziel M, Wójcik PI (2016) Encouraging orthogonality between weight vectors in pretrained deep neural networks. Neurocomputing 202:84–90CrossRef Grzegorczyk K, Kurdziel M, Wójcik PI (2016) Encouraging orthogonality between weight vectors in pretrained deep neural networks. Neurocomputing 202:84–90CrossRef
go back to reference Hichem M, Tahar B (2017) Fuzzy monitoring of stator and rotor winding faults for DFIG used in wind energy conversion system. Int J Model Ident Control 27(1):49–57CrossRef Hichem M, Tahar B (2017) Fuzzy monitoring of stator and rotor winding faults for DFIG used in wind energy conversion system. Int J Model Ident Control 27(1):49–57CrossRef
go back to reference Karaboga D (2005) An idea based on honey bee swarm for numerical optimization, Report No.: TECHNICAL REPORT-TR06, Erciyes University, Kayseri/Trkiye Karaboga D (2005) An idea based on honey bee swarm for numerical optimization, Report No.: TECHNICAL REPORT-TR06, Erciyes University, Kayseri/Trkiye
go back to reference Ko H-S, Yoon G-G, Kyung N-H, Hong W-P (2008) Modeling and control of DFIG-based variable speed wind-turbine. Electr Power Syst Res 78:1841–1849CrossRef Ko H-S, Yoon G-G, Kyung N-H, Hong W-P (2008) Modeling and control of DFIG-based variable speed wind-turbine. Electr Power Syst Res 78:1841–1849CrossRef
go back to reference Kong X, Liu X, Lee KY (2014) Data-driven modelling of a doubly fed induction generator wind turbine system based on neural networks. IET Renew Power Gener 8(8):849–857CrossRef Kong X, Liu X, Lee KY (2014) Data-driven modelling of a doubly fed induction generator wind turbine system based on neural networks. IET Renew Power Gener 8(8):849–857CrossRef
go back to reference Kouzi K, Filah K (2015) An optimized adaptive neuro-fuzzy controller based on an indirect vector control of Doubly Fed Induction Generator for wind power generation. J Electr Eng 15(4):82–88 Kouzi K, Filah K (2015) An optimized adaptive neuro-fuzzy controller based on an indirect vector control of Doubly Fed Induction Generator for wind power generation. J Electr Eng 15(4):82–88
go back to reference Krause PC, Wasynczuk O, Sudhoff SD (2002) Analysis of electric machinery and drive systems. Wiley, New JerseyCrossRef Krause PC, Wasynczuk O, Sudhoff SD (2002) Analysis of electric machinery and drive systems. Wiley, New JerseyCrossRef
go back to reference Kumar D, Chatterjee K (2017) Design and analysis of artificial bee-colony-based MPPT algorithm for DFIG-based wind energy conversion systems. Int J Green Energy 14(4):416–429CrossRef Kumar D, Chatterjee K (2017) Design and analysis of artificial bee-colony-based MPPT algorithm for DFIG-based wind energy conversion systems. Int J Green Energy 14(4):416–429CrossRef
go back to reference Lalouni S, Rekioua D, Idjdarene K, Tounzi A (2015) Maximum power point tracking based hybrid hill-climb search method applied to wind energy conversion system. Electr Power Compon Syst 43(8–10):1028–1038CrossRef Lalouni S, Rekioua D, Idjdarene K, Tounzi A (2015) Maximum power point tracking based hybrid hill-climb search method applied to wind energy conversion system. Electr Power Compon Syst 43(8–10):1028–1038CrossRef
go back to reference Liu S, Lin Y (2006) Grey information: theory and practical applications. Springer, Berlin Liu S, Lin Y (2006) Grey information: theory and practical applications. Springer, Berlin
go back to reference Liu Z, He Z, Liao K, Luo Y (2016) An input–output linearization algorithm-based control for optimization of DFIG. IEEJ Trans Electr Electron Eng 11(1):s22–s27CrossRef Liu Z, He Z, Liao K, Luo Y (2016) An input–output linearization algorithm-based control for optimization of DFIG. IEEJ Trans Electr Electron Eng 11(1):s22–s27CrossRef
go back to reference Medjber A, Guessoum A, Belmili H, Mellit A (2016) New neural network and fuzzy logic controllers to monitor maximum power for wind energy conversion system. Energy 106:137–146CrossRef Medjber A, Guessoum A, Belmili H, Mellit A (2016) New neural network and fuzzy logic controllers to monitor maximum power for wind energy conversion system. Energy 106:137–146CrossRef
go back to reference Nagaria D, Pillai GN, Gupta HO (2010) Comparison of control schemes for frequency support in DFIG based WECS. Int Energy J 11(1):17–28 Nagaria D, Pillai GN, Gupta HO (2010) Comparison of control schemes for frequency support in DFIG based WECS. Int Energy J 11(1):17–28
go back to reference Om Prakash Bharti RK, Saket SK (2016) Nagar, controller design for DFIG driven by variable speed wind turbine using static output feedback technique. Eng Technol Appl Sci Res 6(4):1056–1061 Om Prakash Bharti RK, Saket SK (2016) Nagar, controller design for DFIG driven by variable speed wind turbine using static output feedback technique. Eng Technol Appl Sci Res 6(4):1056–1061
go back to reference Schmidhuber J (2015) Deep learning in neural networks: an overview. Neural Netw 61:85–117CrossRef Schmidhuber J (2015) Deep learning in neural networks: an overview. Neural Netw 61:85–117CrossRef
go back to reference Siddiqui MM (1964) Statistical inference for Rayleigh distributions. J Res Natl Bur Stand 68D(9):1007MathSciNet Siddiqui MM (1964) Statistical inference for Rayleigh distributions. J Res Natl Bur Stand 68D(9):1007MathSciNet
go back to reference Sitharthan R, Geethanjali M (2017) An adaptive Elman neural network with C-PSO learning algorithm based pitch angle controller for DFIG based WECS. J Vib Control 23(5):716–730CrossRef Sitharthan R, Geethanjali M (2017) An adaptive Elman neural network with C-PSO learning algorithm based pitch angle controller for DFIG based WECS. J Vib Control 23(5):716–730CrossRef
go back to reference Vieira JP, Nunes MN, Bezerra UH (2008) Design of optimal PI controllers for doubly fed induction generators in wind turbines using genetic algorithm. In: 2008 IEEE power and energy society general meeting-conversion and delivery of electrical energy in the 21st century, pp 1–7 Vieira JP, Nunes MN, Bezerra UH (2008) Design of optimal PI controllers for doubly fed induction generators in wind turbines using genetic algorithm. In: 2008 IEEE power and energy society general meeting-conversion and delivery of electrical energy in the 21st century, pp 1–7
go back to reference Vrionis TD, Koutiva XI, Vovos NA (2014) A genetic algorithm-based low voltage ride-through control strategy for grid connected doubly fed induction wind generators. IEEE Trans Power Syst 29(3):1325–1334CrossRef Vrionis TD, Koutiva XI, Vovos NA (2014) A genetic algorithm-based low voltage ride-through control strategy for grid connected doubly fed induction wind generators. IEEE Trans Power Syst 29(3):1325–1334CrossRef
go back to reference Wei C, Zhang Z, Qiao W, Qu L (2014) Intelligent maximum power extraction control for wind energy conversion systems based on online Q-learning with function approximation. In: 2014 IEEE energy conversion congress and exposition (ECCE), pp 4911–4916 Wei C, Zhang Z, Qiao W, Qu L (2014) Intelligent maximum power extraction control for wind energy conversion systems based on online Q-learning with function approximation. In: 2014 IEEE energy conversion congress and exposition (ECCE), pp 4911–4916
go back to reference Wu Z, Wang D, Jiang. Z, Zhang W (2016) Unified estimate of Gaussian kernel width for surrogate models. Neurocomputing 203:41–51CrossRef Wu Z, Wang D, Jiang. Z, Zhang W (2016) Unified estimate of Gaussian kernel width for surrogate models. Neurocomputing 203:41–51CrossRef
go back to reference Xiang W-l, Li Y-z, Meng X-l, Zhang C-m, An M-q (2017) A grey artificial bee colony algorithm. Appl Soft Comput 60:1–17CrossRef Xiang W-l, Li Y-z, Meng X-l, Zhang C-m, An M-q (2017) A grey artificial bee colony algorithm. Appl Soft Comput 60:1–17CrossRef
Metadata
Title
Optimized deep learning neural network model for doubly fed induction generator in wind energy conversion systems
Publication date
27-03-2019
Published in
Soft Computing / Issue 18/2019
Print ISSN: 1432-7643
Electronic ISSN: 1433-7479
DOI
https://doi.org/10.1007/s00500-019-03947-y

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