Design and Implementation of Artificial Neural Networks to Predict Wind Directions on Controlling Yaw of Wind Turbine Prototype

Zaky Dzulfikri, Nuryanti Nuryanti, Yuliadi Erdani

Abstract


Wind  energy as one of the new renewable energies has an important role in replacing fossil energy sources in Indonesia. In order to make the wind turbine's performance more efficient in extracting energy from the wind, it is necessary to control the actuation movements pitch and yaw of the wind turbine horizontal. Controlling the actuator yaw can increase the absorption efficiency of the power to the rotor face toward the direction of the wind. The purpose of this thesis is to be able to predict the direction of the coming wind, then move the turbine rotor in the predicted direction. In this final project a wind turbine prototype is used with a precision of 5.3%, then for the data acquisition section, a wind direction sensor is built to change the amount of wind direction to a quantity that can be measured in units of degrees, and anemometer to measure wind speed. In making the wind direction prediction algorithm, artificial neural network (ANN) method is used with input parameters such as wind speed, temperature, humidity, pressure, and altitude. Data acquisition is done at one minute intervals with long data collection for one day, 1072 data are obtained, the data is then fed to the ANN model that has been prepared. Based on the results of tests that have been done, it is found that the Mean Absolute Error in the model is 0.4%.

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References


Global Wind Energy Council, "Global Wind Energy Outlook 2016," GWEC, 2016.

E. Muljadi and CP Butterfield, "Pitch-Controlled Variable-Speed Wind Turbine Generation," IEEE Transactions on Industry Applications, vol. 37, no. 1, pp. 240-246, 2001.

N. Hure, R. Turnar, M. Vasak, and G. Benˇci´c, "Optimal Wind Turbine Yaw Control Supported with Very Short-term Wind Predictions," 2015 IEEE International Conference on Industrial Technology (ICIT), pp. 385-391, 2015.

A. Torabi, E. Tarsaii, and SKM Mashhadi, "Fuzzy Controller Used in Yaw System of Wind Turbine noise," Journal of mathematics and computer science 8, pp. 105-112, 2014.

F.-Q. Chen and J.-M. Yang, "Fuzzy PID Controller Used in Yaw System of Wind Turbine," 3rd International Conference on Power Electronics Systems and Applications, pp. 1-4, 2009.

G. Li and J. Shi, "On comparison of three artificial neural networks for wind speed forecasting," Applied Energy, vol. 87, no. 7, pp. 2313-2320, 2010.

SP Kani and MM Ardehali, "Very short-term wind speed prediction: A new artificial neural network-Makrov Chain model," Energy Conversion and Management, vol. 52, no. 1, pp. 738-745, 2011.

BD Lakshmi and K. Sujatha, "Artificial Neural Networks for Wind Speed Direction," International Journal of Computer Technology and Applications, vol. 4, no. 9, pp. 179-185, 2016.

VDI (2004), VDI 2206 - Design methodology for mechatronic systems, Düsseldorf: The Association of German Engineers (VDI), 2004.

J. Wieringa, "Evaluation and Design of Wind Vanes, " Journal of Applied Meteorology, vol. 6, pp. 1114-1122, 1967.

Á. Sanz-Andrés, S. Pindado and a. F. Sorribes-Palmer, "Mathematical Analysis of the Effect of Rotor Geometry on Cup Anemometer Response," The Scientific World Journal, 2014.

FS Panchal and M. Panchal, "Review on Methods of Selecting Numbers of Hidden Nodes in Artificial Neural Network, " International Journal of Computer Science and Mobile Computing, vol. 3, no. 11, pp. 455-464, 2014.

H.-J. Wagner and J. Mathur, Introduction to Wind Energy Systems, Heidelberg: Springer, 2009.

Z. Whu and H. Wang, "Research on Active Yaw Mechanism of Small Wind Turbines," Energy Procedia 16, pp. 53-57, 2012.

FA Farret, LL Pfitscher, and DP Bemardon, "Active Yaw Control with Sensorless Wind Speed and Direction," in Proceedings of the 2000 Third IEEE International Caracas Conference on Devices, Circuits and Systems (Cat. No .00TH8474), Caracas, 2000.

M. Dalto, J. Maatusko and M. Vasak, "Deep neural networks for ultra-short-term wind forecasting," in IEEE International Conference on Industrial Technology, Seville, 2015.

M. Rouse, "WhatIs.com," Tech Target, January 2016. [Online]. Available: https://whatis.techtarget.com/definition/wind-turbine. [Accessed November 11, 2018]

AR Jha, Wind Turbine Technology, Florida: Taylor and Francis Group, 2011.

M. Flasiński, Introduction to Artificial Intelligence, Basel: Springer, 2016.

YR Senoaji, "Design of Building Control of YAW in Prototype Wind Turbines, "Polman Bandung, Bandung, 2018.

W.-Y. Chang, "A Literature Review of Wind Forecasting Methods," Journal of Power and Energy Engineering, vol. 2, pp. 161-168, 2014.

D. Svozil, V. KvasniEka and J. Pospichal, "Introduction to multi-layer feed-forward neural networks," Chemometrics and Intelligent Laboratory Systems, vol. 39, pp. 43-62, 1997.

E. Rijanto, A. Muqorobin, and AS Nugraha, "Design of a Yaw Positioning Control System for," International Journal of Applied Engineering Research, vol. 6, pp. 2327-2340, 2011.

United States Environmental Agency, "Meteorological Monitoring Guidance for Regulatory Modeling Applications," United States Environmental Agency, North Carolina, 2000.

WebFinance Inc., "BussinesDictionary," [Online]. Available: http://www.businessdictionary.com/definition/regression.html. [Accessed July 24, 2019].

S. Dongran, J. Yang, X. Fan, Y. Liu, A. Liu, G. Chen, and YH Joo, "Maximum Power Extraction for Wind Turbines Through a Yaw Control Novel," Energy Conversion and Management, pp. . 587-599, 2018.

S. Dongran, Y. Jian, Y. Liu, M. Su, A. Liu, and YH Joo, "Wind Direction Prediction for Yaw Control of Wind Turbines," International Journal of Control, Automation and Systems 15, vol. X, pp. 1-9, 2017.

HS Pedersen and EG Marin, "Yaw Misalignment and Power Curve Analysis," in EWEA Analysis of Operating Wind Farms 2016, Bilbao, 2016.

S. Wan, L. Cheng, and X. Sheng, "Effect of Yaw Error on Wind Turbine Running Characteristics Based on the Equivalent Wind Speed Model," Energies, vol. 8, pp. 8286-6301, 2015.

T. Ouyang, A. Kusiak, and Y. He, "Predictive Model of Yaw Error in Wind Turbine," Energy, vol. 123, pp. 119-130, 2017.




DOI: https://doi.org/10.18196/jrc.1105

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