基于混合神经模糊控制器的savonusdarius风机转子性能预测

Q3 Social Sciences
A. Biswas, Rajat Gupta
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引用次数: 0

摘要

垂直轴风力涡轮机(VAWT)在包括印度在内的许多发展中国家的农村电气化、抽水、脱盐、家庭应用等小规模应用中是一个可行的提议。本文采用基于梯度的训练算法开发了一种混合神经模糊控制器,用于评估组合三叶Savonius-Darrieus转子的性能。研究的目的是设计一种控制器,使输出参数随输入变化的波动最小化,从而使发电机负载更加均匀,并提高转子性能。设计了一种双输入单输出控制器。输入参数为叶尖速比和重叠,输出参数为功率系数和转矩系数。首先对输入数据集进行模糊化处理,然后通过反向传播学习算法得到训练后的输出。控制器的控制结果与实验结果在定性和定量上都符合得很好。对于功率系数(Cp),一致性在4.5%以内,对于扭矩系数(Ct),一致性在2%以内。此外,还将神经模糊混合控制器的性能与模糊逻辑控制器(FLC)和人工神经网络控制器进行了比较。与其他控制器相比,该控制器预测的性能参数值更平滑。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PREDICTION OF PERFORMANCE FOR SAVONIUSDARRIEUS WIND ROTOR BY HYBRID NEURO-FUZZY CONTROLLER
Vertical Axis Wind Turbine (VAWT) is a viable proposition for small-scale uses like, rural electrification, pumping, desalinating, household applications etc in many developing countries including India. In this paper, a hybrid neuro-fuzzy controller has been developed using gradient-based training algorithm to evaluate the performance of a combined three-bladed Savonius-Darrieus rotor. The objective of the study is to design a controller that causes more uniform loading on the generator by minimizing fluctuations in output parameters with change of input and also that improves rotor performance. A two-input-single-output controller has been designed. The tip speed ratio and overlap have been taken as input parameters, and output parameters are power coefficients and torque coefficients. At the first step, the input data are fuzzified by assigning fuzzy levels to the input data sets, and then trained outputs are obtained by back propagation learning algorithm. The controller results are in good agreement with the experimental results both qualitatively and quantitatively. For power coefficient (Cp), the agreement is within 4.5%, and for torque coefficient (Ct) it is within 2%. Moreover, the performance of the hybrid neuro-fuzzy controller has also been compared with Fuzzy Logic Controller (FLC) & ANN controller. The present controller predicts smoother values of performance parameters compared with other controllers.
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来源期刊
Journal of Urban and Environmental Engineering
Journal of Urban and Environmental Engineering Social Sciences-Urban Studies
CiteScore
0.90
自引率
0.00%
发文量
0
审稿时长
24 weeks
期刊介绍: Journal of Urban and Environmental Engineering (JUEE) provides a forum for original papers and for the exchange of information and views on significant developments in urban and environmental engineering worldwide. The scope of the journal includes: (a) Water Resources and Waste Management [...] (b) Constructions and Environment[...] (c) Urban Design[...] (d) Transportation Engineering[...] The Editors welcome original papers, scientific notes and discussions, in English, in those and related topics. All papers submitted to the Journal are peer reviewed by an international panel of Associate Editors and other experts. Authors are encouraged to suggest potential referees with their submission. Authors will have to confirm that the work, or any part of it, has not been published before and is not presently being considered for publication elsewhere.
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