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Controlling Megawatt Class WECS by ANFIS Network Trained with Modified Genetic Algorithm

机译:改进遗传算法训练的ANFIS网络控制兆瓦级WECS

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The generated mechanical power from Wind Energy Conversion System (WECS) is highly susceptible on wind energy absorbed by turbine blades whereas they can cause fluctuations in generated power. Designing a controller for WECS that leads to smooth generated mechanical power as well as high efficiency even with the presence of low wind speeds can be a challenging problem. This paper addresses this challenge by applying a novel strategy for training ANFIS network as a controller to the WECS. We firstly introducing Genetic Algorithm and Modified Genetic Algorithm optimization methods for training the adaptive network and updating the parameters of ANFIS. Then we use this trained adaptive network as a pitch angle controller for wind turbine. Comparing the results of proposed method with standard parameter optimization methods of ANFIS shows less error and training time in desired results. Also the fluctuations of wind turbine mechanical power decrease by applying trained ANFIS as a control signal for pitch angle entrance. The simulation results by using actual detailed model for wind power system show the effectiveness of the proposed method.
机译:风能转换系统(WECS)产生的机械能非常容易受到涡轮叶片吸收的风能的影响,而它们却可能导致发电量的波动。设计用于WECS的控制器,即使在低风速的情况下也能产生平稳的机械功率和高效率,这可能是一个具有挑战性的问题。本文通过应用一种新颖的策略来训练ANFIS网络作为WECS的控制者,从而解决了这一挑战。首先介绍了遗传算法和改进遗传算法的优化方法,用于训练自适应网络和更新ANFIS的参数。然后,我们将此训练有素的自适应网络用作风力发电机的俯仰角控制器。将所提出的方法的结果与ANFIS的标准参数优化方法进行比较,可以得出所需结果更少的错误和训练时间。通过将训练有素的ANFIS用作俯仰角进入的控制信号,还可降低风力发电机机械功率的波动。通过使用实际的详细模型对风电系统进行仿真,结果表明了该方法的有效性。

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