利用 RBF 神经网络对 750 kW-FSWT 功率分流传动装置的新型机电一体化模型进行建模和控制:键图方法

Mohssine Karimi, M. Zekraoui, Zakaria Khaouch, S. Touairi
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引用次数: 0

摘要

本研究针对配备变频器的风力涡轮机出现的问题,提出了一种基于分体式动力传输的新型定速风力涡轮机(FSWT)概念和机电一体化控制模型。风力涡轮机转子驱动第一传动轴,而变速伺服电机则为第二输入端提供动力。差速齿轮传动装置的输出端通过异步发电机与电网相连。为了优化从风能中提取的电能,同时最大限度地减少风力涡轮机上的过大动态负载,采用比例积分控制器(PI)对 750 kW-FSWT 进行机电控制。论文建议采用神经网络和进化算法来确定适当的 PI 增益。针对 750 kW-FSWT 的伺服电机集体控制,提出了一种基于 PI 控制器的径向基函数(RBF)神经网络。为了获得用于 RBF 训练的最佳数据集,利用了粒子群优化(PSO)进化算法。仿真结果验证并确认了所提模型和控制器的鲁棒性和有效性。使用 20-sim 软件包进行了实际操作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling and control of a novel mechatronic model of a 750 kW-FSWT with power-splitting transmission using RBF neural network: a bond graph approach
This work addresses issues that appear from wind turbines equipped with frequency converters and presents a new fixed-speed wind turbine (FSWT) concept based on a split power transmission, along with a Mechatronic Control Model. The wind turbine rotor drives the first transmission shaft, while a servomotor with variable speed powers the second input. The differential gear transmission output is linked to the electric grid through an asynchronous generator. To optimize the power extracted from the wind energy while minimizing excessive dynamic loads on the wind turbine, a mechatronic control model of a 750 kW-FSWT is applied using a proportional and integral controller (PI). The paper suggests employing neural networks and evolutionary algorithms for determining appropriate PI gains. For collective servomotor control of a 750 kW-FSWT, a radial basis function (RBF) neural networks based on PI controller is proposed. To acquire an optimum dataset for RBF training, the particle swarm optimization (PSO) evolutionary algorithm is harnessed. The robustness and effectiveness of the proposed model and controller are verified and confirmed through simulation results. Hands-on experience is conducted using the 20-sim software package.
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