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RBF neural network based backstepping terminal sliding mode MPPT control technique for PV system

机译:用于PV系统的RBF神经网络基于止回式终端滑动模式MPPT控制技术

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The energy demand in the world has increased rapidly in the last few decades. This demand is arising the need for alternative energy resources. Solar energy is the most eminent energy resource which is completely free from pollution and fuel. However, the problem occurs when it comes to efficiency under different atmospheric conditions such as varying temperature and solar irradiance. To achieve its maximum efficiency, an algorithm of maximum power point tracking (MPPT) is needed to fetch maximum power from the photovoltaic (PV) system. In this article, a nonlinear backstepping terminal sliding mode control (BTSMC) is proposed for maximum power extraction. The system is finite-time stable and its stability is validated through the Lyapunov function. A DC-DC buck-boost converter is used to deliver PV power to the load. For the proposed controller, reference voltages are generated by a radial basis function neural network (RBF NN). The proposed controller performance is tested using the MATLAB/Simulink tool. Furthermore, the controller performance is compared with the perturb and observe (P&O) MPPT algorithm, Proportional Integral Derivative (PID) controller and backstepping MPPT nonlinear controller. The results validate that the proposed controller offers better tracking and fast convergence in finite time under rapidly varying conditions of the environment.
机译:过去几十年来,世界的能源需求迅速增加。这一需求正在推出对替代能源资源的需求。太阳能是最杰出的能源资源,完全没有污染和燃料。然而,在不同的大气条件下效率,例如不同的温度和太阳辐照度,发生问题。为了实现其最大效率,需要一种最大功率点跟踪(MPPT)算法来获取来自光伏(PV)系统的最大功率。在本文中,提出了一种非线性反向终端滑动模式控制(BTSMC)以用于最大功率提取。该系统是有限时间稳定的,通过Lyapunov功能验证其稳定性。 DC-DC降压 - 升压转换器用于向负载提供PV电源。对于所提出的控制器,参考电压由径向基函数神经网络(RBF NN)产生。建议的控制器性能使用MATLAB / Simulink工具测试。此外,控制器性能与扰动和观察(P&O)MPPT算法,比例积分导数(PID)控制器和BackStepping MPPT非线性控制器进行比较。结果验证了所提出的控制器在环境快速变化的环境下提供了更好的跟踪和快速收敛。

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