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Investigation of Kalman Filter-KF-Application on a Quasi-Newtonian - QN - Algorithm for Photovoltaic Maximum Power Point Detection - MPPT

机译:卡尔曼滤波器-KF在准牛顿法-QN-光伏最大功率点检测算法-MPPT中的应用研究

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The objective of this work is to investigate the application of Kalman Filters to the estimation of parameters of a Quasi-Newtonian (QN) algorithm in the photovoltaic analysis to improve the Maximum Power Point Tracking (MPPT). Recent work in PV-MPPT [1], demonstrate the applicability of double Kalman Filter to PV-MPPT. In this work, we implement a simulation worksheet of a Kalmar Filter (KF) to identify some improvement on the QN algorithm. The QN algorithm is a powerful method of optimization of convex curves, which is the case of the power curve of a solar module when applied to controlled conditions of temperature and weather. But, there is a distortion of the curve that is made by random processes such temperature changes and shadowing. The objective is to apply the KF to estimate the noise provoked by those processes to obtain a rapid convergence of the algorithm and to mitigate the oscillation around the Maximum Power Point (MPP). The basic idea behind this strategy is to analyze the viability of this method by an implementation and simulation of the convergence time and the oscillation around the MPP using MATLAB.
机译:这项工作的目的是调查卡尔曼滤波器在光伏分析中估算拟牛顿(QN)算法参数的估计,以改善最大功率点跟踪(MPPT)。最近在PV-MPPT [1]中的工作,展示了双卡尔曼滤波器对PV-MPPT的适用性。在这项工作中,我们实现了kalmar过滤器(KF)的模拟工作表,以识别QN算法的一些改进。 QN算法是一种强大的凸形曲线优化方法,这是应用于温度和天气的受控条件时太阳能模块的电源曲线的情况。但是,存在由随机处理如此温度变化和阴影制造的曲线的变形。目的是应用KF来估计这些过程引起的噪声,以获得算法的快速收敛,并在最大功率点(MPP)周围减轻振荡。这种策略背后的基本思想是通过使用MATLAB的MPP围绕MPP的收敛时间和振荡来分析该方法的可行性。

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