利用机器学习技术监测光伏系统状态

Mohamed Gaballah Ali, M. Gaafar, M. Orabi
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摘要

本文提出了一种基于数据的状态监测技术(CM)来观察光伏发电系统的运行状态。传统的直流组合箱测量方法为每个阵列安装一个电压传感器,每个串安装一个电流传感器,而基于核函数的高斯过程回归(GPR)不需要安装更多的传感器,它具有非线性逼近的能力,因此可以利用它对光伏发电机的直流功率进行经验建模并计算残差,用于故障检测。残差通过指数加权移动平均滤波器。本研究采用核密度估计(KDE)通过检测单变量残差来检测故障。本研究中最受关注的四种故障情况分别是光伏串断路故障、部分遮阳、光伏组件短路和组件劣化或退化。利用Matlab Simulink对一个5,310 wp并网太阳能发电系统进行仿真。通过对GPR模型的6个核函数进行测试,其中2个是定制化的,分别是二次函数、母核函数、指数函数、平方函数、点积加白核函数和母核函数加二次核函数,通过对其进行高级预处理,对比结果和性能指标发现,基于母核函数和定制化母核函数的GPR模型在光伏系统监测中的表现优于其他基于核函数的GPR模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Photovoltaic Systems Status Monitoring Utilizing Machine Learning Technique
This article proposes a Data-based condition monitoring technique (CM) to observe the operational status of a Photovoltaic (PV) system. Without any need for more sensors than traditional measurements installed in the DC Combiner Box which are one Voltage sensor for the array and one Current sensor for each string, Kernel-based Gaussian process regression (GPR) is capable of nonlinear approximation, So it is utilized to empirically model the DC power of PV generator and compute residuals which are used for detecting faults. The residuals go via an exponentially weighted moving averages filter. Kernel density estimation (KDE) is employed in this study to detect faults by examining the univariate residuals. The four failure situations that have received the most attention in this study are the PV string open circuit fault, partial shading, shorted PV modules, and module deterioration or degradation. Using information from a 5, 310Wp gridconnected solar power system simulated on Matlab Simulink. Through this study, six kernel functions were tested for the GPR model where two of them were customized, These functions are Quadratic, Matern, Exponential, Squared Exponential, Dot product Plus White kernel, and Matern kernel Plus quadratic kernel, by performing advanced preprocessing, and comparing results and performance metrics we found that MATERN and Customized Matern Kernelbased GPR models perform better than other kernel-based GPR to monitor PV systems.
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