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Identification of Solar PV Array Partial Shading Patterns using Machine Learning

机译:使用机器学习识别太阳能光伏阵列部分着色模式

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Mismatch losses due to partial shading can limit the energy generation of solar photovoltaic (PV) systems. Isolating the shaded PV modules through electrical reconfiguration can potentially improve the power output of the PV array. To do this, the shaded modules need to be identified before the PV array can be reconfigured to produce the optimum output power. In this study, an algorithm was developed to identify the partial shading pattern of a PV array using machine learning. Measurements from the current sensor integrated into the switching circuit of each module and the solar irradiance from a pyranometer were utilized as input to the machine learning algorithm. The algorithm was trained using the voltage and current readings of an off grid PV system composed of nine 10-W PV modules arranged in a 3 × 3 array in series-parallel configuration. Three machine learning techniques were used, namely SVC, Random Forest, and K-Nearest Neighbors, resulting in 80 %, 86 %, and 66 %, respectively, in terms of accuracy, precision, recall, and f-1 score. Thus, the Random Forest algorithm was found suitable for this type of problem as it can reliably distinguish the shading patterns on the array.
机译:由于部分遮阳导致的不匹配损失可以限制太阳能光伏(PV)系统的能量产生。通过电气重新配置隔离阴影的PV模块可能会改善PV阵列的功率输出。为此,需要在PV阵列可以重新配置之前识别阴影模块以产生最佳输出功率。在该研究中,开发了一种算法,以识别使用机器学习的PV阵列的部分着色模式。从集成到每个模块的开关电路中的电流传感器的测量值和来自绘制计的太阳辐照度被用作机器学习算法的输入。使用由九个10-W光伏模块组成的OFF网格PV系统的电压和电流读数训练,该仪表由串联平行配置以3×3阵列排列在3×3阵列中。使用三种机器学习技术,即SVC,随机林和K最近邻居,分别在准确性,精确,召回和F-1分数方面分别为80%,86%和66%。因此,发现随机森林算法适用于这种类型的问题,因为它可以可靠地区分阵列上的阴影图案。

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