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A Short-Term PV Power Forecasting Method Using a Hybrid Kmeans-GRA-SVR Model under Ideal Weather Condition

机译:在理想天气条件下使用杂交悄悄话-GRA-SVR模型的短期PV功率预测方法

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With the continuous increase of solar penetration rate, it has brought challenges to the smooth operation of the power grid. Therefore, to make photovoltaic power generation not affect the smooth operation of the grid, accurate photovoltaic power prediction is required. And short-term forecasting is essential for the deployment of daily power generation plans. In this paper, A short-term photovoltaic power generation forecast method based on K-means++, grey relational analysis (GRA) and support vector regression (SVR) (Hybrid Kmeans-GRA-SVR, HKGSVR) was proposed. The historical power data was clustered through the multi-index K-means++ algorithm. And the similar days and the nearest neighbor similar day of the prediction day were selected by the GRA algorithm. Then, similar days and nearest neighbor similar days were used to train SVR to obtain an accurate photovoltaic power prediction model. Under ideal weather, the average values of MAE, RMSE, and R~(2) were 0.8101 kW, 0.9608 kW, and 99.66%, respectively. The average computation time was 1.7487 s, which was significantly better than the SVR model. Thus, the demonstrated numerical results verify the effectiveness of the proposed model for short-term PV power prediction.
机译:随着太阳能渗透率的不断增加,它对电网的平稳操作带来了挑战。因此,为了使光伏发电不影响电网的平稳操作,需要精确的光伏电源预测。和短期预测对于部署日常发电计划至关重要。本文提出了一种基于K-Means ++,灰色关系分析(GRA)和支持向量回归(SVR)(SVR)(Hybrid Kmeans-Gra-SVR,HKGSVR)的短期光伏发电预测方法。历史电量数据通过多索引K-Means ++算法进行聚类。并且通过GRA算法选择类似的日子和最近的邻居预测日的类似日。然后,类似的日子和最近的邻居类似的日子用于训练SVR以获得精确的光伏电力预测模型。在理想的天气下,MAE,RMSE和R〜(2)的平均值分别为0.8101千瓦,0.9608千瓦,分别为99.66%。平均计算时间为1.7487 s,这明显优于SVR模型。因此,所示的数值结果验证了所提出的短期PV功率预测模型的有效性。

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