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Short-Term Master-Slave Forecast Method for Distributed Photovoltaic Plants Based on the Spatial Correlation

机译:基于空间相关性的分布式光伏植物短期主奴隶预测方法

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With the large-scale integration of distributed photovoltaic (DPV) power plants, the uncertainty of photovoltaic generation is intensively influencing the secure operation of power systems. Improving the forecast capability of DPV plants has become an urgent problem to solve. However, most of the DPV plants are not able to make generation forecast on their own due to the constraints of the investment cost, data storage condition, and the influence of microscope environment. Therefore, this paper proposes a master-slave forecast method to predict the power of target plants without forecast ability based on the power of DPV plants with comprehensive forecast system and the spatial correlation between these two kinds of plants. First, a characteristics pattern library of DPV plants is established with K-means clustering algorithm considering the time difference. Next, the pattern most spatially correlated to the target plant is determined through online matching. The corresponding spatial correlation mapping relationship is obtained by numerical fitting using least squares support vector machine (LS-SVM), and the short-term generation forecast for target plants is achieved with the forecast of reference plants and mapping relationship. Simulation results demonstrate that the proposed method could improve the overall forecast accuracy by more than 52% for univariate prediction and by more than 22% for multivariate prediction and obtain short-term generation forecast for DPV or newly built DPV plants with low investment.
机译:随着分布式光伏(DPV)发电厂的大规模集成,光伏发电的不确定性是强烈影响电力系统的安全运行。改善DPV工厂的预测能力已成为解决的迫切问题。然而,由于投资成本,数据储存条件和显微镜环境的影响,大多数DPV工厂无法自行制定出来的预测。因此,本文提出了一种主奴隶预测方法,以预测目标植物的力量,无需基于DPV工厂具有综合预测系统的预测能力和这两种植物之间的空间相关性。首先,考虑时间差,以K-Means聚类算法建立了DPV工厂的特征模式库。接下来,通过在线匹配确定大多数空间相关的模式。通过使用最小二乘支持向量机(LS-SVM)的数值拟合来获得相应的空间相关映射关系,并且通过参考植物预测和映射关系来实现目标植物的短期产生预测。仿真结果表明,该方法可以将整体预测精度提高,对于单变量预测,多元化预测超过22%以上,对DPV或新建的DPV工厂获得低投资的短期发电预测。

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