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Analysis of Influencing Factors of PV Based Ensemble Modeling for PV Power and Application in Prediction

机译:基于光伏集成模型的光伏发电影响因素分析及在预测中的应用

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According to the volatility and intermittent characteristics of photovoltaic power generation. Integrating PV power to the grid have an impact on the stability and safety. To address this challenge, the work learns the effect of support vector machine (SVM) and several algorithms on forecast. An algorithm model for improving the prediction accuracy of training data for multiple groups of factors has been proposed. The model consists of gradient boosting decision tree (GBDT), Particle Swarm Optimization (PSO) and SVM. Finally, according to the integrated algorithm, assigning weak learners' weights and integrating become strong learners. The GBDT algorithm is able to find the factors with high conelation coefficient in the data to establish the model, avoiding of using the empirical method to select the factors. The PSO algorithm finds the optimal parameters of the SVM algorithm and the optimal weight of the weak learner. Compared with BP and traditional SVM, the model established by the data without determining the weather type can obtain better prediction accuracy.
机译:根据光伏发电的波动性和间歇性特征。将光伏电源集成到电网中会影响稳定性和安全性。为了应对这一挑战,这项工作学习了支持向量机(SVM)和几种算法对预测的影响。提出了一种提高多组因子训练数据预测精度的算法模型。该模型由梯度提升决策树(GBDT),粒子群优化(PSO)和SVM组成。最后,根据集成算法,分配弱学习者权重并进行整合成为强学习者。 GBDT算法能够找到数据中具有较高关联系数的因子以建立模型,而无需使用经验方法来选择因子。 PSO算法找到SVM算法的最佳参数和弱学习者的最佳权重。与BP和传统SVM相比,在不确定天气类型的情况下通过数据建立的模型可以获得更好的预测精度。

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