基于支持向量回归和集成增强树(SVR-EBTA)的长期风电预测

R. J. E. Jizmundo, R. J. F. Maltezo, F. Villanueva, M. Pacis
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引用次数: 0

摘要

风力发电预测相当于对一个或多个风力涡轮机的预期发电量的估计,以供将来参考。首先,本文采用支持向量回归(SVR)算法对菲律宾邦板牙省安吉利斯市未来两年可能的风电功率进行预测。支持向量回归对于平均每小时风速和误差经过训练和测试的预测、分类和回归是一种很好的方法。为了进一步加强SVR的结果,研究人员通过另一种算法(ensembleboosting Trees, EBT)对结果进行了比较。利用配对t检验这一统计工具,研究人员发现两种算法的结果样本均值之间没有显著差异。通过分析,h=0表示在5%的置信水平上接受原假设。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Long-Term Wind Power Prediction using Support Vector Regression and Ensemble Boosted Tree Algorithm (SVR-EBTA)
Wind Power Forecasting corresponds to an estimate of the expected power production of one or more wind turbines for future reference. First, this paper uses the algorithm Support Vector Regression (SVR) to forecast the possible two-year wind power of Angeles City, Pampanga, Philippines. Support vector Regression is a good for forecasting, classifying and regression which undergo training and testing processes of mean hourly wind speed and errors. To further strengthen the results of SVR, the researchers compared the results through another algorithm, which is Ensembled Boosted Trees (EBT). Using the statistical tool, Paired T-test, the researchers found out that there is no significant difference between the sample means of the results of the two algorithms. Through analysis, having h=0 means that the null hypothesis was accepted at 5% confidence level.
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