基于极限学习机和支持向量机的短期光伏发电功率估计

A. Karabiber, Ö. Alçin
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引用次数: 7

摘要

光伏发电功率估计是缺失数据预测、潮流控制和故障检测等太阳能系统实现的基本环节。由于智能方法更适合于非线性问题的求解,因此通常更倾向于采用智能方法来估算光伏发电功率。本文比较了极限学习机(ELM)和支持向量机(SVM)在光伏发电功率估计中的应用。从Sanhurfa的一个光伏电站获得的温度和功率测量数据被用作测试方法的数据集。分析了夏季晴天、中阴天和阴天的结果。结果表明,ELM在光伏功率估计精度方面优于SVM。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short Term PV Power Estimation by means of Extreme Learning Machine and Support Vector Machine
PV power estimation is a basic stage in solar system implementations such as missing data forecasting, power flow control and fault detection. Generally, intelligent methods are preferred to estimate PV power since they are more compatible with nonlinear problems. This paper presents a comparison of Extreme Learning Machine (ELM) and Support Vector Machine (SVM) for PV power estimation. Temperature and power measurements obtained from a PV plant in Sanhurfa are employed as data set to test the methods. The results have been analyzed for sunny, mid-cloudy and cloudy days in summer. The results reveal that ELM has a better performance than SVM in terms of the accuracy of PV power estimation.
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