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A Novel Hybrid Model for Short-Term Forecasting in PV Power Generation

机译:光伏发电短期预测的新型混合模型

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摘要

The increasing use of solar power as a source of electricity has led to increased interest in forecasting its power output over short-time horizons. Short-term forecasts are needed for operational planning, switching sources, programming backup, reserve usage, and peak load matching. However, the output of a photovoltaic (PV) system is influenced by irradiation, cloud cover, and other weather conditions. These factors make it difficult to conduct short-term PV output forecasting. In this paper, an experimental database of solar power output, solar irradiance, air, and module temperature data has been utilized. It includes data from the Green Energy Office Building in Malaysia, the Taichung Thermal Plant of Taipower, and National Penghu University. Based on the historical PV power and weather data provided in the experiment, all factors that influence photovoltaic-generated energy are discussed. Moreover, five types of forecasting modules were developed and utilized to predict the one-hour-ahead PV output. They include the ARIMA, SVM, ANN, ANFIS, and the combination models using GA algorithm. Forecasting results show the high precision and efficiency of this combination model. Therefore, the proposed model is suitable for ensuring the stable operation of a photovoltaic generation system.
机译:越来越多地使用太阳能作为电力,这引起了人们对在短期内预测其电力输出的兴趣。对于运营计划,切换源,编程备份,储备使用和峰值负载匹配,需要短期预测。但是,光伏(PV)系统的输出受辐射,云量和其他天气条件的影响。这些因素使得很难进行短期光伏发电量预测。在本文中,利用了太阳能输出,太阳辐照度,空气和组件温度数据的实验数据库。它包含来自马来西亚绿色能源办公大楼,台电台中热电厂和国立澎湖大学的数据。根据实验中提供的历史光伏发电功率和天气数据,讨论了影响光伏发电能量的所有因素。此外,开发了五种类型的预测模块,并将其用于预测一小时前的光伏发电量。它们包括ARIMA,SVM,ANN,ANFIS,以及使用GA算法的组合模型。预测结果表明该组合模型具有较高的精度和效率。因此,所提出的模型适合于确保光伏发电系统的稳定运行。

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