Improved Wind Power Forecasting Using Combination Methods

Ceyda Er Koksoy, M. Özkan, S. Buhan, T. Demirci, Y. Arslan, Aysenur Birturk, P. Senkul
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引用次数: 3

Abstract

Integration of the wind power into the existing transmission grid is an important issue due to discontinuous and volatile behavior of wind. Moreover, the power plant owners need reliable information about day-ahead power production for market operations. Therefore, wind power forecasting approaches have been gaining importance in renewable energy research area. The Wind Power Monitoring and Forecast System for Turkey (RITM) currently monitors a growing number of wind power plants in Turkey, and uses wind power measurements in addition to different numerical weather predictions to generate short-term power forecasts. Forecasting models of RITM give considerably good results individually. However, forecast combination approaches are frequently used in order not to rely on a single forecast model, and also utilize forecast diversification. In this paper, an analysis of wind power domain and the current wind power forecasting methods of RITM are presented. Then, three main forecast combination approaches, namely Lp-norm based combination, FSS (Fuzzy Soft Sets) based combination and tree-based combination, are proposed to provide better forecasts. These combination methods have been verified on forecasts data of RITM in terms of normalized mean absolute error (NMAE) metric. The experimental results show that all of the applied combination methods give lower NMAE rates for most of the wind power plants compared to individual forecasts.
利用组合方法改进风电预测
由于风的不连续和不稳定的特性,将风电并入现有输电网是一个重要的问题。此外,发电厂所有者需要关于前一天电力生产的可靠信息,以供市场运作。因此,风电功率预测方法在可再生能源研究领域越来越受到重视。土耳其风力监测和预报系统(RITM)目前监测土耳其越来越多的风力发电厂,并使用风力测量和不同的数值天气预报来生成短期电力预报。RITM的预测模型分别给出了相当好的结果。然而,为了不依赖单一的预测模型,也为了利用预测的多样化,经常使用预测组合方法。本文对风电领域进行了分析,介绍了现有的RITM风电预测方法。然后,提出了基于lp范数的组合、基于模糊软集(FSS)的组合和基于树的组合三种主要的预测组合方法,以提供更好的预测。用归一化平均绝对误差(NMAE)度量在RITM预测数据上对这些组合方法进行了验证。实验结果表明,与单独预测相比,所有应用的组合方法对大多数风力发电厂的NMAE率都较低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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