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A combined forecasting model for time series: Application to short-term wind speed forecasting

机译:时间序列组合预测模型:在短期风速预测中的应用

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摘要

Wind speed forecasting has been growing in popularity, owing to the increased demand for wind power electricity generation and developments in wind energy competitiveness. Many forecasting methods have been broadly employed to forecast short-term wind speed for wind that is irregular, nonlinear, and non-stationary. However, they neglect the effectiveness of data preprocessing and model parameter optimization, thereby posing an enormous challenge for the precise and stable forecasting of wind speed and the safe operation of the wind power industry. To overcome these challenges and further enhance wind speed forecasting performance and stability, a forecasting system is developed based on a data pretreatment strategy, a modified multi-objective optimization algorithm, and several forecasting models. More specifically, a data pretreatment strategy is executed to determine the dominating trend of a wind speed series, and to control the interference of noise. The multi-objective optimization algorithm can help acquire more satisfactory forecasting precision and stability. The multiple forecasting models are integrated to construct a combined model for wind speed forecasting. To verify the properties of the developed forecasting system, wind speed data of 10 min from 4 adjacent wind farms in Shandong Peninsula, China are adopted as case studies. The results of the point forecasting and interval forecasting reveal that our forecasting system positively exceeds all contrastive models in respect to forecasting precision and stability. Thus, our developed system is extremely useful for enhancing prediction precision, and is a reasonable and valid tool for intelligent grid programming.
机译:由于对风能发电的需求增加以及风能竞争力的发展,风速预测已变得越来越流行。许多预测方法已广泛用于预测不规则,非线性和非平稳风的短期风速。然而,他们忽视了数据预处理和模型参数优化的有效性,从而对精确,稳定的风速预测以及风电行业的安全运营提出了巨大的挑战。为了克服这些挑战并进一步提高风速预报的性能和稳定性,基于数据预处理策略,改进的多目标优化算法和几种预报模型开发了预报系统。更具体地,执行数据预处理策略以确定风速序列的主要趋势,并控制噪声的干扰。多目标优化算法可以帮助获得更令人满意的预测精度和稳定性。集成了多个预测模型以构建风速预测的组合模型。为了验证已开发的预测系统的性能,以中国山东半岛四个相邻风电场的10分钟风速数据为案例研究。点预测和区间预测的结果表明,在预测精度和稳定性方面,我们的预测系统肯定超过了所有对比模型。因此,我们开发的系统对于提高预测精度非常有用,并且是用于智能电网编程的合理有效的工具。

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