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Short-term wind speed forecasting: Application of linear and non-linear time series models

机译:短期风速预测:线性和非线性时间序列模型的应用

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This study forecasts day-ahead wind speed at 15 minute intervals at the site of a wind turbine located in Maharashtra, India. Wind speed exhibits non-stationarity, seasonality and time-varying volatility clustering. Univariate linear and non-linear time series techniques namely MSARIMA, MSARIMA-GARCH and MSARIMA-EGARCH have been employed for forecasting wind speed using data span ranging from 3 days to 15 days. Study suggests that mean absolute percentage error (MAPE) values first decrease with the increase in data span, reaches its minima and then start increasing. All models provide superior forecasting performances with 5 days data span. It is further evident that ARIMA-GARCH model generates lowest MAPE with 5 days data span. All these models provide superior forecasts with respect to current industry practices. This study establishes that employing various linear and non-linear time series techniques for forecasting day-ahead wind speed can benefit the industry in terms of better operational management of wind turbines and better integration of wind energy into the power system, which have huge financial implications for wind power generators in India.
机译:这项研究预测了位于印度马哈拉施特拉邦的一台风力涡轮机现场的日间隔15分钟的风速。风速表现出非平稳性,季节性和随时间变化的波动性聚类。使用单变量线性和非线性时间序列技术,即MSARIMA,MSARIMA-GARCH和MSARIMA-EGARCH,使用3天到15天的数据跨度来预测风速。研究表明,平均绝对百分比误差(MAPE)值首先随着数据跨度的增加而减小,达到最小值,然后开始增加。所有模型均提供5天数据跨度的出色预测性能。进一步明显的是,ARIMA-GARCH模型在5天的数据跨度内生成了最低的MAPE。所有这些模型都提供了有关当前行业惯例的出色预测。这项研究表明,采用各种线性和非线性时间序列技术来预测日前风速,可以通过改善风力涡轮机的运行管理以及将风能更好地集成到电力系统中而使行业受益,这对财务产生了巨大的影响用于印度的风力发电机。

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