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Feature selection for accurate short-term forecasting of local wind-speed

机译:功能选择,可准确预测本地风速

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There is increasing demand for accurate short-term forecasting of weather conditions at specified locations. This demand arises partly from the growing numbers of renewable energy facilities. In order successfully to integrate renewable energy supplies with grid sources, the short term (e.g. next 24 hrs) output profile of the renewable system needs to be forecast as accurately as possible, to avoid over-reliance on fossil fuels at times when renewables are available, and to avoid deficit in supply when they aren't. In particular, the inherent variability in wind-speed poses an additional challenge. Several approaches for wind-speed forecasting have previously been developed, ranging from simple time series analysis to the use of a combination of global weather forecasting, computational fluid dynamics and machine learning methods. For localized forecasting, statistical methods that rely on historical location data come to the forefront. Recent such work (building localized forecast models with multivariate linear regression) has found that accuracy can gain significantly by learning from multiple types of local weather features. Here, we build on that work by investigating the potential benefits of simple additional ???derived??? features, such as the gradient in wind-speed or other variables. Following extensive experimentation using data from sites in Nigeria (primarily), Scotland and Italy, we conclude that the ideal forecasting model for a given location will use a judicious combination of direct and derived features.
机译:对指定位置的天气状况进行准确的短期预报的需求不断增长。这种需求部分是由于可再生能源设施的数量不断增长。为了成功地将可再生能源与电网资源整合在一起,需要尽可能准确地预测可再生能源系统的短期(例如接下来的24小时)输出情况,以避免在可再生能源可用时过度依赖化石燃料的情况,并在供应商没有供应时避免供应不足。特别地,风速的固有变化性带来了另外的挑战。以前已经开发了几种风速预测方法,从简单的时间序列分析到结合使用全球天气预报,计算流体动力学和机器学习方法。对于本地化预测,依靠历史位置数据的统计方法走在前列。最近的此类工作(使用多元线性回归构建本地化的预测模型)发现,可以通过从多种类型的本地天气特征中学习来显着提高准确性。在这里,我们通过研究简单的额外“衍生”的潜在收益来建立这项工作。特征,例如风速梯度或其他变量。在使用来自尼日利亚(主要是),苏格兰和意大利的站点的数据进行广泛的实验之后,我们得出结论,对于给定位置的理想预测模型将使用直接特征和派生特征的明智组合。

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