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Prediction interval estimation for wind farm power generation forecasts using support vector machines

机译:使用支持向量机的风电场发电量预测的预测间隔估计

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Accurate forecasting of wind power generation is quite an important as well as challenging task for the system operators and market participants due to its high uncertainty. It is essential to quantify uncertainties associated with wind power generation forecasts for their efficient application in optimal management of wind farms and integration into power systems. Prediction intervals (PIs) are well known statistical tools which are used to quantify the uncertainty related to forecasts by estimating the ranges of the future target variables. This paper investigates the application of a novel support vector machine based methodology to directly estimate the lower and upper bounds of the PIs without expensive computational burden and inaccurate assumptions about the distribution of the data. The efficiency of the method for uncertainty quantification is examined using monthly data from a wind farm in Australia. PIs for short term application are generated with a confidence level of 90%. Experimental results confirm the ability of the method in constructing reliable PIs without resorting to complex computational methods.
机译:风力发电的准确预测对于系统运营商和市场参与者来说是非常重要且具有挑战性的任务,因为它具有很高的不确定性。必须量化与风力发电量预测相关的不确定性,以将其有效地应用于风电场的最佳管理和与电力系统的集成中。预测间隔(PI)是众所周知的统计工具,用于通过估计未来目标变量的范围来量化与预测有关的不确定性。本文研究了一种基于新型支持向量机的方法的应用,该方法可直接估算PI的上下限,而无需付出昂贵的计算负担和关于数据分布的不正确假设。使用来自澳大利亚风电场的每月数据检查不确定性量化方法的效率。短期应用的PI的置信度为90%。实验结果证实了该方法在不依靠复杂计算方法的情况下构造可靠PI的能力。

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