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Stochastic optimization of power market forecast using non-parametric regression models

机译:使用非参数回归模型的电力市场预测随机优化

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The paper considers stochastic optimization of the electricity procurement in the day-ahead power market. The novelty is in addressing the random errors of time series forecasting of electrical power loads and prices in the procurement. This problem is currently important because of the increased random variability in the power grid that is caused by growing integration of renewable generation. This paper presents a methodology for stochastic optimization using data-driven models. We consider non-parametric models of multivariate distributions based on multiple quantile regressions, built from historical data sets. The statistics, such as cost expectation, required for the stochastic optimization are computed numerically using these models. Applying the methodology to utility data shows that 2% improvement of the costs is feasible.
机译:本文考虑了日前电力市场中电力采购的随机优化。新颖之处在于解决采购中电力负荷和价格的时间序列预测的随机误差。由于由于可再生能源发电的一体化而引起的电网随机波动性的增加,该问题目前很重要。本文提出了一种使用数据驱动模型进行随机优化的方法。我们考虑基于历史数据集构建的基于多分位数回归的多元分布的非参数模型。使用这些模型以数值方式计算了随机优化所需的统计数据(例如成本预期)。将方法应用于公用事业数据表明,将成本降低2%是可行的。

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