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首页> 外文期刊>Journal of applied statistics >Functional time series approach for forecasting very short-term electricity demand
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Functional time series approach for forecasting very short-term electricity demand

机译:功能时间序列方法可预测非常短期的电力需求

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摘要

This empirical paper presents a number of functional modelling and forecasting methods for predicting very short-term (such as minute-by-minute) electricity demand. The proposed functional methods slice a seasonal univariate time series (TS) into a TS of curves; reduce the dimensionality of curves by applying functional principal component analysis before using a univariate TS forecasting method and regression techniques. As data points in the daily electricity demand are sequentially observed, a forecast updating method can greatly improve the accuracy of point forecasts. Moreover, we present a non-parametric bootstrap approach to construct and update prediction intervals, and compare the point and interval forecast accuracy with some naive benchmark methods. The proposed methods are illustrated by the half-hourly electricity demand from Monday to Sunday in South Australia.
机译:该经验论文提出了许多功能模型和预测方法,用于预测非常短期(如分钟到分钟)的电力需求。所提出的功能方法将季节性单变量时间序列(TS)分割为曲线的TS;在使用单变量TS预测方法和回归技术之前,先通过应用功能主成分分析来降低曲线的维数。通过依次观察日常用电需求中的数据点,预测更新方法可以大大提高点预测的准确性。此外,我们提出了一种非参数自举方法来构造和更新预测间隔,并将点和间隔的预测精度与某些简单的基准方法进行比较。南澳州周一至周日半小时的用电需求说明了所建议的方法。

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