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Pattern-based local linear regression models for short-term load forecasting

机译:基于模式的局部线性回归模型用于短期负荷预测

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In this paper univariate models for short-term load forecasting based on linear regression and patterns of daily cycles of load time series are proposed. The patterns used as input and output variables simplify the forecasting problem by filtering out the trend and seasonal variations of periods longer than the daily one. The nonstationarity in mean and variance is also eliminated. The simplified relationship between variables (patterns) is modeled locally in the neighborhood of the current input using linear regression. The load forecast is constructed from the forecasted output pattern and the current values of variables describing the load time series. The proposed stepwise and lasso regressions reduce the number of predictors to a few. In the principal components regression and partial least-squares regression only one predictor is used. This allows us to visualize the data and regression function. The performances of the proposed methods were compared with that of other models based on ARIMA, exponential smoothing, neural networks and Nadaraya-Watson estimator. Application examples confirm valuable properties of the proposed approaches and their high accuracy. (C) 2015 Elsevier B.V. All rights reserved.
机译:本文提出了基于线性回归的单变量短期负荷预测模型和负荷时间序列的日周期模式。用作输入和输出变量的模式通过滤除长于每日时段的趋势和季节变化来简化预测问题。均值和方差的非平稳性也被消除。使用线性回归在当前输入附近对变量(模式)之间的简化关系进行局部建模。负荷预测是根据预测的输出模式和描述负荷时间序列的变量的当前值构建的。建议的逐步回归和套索回归将预测变量的数量减少到几个。在主成分回归和偏最小二乘回归中,仅使用一个预测变量。这使我们可以可视化数据和回归函数。将该方法的性能与基于ARIMA,指数平滑,神经网络和Nadaraya-Watson估计量的其他模型的性能进行了比较。应用实例证实了所提出方法的有价值的性质及其高精度。 (C)2015 Elsevier B.V.保留所有权利。

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