The Influence of Renewables on Electricity Price Forecasting: A Robust Approach

L. Grossi, F. Nan
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引用次数: 42

Abstract

In this paper a robust approach to modelling electricity spot prices is introduced. Differently from what has been recently done in the literature on electricity price forecasting, where the attention has been mainly drawn by the prediction of spikes, the focus of this contribution is on the robust estimation of nonlinear SETARX models (Self-Exciting Threshold Auto Regressive models with eXogenous regressors). In this way, parameters estimates are not, or very lightly, influenced by the presence of extreme observations and the large majority of prices, which are not spikes, could be better forecasted. A Monte Carlo study is carried out in order to select the best weighting function for Generalized M-estimators of SETAR processes. A robust procedure to select and estimate nonlinear processes for electricity prices is introduced, including robust tests for stationarity and nonlinearity and robust information criteria. The application of the procedure to the Italian electricity market reveals the forecasting superiority of the robust GM-estimator based on the polynomial weighting function respect to the non-robust Least Squares estimator. Finally, the introduction of external regressors in the robust estimation of SETARX processes contributes to the improvement of the forecasting ability of the model.
可再生能源对电价预测的影响:一个稳健的方法
本文介绍了一种建立电力现货价格模型的鲁棒方法。与最近在电价预测文献中所做的不同,其中的注意力主要集中在尖峰的预测上,这一贡献的重点是非线性SETARX模型(带有外生回归量的自激阈值自回归模型)的鲁棒估计。通过这种方式,参数估计不会或非常轻微地受到极端观测值的影响,并且可以更好地预测绝大多数不是峰值的价格。为了选择SETAR过程广义m估计的最佳加权函数,采用蒙特卡罗方法进行了研究。介绍了一种选择和估计电价非线性过程的鲁棒方法,包括稳健性和非线性检验以及稳健性信息准则。通过对意大利电力市场的应用,揭示了基于多项式加权函数的稳健gm估计量相对于非稳健最小二乘估计量的预测优势。最后,在SETARX过程的稳健估计中引入外部回归因子有助于提高模型的预测能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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