Identifying Spikes and Seasonal Components in Electricity Spot Price Data: A Guide to Robust Modeling

J. Janczura, S. Trück, R. Weron, R. Wolff
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引用次数: 200

Abstract

An important issue in fitting stochastic models to electricity spot prices is the estimation of a component to deal with trends and seasonality in the data. Unfortunately, estimation routines for the long-term and short-term seasonal pattern are usually quite sensitive to extreme observations, known as electricity price spikes. Improved robustness of the model can be achieved by (a) filtering the data with some reasonable procedure for outlier detection, and then (b) using estimation and testing procedures on the filtered data. In this paper we examine the effects of different treatments of extreme observations on model estimation and on determining the number of spikes (outliers). In particular we compare results for the estimation of the seasonal and stochastic components of electricity spot prices using either the original or filtered data. We find significant evidence for a superior estimation of both the seasonal short-term and long-term components when the data have been treated carefully for outliers. Overall, our findings point out the substantial impact the treatment of extreme observations may have on these issues and, therefore, also on the pricing of electricity derivatives like futures and option contracts. An added value of our study is the ranking of different filtering techniques used in the energy economics literature, suggesting which methods could be and which should not be used for spike identification.
识别电力现货价格数据中的峰值和季节性成分:鲁棒建模指南
在拟合电力现货价格的随机模型中,一个重要的问题是对数据中趋势和季节性成分的估计。不幸的是,长期和短期季节模式的估计程序通常对极端观测非常敏感,即电价峰值。提高模型的鲁棒性可以通过(a)使用一些合理的异常值检测程序对数据进行过滤,然后(b)对过滤后的数据使用估计和测试程序来实现。在本文中,我们研究了极端观测的不同处理对模型估计和确定尖峰(异常值)数量的影响。特别是,我们比较了使用原始数据或过滤数据对电力现货价格的季节性和随机成分的估计结果。我们发现重要的证据表明,当数据被仔细处理为异常值时,对季节性短期和长期成分的估计都很好。总体而言,我们的研究结果指出,极端观察的处理可能对这些问题产生重大影响,因此也对期货和期权合约等电力衍生品的定价产生重大影响。我们研究的一个附加价值是对能源经济学文献中使用的不同过滤技术进行排名,表明哪些方法可以用于峰值识别,哪些不应该用于峰值识别。
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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