Electricity Spot Prices Forecasting Using Stochastic Volatility Models

Andrei Renatovich Batyrov
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Abstract

There are several approaches to modeling and forecasting time series as applied to prices of commodities and financial assets. One of the approaches is to model the price as a non-stationary time series process with heteroscedastic volatility (variance of price). The goal of the research is to generate probabilistic forecasts of day-ahead electricity prices in a spot marker employing stochastic volatility models. A typical stochastic volatility model - that treats the volatility as a latent stochastic process in discrete time - is explored first. Then the research focuses on enriching the baseline model by introducing several exogenous regressors. A better fitting model - as compared to the baseline model - is derived as a result of the research. Out-of-sample forecasts confirm the applicability and robustness of the enriched model. This model may be used in financial derivative instruments for hedging the risk associated with electricity trading. Keywords: Electricity spot prices forecasting, Stochastic volatility, Exogenous regressors, Autoregression, Bayesian inference, Stan
利用随机波动模型预测电力现货价格
商品和金融资产价格的时间序列建模和预测有多种方法。其中一种方法是将价格建模为具有异速波动(价格方差)的非平稳时间序列过程。本研究的目标是利用随机波动率模型对现货市场的日前电价进行概率预测。首先探讨了一个典型的随机波动率模型,该模型将波动率视为离散时间的潜在随机过程。然后,研究重点是通过引入几个外生回归因子来丰富基线模型。与基线模型相比,研究得出了一个拟合度更高的模型。样本外预测证实了丰富模型的适用性和稳健性。该模型可用于金融衍生工具,以对冲与电力交易相关的风险。关键词电力现货价格预测 随机波动性 外生回归自回归 贝叶斯推断 斯坦
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