We examine the problem of modeling and forecasting European Day-Ahead and Month-Ahead natural gas prices. For this, we propose two distinct probabilistic models that can be utilized in risk- and portfolio management. We use daily pricing data ranging from 2011 to 2020. Extensive descriptive data analysis shows that both time series feature heavy tails, conditional heteroscedasticity, and show asymmetric behavior in their differences. We propose state-space time series models under skewed, heavy-tailed distributions to capture all stylized facts of the data. They include the impact of autocorrelation, seasonality, risk premia, temperature, storage levels, the price of European Emission Allowances, and related fuel prices of oil, coal, and electricity. We provide rigorous model diagnostics and interpret all model components in detail. Additionally, we conduct a probabilistic forecasting study with significance tests and compare the predictive performance against literature benchmarks. The proposed Day-Ahead (Month-Ahead) model leads to a 13% (9%) reduction in out-of-sample continuous ranked probability score (CRPS) compared to the best performing benchmark model, mainly due to adequate modeling of the volatility and heavy tails.
翻译:我们研究欧洲日间和月内天然气价格的模型和预测问题,为此,我们提出两个可用于风险和组合管理的截然不同的概率模型。我们使用2011年至2020年的每日定价数据。广泛的描述性数据分析表明,两个时间序列都具有重尾、有条件的超摄氏度和不对称行为的差异。我们根据扭曲的、重尾分布分布的州-空间时间序列模型,以捕捉数据的所有典型事实。它们包括自动化、季节性、风险溢价、温度、储存水平、欧洲排放津贴价格以及石油、煤炭和电力的相关燃料价格的影响。我们提供严格的模型诊断,并详细解释所有模型组成部分。此外,我们进行概率预测性预测性研究,进行重大测试,对照文献基准比较预测性业绩。拟议的日间(蒙-阿)模型导致13%(9%)的超位连续概率分数减少,主要与最强和最差的模型相比。