Electricity price forecast based on weekly weather forecast and its application to arbitrage in the forward market

Takuji Matsumoto, Misao Endo
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引用次数: 3

Abstract

This study constructs multiple models for forecasting weekly average electricity prices using weekly weather forecasts, and applies it to arbitrage trading in the forward market. In particular, we compare models that used different approaches for forecasting weekly average price and price density, and clarify the following empirical results using the data from Japan Electric Power Exchange (JEPX): 1) Instead of using forecasted temperature directly as an explanatory variable, the two-step forecast method with measured temperature is more likely to reduce the forecast error; 2) Quantile regression has better density forecast accuracy than a GARCH based model; 3) The multiplicative model using the logarithmic price series tends to have higher forecast accuracy than the additive model without logarithmic conversion; 4) Weather forecasts contribute to improving the forecast accuracy of weekly electricity prices and also play an important role in earning profits in forward market trading. The proposed arbitrage trading method can be utilized by many participants in that the strategy can be flexibly changed according to the level of risk tolerance. The existence of considerable arbitrage opportunities in the JEPX forward market, revealed by the empirical results, may have practical implications on attracting traders and stimulating the market.
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基于周天气预报的电价预测及其在远期市场套利中的应用
本文利用每周天气预报构建了多个预测周平均电价的模型,并将其应用于远期市场的套利交易。通过对比不同预测方法对周平均价格和价格密度的预测模型,并利用日本电力交易所(JEPX)的数据阐明了以下实证结果:1)与直接使用预测温度作为解释变量相比,采用实测温度的两步预测方法更有可能降低预测误差;2)分位数回归比基于GARCH的模型具有更好的密度预测精度;3)使用对数价格序列的乘法模型比不进行对数转换的加性模型具有更高的预测精度;4)天气预报有助于提高周电价预测的准确性,在远期市场交易中获取利润也有重要作用。所提出的套利交易方法可以根据风险承受能力的高低灵活地改变交易策略,从而为众多参与者所采用。实证结果显示,JEPX远期市场存在相当大的套利机会,这可能对吸引交易者和刺激市场具有现实意义。
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