Price Forecasting of Japan Electric Power Exchange using Time-varying AR Model

K. Ofuji, S. Kanemoto
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引用次数: 9

Abstract

In this article, we built a state space model to analyze the price time series in Japan electric power exchange(JEPX) spot market. In building the model, we aimed to achieve the following two goals that the model was able to a) forecast prices with reasonable accuracy, and b) understand the underlying market dynamics by decomposing the price time series into a reasonable set of contributing factors. To capture the time-variability of the contributing factors to price, self-AR(autoregressive) process was introduced to allow continuous change in the magnitude of influence from each explanatory variable. To estimate the model, Kalman Filter algorithm was applied for stepwise recursive estimation. After optimizing the model under the maximum likelihood method(MLM) coupled with minimum AIC(Akaike information criteria) conditions, the model was able to decompose the 15:00-15:30 JEPX spot electricity strip price into a couple of the most contributing factors with significant time-dependencies. Our model also yielded as good a forecasting accuracy with conventional AR econometric model estimated with ordinary least square method(OLS), with a squared error of about 1.12 [yen/kWh] per forecasting period.
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基于时变AR模型的日本电力交易所价格预测
本文建立状态空间模型,对日本电力交易所(JEPX)现货市场的价格时间序列进行分析。在构建模型时,我们旨在实现以下两个目标,即模型能够a)以合理的准确性预测价格,以及b)通过将价格时间序列分解为一组合理的促成因素来理解潜在的市场动态。为了捕捉价格贡献因素的时间变异性,引入了自回归(自回归)过程,以允许每个解释变量的影响程度连续变化。为了对模型进行估计,采用卡尔曼滤波算法进行逐步递归估计。在最大似然法(MLM)和最小AIC(Akaike information criteria)条件下对模型进行优化后,该模型能够将15:00-15:30 JEPX现货电价分解为几个贡献最大且具有显著时间依赖性的因素。我们的模型也产生了与传统AR计量经济模型(用普通最小二乘法(OLS)估计)相同的预测精度,每个预测期的平方误差约为1.12[日元/千瓦时]。
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