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Multi-step Ahead Forecasts For Electricity Prices Using Narx: A New Approach, A Critical Analysis Of One-step Ahead Forecasts

机译:使用Narx进行电价的多步超前预测:一种新方法,对一步超前预测的批判性分析

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摘要

The prediction of electricity prices is very important to participants of deregulated markets. Among many properties, a successful prediction tool should be able to capture long-term dependencies in market's historical data. A nonlinear autoregressive model with exogenous inputs (NARX) has proven to enjoy a superior performance to capture such dependencies than other learning machines. However, it is not examined for electricity price forecasting so far. In this paper, we have employed a NARX network for forecasting electricity prices. Our prediction model is then compared with two currently used methods, namely the multivariate adaptive regression splines (MARS) and wavelet neural network. All the models are built on the reconstructed state space of market's historical data, which either improves the results or decreases the complexity of learning algorithms. Here, we also criticize the one-step ahead forecasts for electricity price that may suffer a one-term delay and we explain why the mean square error criterion does not guarantee a functional prediction result in this case. To tackle the problem, we pursue multi-step ahead predictions. Results for the Ontario electricity market are presented.
机译:电价的预测对于放松管制的市场参与者非常重要。在许多属性中,成功的预测工具应该能够捕获市场历史数据中的长期依存关系。与其他学习机相比,具有外部输入的非线性自回归模型(NARX)已证明在捕获此类依存关系方面具有优越的性能。但是,到目前为止,尚未对电价预测进行检查。在本文中,我们采用了NARX网络来预测电价。然后将我们的预测模型与两种当前使用的方法进行比较,即多元自适应回归样条(MARS)和小波神经网络。所有模型都建立在市场历史数据的重构状态空间上,从而改善了结果或降低了学习算法的复杂性。在这里,我们还批评了可能会经历一个时延的电价提前一步预测,并解释了为何均方误差标准不能保证这种情况下的功能预测结果。为了解决这个问题,我们进行了多步预测。介绍了安大略省电力市场的结果。

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