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Composite forecasting approach, application for next-day electricity price forecasting

机译:综合预测方法,应用于次日电价预测

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Accurate forecasting of electricity prices can provide significant benefits to energy suppliers when allocating their assets and to energy consumers for defining an optimal portfolio. There are numerous methods that efficiently support the forecasting of time series, such as electricity prices, which have high volatility. However, the performance of these approaches varies depending on data sets and operational conditions. In this work, the concept of composite forecasting is presented and implemented in a retrospective study, in real industrial forecasting conditions to show the potential of forecast performance improvement and comparable high consistency of a forecast performance across different 'Day Peak' and-Day Base' electricity price data sets for different seasons. As individual methods support vector regression, artificial neural networks and ridge regression are implemented. The forecast performances of these methods are evaluated and compared with their forecast combination using different error measures. The results show that composite forecasting processes with 'inverse root mean squared error' combination approach can generate, on average, a more accurate and robust forecast than using an individual methods or other combination schemas. (C) 2017 Elsevier B.V. All rights reserved.
机译:准确预测电价可为能源供应商分配资产和为能源消费者定义最佳投资组合带来显着收益。有许多方法可以有效地支持时间序列的预测,例如电价,它们具有很高的波动性。但是,这些方法的性能取决于数据集和操作条件。在这项工作中,在实际工业预测条件下的回顾性研究中提出并实施了复合预测的概念,以显示预测性能改进的潜力以及不同“日高峰”和“日基”之间的预测性能具有相当高的一致性。不同季节的电价数据集。由于个别方法支持向量回归,因此实现了人工神经网络和岭回归。对这些方法的预测性能进行评估,并使用不同的误差度量将其与预测组合进行比较。结果表明,与使用单个方法或其他组合方案相比,采用“反均方根误差”组合方法的组合预测过程平均可以生成更准确,更可靠的预测。 (C)2017 Elsevier B.V.保留所有权利。

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