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Evaluation of support vector machine based forecasting tool in electricity price forecasting for Australian national electricity market participants

机译:基于支持向量机的预测工具在澳大利亚全国电力市场参与者的电价预测中的评估

摘要

In this paper we present an analysis of the results of a study into wholesale (spot) electricity price forecasting utilising Neural Networks (NNs) and Support Vector Machines (SVM). Frequent regulatory changes in electricity markets and the quickly evolving market participant pricing (bidding) strategies cause efficient retraining to be crucial in maintaining the accuracy of electricity price forecasting models. The efficiency of NN and SVM retraining for price forecasting was evaluated using Australian National Electricity Market (NEM), New South Wales regional data over the period from September 1998 to December 1998. The analysis of the results showed that SVMs with one unique solution, produce more consistent forecasting accuracies and so require less time to optimally train than NNs which can result in a solution at any of a large number of local minima. The SVM and NN forecasting accuracies were found to be very similar.
机译:在本文中,我们对使用神经网络(NN)和支持向量机(SVM)进行批发(现货)电价预测的研究结果进行了分析。电力市场中频繁的监管变化和快速发展的市场参与者定价(招标)策略导致有效的再培训对于维持电价预测模型的准确性至关重要。使用澳大利亚国家电力市场(NEM)在1998年9月至1998年12月期间的新南威尔士州区域数据,对神经网络和SVM再培训进行价格预测的效率进行了评估。结果分析表明,采用一种独特解决方案的SVM可以产生与NN相比,预测准确性更高,一致性更高,因此需要更少的时间来进行最佳训练,这可以在众多局部最小值中获得解决方案。 SVM和NN的预测准确性非常相似。

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