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Performance evaluation of single SVM and LSSVM based forecasting models using price zones analysis

机译:使用价格区域分析对基于SVM和LSSVM的单个预测模型进行性能评估

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According to the current electricity price forecasting studies, it was very difficult to conclude whether support vector machine (SVM) or least squares support vector machine (LSSVM) is more suitable in solving highly non-linear regression problems with very large time horizon such as mid-term electricity market clearing price (MCP) forecasting. In this paper, a detailed evaluation process using price zones analysis technique is applied in evaluating single SVM and single LSSVM based mid-term electricity MCP forecasting models. Based on much more detailed performance evaluation results and consideration of requirements for machine learning techniques utilizing in longer time horizon and highly nonlinear questions, the proposed paper concluded that SVM is more suitable than LSSVM in mid-term electricity MCP forecasting. Numerical examples using PJM interconnection data are utilized to illustrate the conclusion.
机译:根据当前的电价预测研究,很难下结论是支持向量机(SVM)还是最小二乘支持向量机(LSSVM)更适合解决具有很大时间跨度(例如中期)的高度非线性回归问题电力市场清算价格(MCP)预测。在本文中,使用价格区分析技术的详细评估过程被应用于评估基于单一电力支持向量机和基于单一LSSVM的中期电力MCP预测模型。基于更详细的性能评估结果,并考虑了较长时间范围内和高度非线性问题中对机器学习技术的要求,该论文得出结论,在中期电力MCP预测中,SVM比LSSVM更合适。利用PJM互连数据的数值示例来说明结论。

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