基于粗糙集和改进支持向量机的短期电价预测

Jinyu Tian, Yan Lin
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引用次数: 10

摘要

提出了一种基于粗糙集和改进支持向量机的短期电价预测模型。首先,利用粗糙集方法得到无信息损失的约简信息表;然后利用这些约简信息制定分类规则和训练支持向量机,同时利用粒子群算法对参数进行优化。通过对比BP神经网络和我们的方法的实验,验证了我们方法的有效性。
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Short-Term Electricity Price Forecasting Based on Rough Sets and Improved SVM
a novel model was proposed for short-term electricity price forecasting based on Rough set approach and improved Support Vector Machines¿SVM¿. Firstly, we can get reduced information table with no information loss by Rough set approach. And then, this reduced information is used to develop classification rules and train SVM, at the same time, we make use of the Particle Swarm Optimization to optimize the parameters. The effectiveness of our methodology was verified by experiments comparing BP neural networks with our approach.
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