基于Kohonen神经网络的伊朗电网短期负荷预测新模型

M. Farhadi, S. M. Moghaddas-Tafreshi
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引用次数: 10

摘要

本文提出了一种利用两个Kohonen神经网络(KNNs)进行电力系统日负荷曲线短期预测的新模型。该模型对温度等大气因子敏感。此外,它还能够预测正常和不正常的日子,如节日,仪式,宗教等,具有很高的准确性。在一周中的每一天、特殊假日、特殊假日前和特殊假日后分别考虑10个模型进行预测,每个模型的结构采用两个knn。利用伊朗电网和MAD在2002年、2003年和2004年非特殊日的负荷和温度信息分别为1.73%、1.68%和1.57%,对该模型进行了测试。性能研究结果表明,该模型具有较高的精度
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A Novel Model for Short Term Load Forecasting of Iran Power Network by Using Kohonen Neural Networks
This paper presents a novel model for short term forecasting of daily electrical load curve in power systems by using of two Kohonen neural networks (KNNs).The proposed model is sensitive to atmospheric factors such as temperature. In addition it is able to forecast normal and abnormal days of year such as holidays, ceremonies, religious and etc, with high accuracy. Ten models are considered for forecasting each day of week, special holidays, the days before special holidays and the days after special holidays .In structure of each model, two KNNs are used. This model is tested with load and temperature information of Iran power network and MAD for non special days at years of 2002, 2003 and 2004 is 1.73%, 1.68% and 1.57% . Performance studies results show that the proposed model is very accurate
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