Kohonen网络在短期负荷预测中的应用

Timo Baumann, A. Germond
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引用次数: 32

摘要

本文分析了Kohonen自组织特征映射在日电力负荷短期预测中的应用。本文的目的是研究Kohonen自组织特征映射用于电力负荷分类的可行性。该网络不仅以无监督的方式“学习”负载模式的相似性,而且还使用存储在Kohonen网络权重向量中的信息来预测未来的负载。利用实际系统几个月的小时负荷数据对网络进行训练,并对一个月两个时段的日负荷进行预测,对结果进行了评价。然后,通过添加第二种类型的神经网络对先前用Kohonen网络计算的负荷进行天气敏感校正,改进了该方法。第二种类型的网络是单层线性增量规则网络。
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Application of the Kohonen network to short-term load forecasting
This paper analyses the application of Kohonen's self-organizing feature map to short-term forecasting of daily electrical load. The aim of the paper is to study the feasibility of the Kohonen's self-organizing feature maps for the classification of electrical loads. The network not only 'learns' similarities of load patterns in a unsupervised manner, but it uses the information stored in the weight vectors of the Kohonen network to forecast the future load. The results are evaluated by using several months of hourly load data of a real system to train the network, and forecasting the daily loads for two periods of one month. The method is then improved by adding a second type of neural network for weather sensitive correction of the load previously calculated with the Kohonen network. This second type of network is a one-layered linear delta rule network.<>
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