Genetic optimization of a self organizing fuzzy-neural network for load forecasting

P. Dash, S. Mishra, S. Dash, A. Liew
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引用次数: 18

Abstract

In this paper a self-organizing fuzzy-neural network with a new learning mechanism and rule optimization using genetic algorithm (GA) is proposed for load forecasting. The number of rules in the inferencing layer is optimized using a genetic algorithm and an appropriate fitness function. We devise a learning algorithm for updating the connecting weights as well as the structure of the membership functions of the network. The proposed algorithm exploits the notion of error back propagation. The network weights are initialized with random weights instead of any preselected ones. The performance of the network is validated by extensive simulation results using practical data ranging over a period of two years. The optimized fuzzy neural network provides an accurate prediction of electrical load in a time frame varying from 24 to 168 hours ahead. The algorithm is adaptive and performs much better than the existing ANN techniques used for load forecasting.
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负荷预测的自组织模糊神经网络遗传优化
本文提出了一种具有新的学习机制和遗传算法优化规则的自组织模糊神经网络用于负荷预测。使用遗传算法和适当的适应度函数优化推理层规则的数量。我们设计了一种学习算法来更新网络的连接权值以及隶属函数的结构。该算法利用了误差反向传播的概念。使用随机权重初始化网络权重,而不是使用任何预先选择的权重。利用两年多的实际数据进行了大量的仿真,验证了网络的性能。优化后的模糊神经网络可以在24到168小时的时间范围内准确预测电力负荷。该算法具有较强的自适应能力,比现有的负荷预测人工神经网络技术性能要好得多。
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