基于自组织模糊神经网络的时间序列预测

Ning Wang, Xianyao Meng
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引用次数: 1

摘要

提出了一种新的在线自构造模糊神经网络用于时间序列预测。该方法不仅加快了学习过程,而且构建了一个更简洁的模糊神经网络,同时由于新的生长准则具有生长和修剪的特征,可以达到相当的性能和精度。该学习方案从没有隐藏神经元开始,并随着学习的进行,根据所提出的增长标准吝啬地生成新的隐藏单元。在参数学习阶段,通过扩展卡尔曼滤波(EKF)方法更新隐藏单元的所有自由参数。仿真结果表明,该方法可以提供更快的学习速度和更紧凑的网络结构,并具有相当的泛化性能和精度。
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Time-series prediction using self-organizing fuzzy neural networks
A novel online self-constructing fuzzy neural network is proposed for time-series prediction. The proposed approach not only speeds up the learning process but also builds a more parsimonious fuzzy neural network while comparable performance and accuracy can be achieved since the new growing criteria feature characteristics of growing and pruning. The learning scheme starts with no hidden neurons and parsimoniously generates new hidden units according to the proposed growing criteria as learning proceeds. In the parameter learning phase, all free parameters of hidden units are updated by the extended Kalman filter (EKF) method. Simulation results demonstrate that the proposed approach can provide faster learning speed and more compact network structure with comparable generalization performance and accuracy.
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