摘要
给出了一种预测混沌时间序列的模糊神经网络及其学习方法,给出的方法能直接从数据中提取模糊规则,经过优化得到最佳模糊规则库,并利用神经网络的自学习功能修改隶属函数的参数和网络的权值,减少了规则的匹配过程,加快了推理速度,增强了网络的自适应能力.使用该神经网络及其学习方法对Lorenz混沌时间序列进行了预测仿真研究,试验结果表明给出的预测工具和方法是有效的.
A neuro-fuzzy approach based on a novel hybrid learning method is presented, which can generate the best fuzzy rule set automatically from the desired input-output data pairs only and can give the initial neuro-fuzzy system and the initial parameters of fuzzy membership functions. Then the parameters of fuzzy membership functions and the weights can be easily tuned by employing neural network's self-learning techniques. This approach reduces the rule matching time and accelerates the speed of the fuzzy logic referencing and improves the adaptability of the neuro-fuzzy system. Using the proposed neuro-fuzzy system and the learning algorithms we simulated the prediction of the Lorenz chaotic time series, the results demonstrate the effectiveness of the chaotic time series prediction approach.
出处
《物理学报》
SCIE
EI
CAS
CSCD
北大核心
2005年第11期5034-5038,共5页
Acta Physica Sinica