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首页> 外文期刊>IEEE transactions on systems, man and cybernetics. Part C, Applications and reviews >A Hybrid of Cooperative Particle Swarm Optimization and Cultural Algorithm for Neural Fuzzy Networks and Its Prediction Applications
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A Hybrid of Cooperative Particle Swarm Optimization and Cultural Algorithm for Neural Fuzzy Networks and Its Prediction Applications

机译:神经网络的混合粒子群优化与文化算法混合及其预测应用

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摘要

This study presents an evolutionary neural fuzzy network, designed using the functional-link-based neural fuzzy network (FLNFN) and a new evolutionary learning algorithm. This new evolutionary learning algorithm is based on a hybrid of cooperative particle swarm optimization and cultural algorithm. It is thus called cultural cooperative particle swarm optimization (CCPSO). The proposed CCPSO method, which uses cooperative behavior among multiple swarms, can increase the global search capacity using the belief space. Cooperative behavior involves a collection of multiple swarms that interact by exchanging information to solve a problem. The belief space is the information repository in which the individuals can store their experiences such that other individuals can learn from them indirectly. The proposed FLNFN model uses functional link neural networks as the consequent part of the fuzzy rules. This study uses orthogonal polynomials and linearly independent functions in a functional expansion of the functional link neural networks. The FLNFN model can generate the consequent part of a nonlinear combination of input variables. Finally, the proposed FLNFN with CCPSO (FLNFN-CCPSO) is adopted in several predictive applications. Experimental results have demonstrated that the proposed CCPSO method performs well in predicting the time series problems.
机译:本研究提出了一种进化神经模糊网络,它是使用基于功能链接的神经模糊网络(FLNFN)和一种新的进化学习算法设计的。这种新的进化学习算法基于协作粒子群优化和文化算法的混合。因此,它被称为文化合作粒子群优化(CCPSO)。提出的CCPSO方法利用多个群体之间的协作行为,可以利用置信空间增加全局搜索能力。合作行为涉及多个群体的集合,这些群体通过交换信息来解决问题而进行交互。信念空间是一个信息库,个人可以在其中存储他们的经历,以便其他人可以间接地向他们学习。所提出的FLNFN模型使用功能链接神经网络作为模糊规则的后续部分。这项研究在功能链接神经网络的功能扩展中使用了正交多项式和线性独立的函数。 FLNFN模型可以生成输入变量的非线性组合的结果部分。最后,在一些预测性应用中采用了带有CCPSO的拟议FLNFN(FLNFN-CCPSO)。实验结果表明,所提出的CCPSO方法在预测时间序列问题方面表现良好。

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