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Optimization of ensemble neural networks with type-2 fuzzy response integration for predicting the Mackey-Glass time series

机译:用于预测Mackey-Glass时间序列的2型模糊响应集成的集合神经网络优化

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This paper describes the optimization of an ensemble neural network with fuzzy integration of responses based on type-1 and type-2 fuzzy logic. Genetic algorithms are used as a method of optimization for the ensemble model in this case of study. The time series that is being considered is the Mackey-Glass benchmark. Simulation results show that the ensemble approach produces good prediction of the Mackey-Glass time series.
机译:本文介绍了基于1型和类型模糊逻辑的响应模糊集成的集合神经网络的优化。 在这种研究的情况下,遗传算法用作合成模型的优化方法。 正在考虑的时间序列是Mackey-Glass基准。 仿真结果表明,集合方法产生了对Mackey-Glass时间序列的良好预测。

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