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Temperature Forecasting Based on the Multi-agent Adaptive Fuzzy Neuronet

机译:基于多助剂自适应模糊神经元的温度预测

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This article presents a multi-agent adaptive fuzzy neuronet for average monthly ambient temperature forecasting. We fulfilled the agents of the MAFN based on neural networks. The automatic generation of the of the neuronet parameters of the optimal architecture is the most complex task. Due to train the optimum multi-agent adaptive fuzzy neuronet we modified the Ant Lion Optimizer and combined it with the Levenberg-Marquardt algorithm. We first applied the modified ALO to globally optimize the multi-agent adaptive fuzzy network's structure in multi-dimensional space, and then we elaborated the Levenberg-Marquardt algorithm to speed up the convergence process. We generated an optimum multi-agent adaptive fuzzy neuronet architecture from the obtained global optimum which represented the MAFN optimum architecture's parameters. The simulation results show that the proposed training algorithm outperforms the modified Ant Lion Optimizer and Levenberg-Marquardt algorithms in training the optimum multi-agent adaptive fuzzy neuronet for average monthly ambient temperature forecasting.
机译:本文介绍了一个多种Agent自适应模糊神经元,平均每月环境温度预测。我们根据神经网络满足了MAFN的代理。最佳架构的神经元参数的自动生成是最复杂的任务。由于培训了最佳的多助手自适应模糊神经元,我们修改了蚂蚁狮子优化器并将其与Levenberg-Marquardt算法组合。我们首先将修改的alo应用于全局优化多代理自适应模糊网络在多维空间中的结构,然后我们详细说明了Levenberg-Marquardt算法加快了收敛过程。我们从所获得的全局最优的全局最优产生最佳的多代理自适应模糊神经元架构,它代表了MAFN优化架构的参数。仿真结果表明,建议的训练算法优于改进的蚂蚁狮子优化器和Levenberg-Marquardt算法,训练了平均每月环境温度预测的最佳多剂量自适应模糊神经元。

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