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Using fuzzy partitions to create fuzzy systems from input-output data and set the initial weights in a fuzzy neural network

机译:使用模糊分区从输入输出数据创建模糊系统,并在模糊神经网络中设置初始权重

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摘要

We create a set of fuzzy rules to model a system from input-output data by dividing the input space into a set of subspaces using fuzzy partitions. We create a fuzzy rule for each subspace as the input space is being divided. These rules are combined to produce a fuzzy rule based model from the input-output data. If more accuracy is required, we use the fuzzy rule-based model to determine the structure and set the initial weights in a fuzzy neural network. This network typically trains in a few hundred iterations. Our method is simple, easy, and reliable and it has worked well when modeling large "real world" systems.
机译:我们创建了一组模糊规则,通过使用模糊分区将输入空间划分为一组子空间,从而根据输入输出数据对系统进行建模。当输入空间被划分时,我们为每个子空间创建一个模糊规则。这些规则被组合以从输入-输出数据产生基于模糊规则的模型。如果需要更高的精度,我们使用基于模糊规则的模型来确定结构并在模糊神经网络中设置初始权重。该网络通常进行数百次迭代训练。我们的方法简单,容易且可靠,并且在对大型“现实世界”系统建模时效果很好。

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