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Improved constructive learning algorithms for fuzzy inference system identification

机译:用于模糊推理系统辨识的改进构造学习算法

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This paper presents an improved constructive learning algorithm for fuzzy inference system identification. An incremental training procedure that starts with a single pattern and a single-fuzzy rule has been used: if after several attempts, the fuzzy model cannot reduce the error within the specified tolerance; it grows by adding a new fuzzy rule. In order to overcome the over-training problem and to ameliorate the performance of the previous algorithm, two techniques of reduction have been introduced. In the first one, the growing of the fuzzy rules is conditioned by the generalisation error. In the second approach, a technique based on the similarity measures has been applied. The presented approaches have been applied for two examples to show the identification performance.
机译:本文提出了一种改进的构造学习算法,用于模糊推理系统的辨识。已经使用了以单一模式和单一模糊规则开始的增量训练过程:如果经过多次尝试,模糊模型无法将误差减小到指定的容差范围内;它通过添加新的模糊规则而增长。为了克服训练过度的问题并改善先前算法的性能,引入了两种归约技术。在第一个中,模糊规则的增长是由泛化误差决定的。在第二种方法中,已经应用了基于相似性度量的技术。提出的方法已应用于两个示例以显示识别性能。

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