IEEE Trans Neural Netw Learn Syst. 2014 May;25(5):959-69. doi: 10.1109/TNNLS.2013.2284603.
This paper describes a self-evolving interval type-2 fuzzy neural network (FNN) for various applications. As type-1 fuzzy systems cannot effectively handle uncertainties in information within the knowledge base, we propose a simple interval type-2 FNN, which uses interval type-2 fuzzy sets in the premise and the Takagi-Sugeno-Kang (TSK) type in the consequent of the fuzzy rule. The TSK-type consequent of fuzzy rule is a linear combination of exogenous input variables. Given an initially empty the rule-base, all rules are generated with on-line type-2 fuzzy clustering. Instead of the time-consuming K-M iterative procedure, the design factors ql and qr are learned to adaptively adjust the upper and lower positions on the left and right limit outputs, using the parameter update rule based on a gradient descent algorithm. Simulation results demonstrate that our approach yields fewer test errors and less computational complexity than other type-2 FNNs.
本文描述了一种用于各种应用的自进化区间型 2 模糊神经网络 (FNN)。由于 1 型模糊系统不能有效地处理知识库内信息的不确定性,因此我们提出了一种简单的区间型 2 FNN,它在模糊规则的前提中使用区间型 2 模糊集,在结论中使用 Takagi-Sugeno-Kang (TSK) 型。模糊规则的 TSK 型结论是外生输入变量的线性组合。在初始为空的规则库中,所有规则都通过在线型 2 模糊聚类生成。与耗时的 K-M 迭代过程不同,使用基于梯度下降算法的参数更新规则,可以自适应地学习设计因子 ql 和 qr,以调整左右极限输出的上下位置。仿真结果表明,与其他类型 2 FNN 相比,我们的方法产生的测试误差更少,计算复杂度更低。