多函数逼近——非对称复杂模糊推理系统的一种新方法

Chia-Hao Tu, Chunshien Li
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引用次数: 1

摘要

本文提出了一种非对称复杂模糊推理系统(ACFIS),从两个方面对传统模糊推理系统进行了改进。首先,该模型采用了新颖的类神经网络目标部件,使模型在参数的模型尺寸和简洁的非对称结构方面具有灵活性。其次,利用增强复模糊集(ecfs)将隶属度从单个实值状态扩展到复值向量状态;因此,ACFIS具有同时预测多个目标的能力。此外,采用粒子群算法(PSO)和递推最小二乘估计(RLSE)相结合的混合学习算法对模型进行优化。为了测试所提出的方法,我们使用一个单一模型进行了四函数近似实验,只有10次重复试验。实验结果表明,该系统具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiple Function Approximation - A New Approach Using Asymmetric Complex Fuzzy Inference System
This paper proposes an asymmetric complex fuzzy inference system (ACFIS) that improves a conventional fuzzy inference system (FIS) in two ways. First, the proposed model uses the novel neural-net-like aim–object parts, making the model flexible, in terms of model size of parameters and terse asymmetric structure. Second, the enhanced complex fuzzy sets (ECFSs) are used to expand membership degree from a single real-valued state to complex-valued vector state. Hence, the ACFIS can have the ability to predict multiple targets simultaneously. In addition, a hybrid learning algorithm, combining the particle swarm optimization (PSO) and the recursive least-square estimator (RLSE), is utilized to optimize the proposed model. To test the proposed approach, we did experimentation on four-function approximation using one single model only with 10 repeated trails. Based on the experimental results, the ACFIS has shown excellent performance.
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