A Self Adaptive Incremental Learning Fuzzy Neural Network Based on the Influence of a Fuzzy Rule

Author(s):  
Hu Rong ◽  
Xia Ye ◽  
Xu Xiang
2015 ◽  
Vol 2015 ◽  
pp. 1-9 ◽  
Author(s):  
Yuxian Zhang ◽  
Song Li ◽  
Xiaoyi Qian ◽  
Jianhui Wang

The quality index model in slashing process is difficult to build by reason of the outliers and noise data from original data. To the above problem, a fuzzy neural network based on non-Euclidean distance clustering is proposed in which the input space is partitioned into many local regions by the fuzzy clustering based on non-Euclidean distance so that the computation complexity is decreased, and fuzzy rule number is determined by validity function based on both the separation and the compactness among clusterings. Then, the premise parameters and consequent parameters are trained by hybrid learning algorithm. The parameters identification is realized; meanwhile the convergence condition of consequent parameters is obtained by Lyapunov function. Finally, the proposed method is applied to build the quality index model in slashing process in which the experimental data come from the actual slashing process. The experiment results show that the proposed fuzzy neural network for quality index model has lower computation complexity and faster convergence time, comparing with GP-FNN, BPNN, and RBFNN.


Computation ◽  
2020 ◽  
Vol 8 (1) ◽  
pp. 6
Author(s):  
Muhammad Anwar Ma’sum ◽  
Hadaiq Rolis Sanabila ◽  
Petrus Mursanto ◽  
Wisnu Jatmiko

One of the challenges in machine learning is a classification in multi-modal data. The problem needs a customized method as the data has a feature that spreads in several areas. This study proposed a multi-codebook fuzzy neural network classifiers using clustering and incremental learning approaches to deal with multi-modal data classification. The clustering methods used are K-Means and GMM clustering. Experiment result, on a synthetic dataset, the proposed method achieved the highest performance with 84.76% accuracy. Whereas on the benchmark dataset, the proposed method has the highest performance with 79.94% accuracy. The proposed method has 24.9% and 4.7% improvements in synthetic and benchmark datasets respectively compared to the original version. The proposed classifier has better accuracy compared to a popular neural network with 10% and 4.7% margin in synthetic and benchmark dataset respectively.


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