Adaptive Group Organization Cooperative Evolutionary Algorithm for TSK-type Neural Fuzzy Networks Design

Abstract

This paper proposes a novel adaptive group organization cooperative evolutionary algorithm (AGOCEA) for TSK-type neural fuzzy networks design. The proposed AGOCEA uses group-based cooperative evolutionary algorithm and self-organizing technique to automatically design neural fuzzy networks. The group-based evolutionary divided populations to several groups and each group can evolve itself. In the proposed self-organizing technique, it can automatically determine the parameters of the neural fuzzy networks, and therefore some critical parameters have no need to be assigned in advance. The simulation results are shown the better performance of the proposed algorithm than the other learning algorithms.

Authors and Affiliations

Sheng-Fuu Lin, Jyun-Wei Chang

Keywords

Related Articles

 Method for 3D Rendering Based on Intersection Image Display Which Allows Representation of Internal Structure of 3D objects

 Method for 3D rendering based on intersection image display which allows representation of internal structure is proposed. The proposed method is essentially different from the conventional volume rendering based o...

Contradiction Resolution between Self and Outer Evaluation for Supervised Multi-Layered Neural Networks

In this paper, we propose a new type of informationtheoretic method. We suppose that a neuron should be evaluated from different points of view to precisely discern its properties. In this paper, we restrict ourselves to...

  IMAGE RETRIEVAL AND CLASSIFICATION METHOD BASED ON EUCLIDIAN DISTANCE BETWEEN NORMALIZED FEATURES INCLUDING WAVELET DESCRIPTOR

 Image retrieval method based on Euclidian distance between normalized features with their mean and variance in feature space is proposed. Effectiveness of the normalization is evaluated together with a validation o...

 One of the Possible Causes for Diatom Appearance in Ariake Bay Area in Japan In the Winter from 2010 to 2015 (Clarified with AQUA/MODIS)

 One of the possible causes for diatom appearance in Ariake bay area I Japan in the winter seasons from 2010 to 2015 is clarified with AQUA/MODIS of remote sensing satellite. Two months (January and February) AQUA/M...

 COMPARISON AMONG CROSS, ONBOARD AND VICARIOUS CALIBRATIONS FOR TERRA/ASTER/VNIR

 Comparative study on radiometric calibration methods among onboard, cross and vicarious calibration for visible to near infrared radiometers onboard satellites is conducted. The data sources of the aforementioned t...

Download PDF file
  • EP ID EP120212
  • DOI -
  • Views 137
  • Downloads 0

How To Cite

Sheng-Fuu Lin, Jyun-Wei Chang (2013). Adaptive Group Organization Cooperative Evolutionary Algorithm for TSK-type Neural Fuzzy Networks Design. International Journal of Advanced Research in Artificial Intelligence(IJARAI), 2(3), 1-9. https://www.europub.co.uk/articles/-A-120212