Article ID Journal Published Year Pages File Type
1140339 Mathematics and Computers in Simulation 2008 10 Pages PDF
Abstract
In this paper, we introduce a novel immune-based evolutionary algorithm (IEA) to overcome this limitation. The IEA, inspired from the defending mechanism of biological immune system, has better capability of global searching and diversiform-memorizing. To explain that the IEA-based clustering method is superior to classical clustering ones, we first prove its better performance for clustering problem via two functions, and then apply it to fabric sample clustering. The sample data includes 43 fabrics with 12 KES parameters, which are self-knitted by Ecole Nationale Supérieure des Arts et Industries Textiles, France. By iterative calculating, new center points can be obtained gradually according to the information learned from given sample data, and then the best clustering centers can be obtained. The significant innovation of the IEA for clustering fabric is that the sample characteristic is refined to be the center of the points in a group by iterative learning. Compared with classical clustering methods used for fabric evaluation, the IEA can learn and adapt to the structure of sample, and then find out characteristics with better clustering result. The simulation results demonstrate that the IEA can adapt to the non-balanced environment in a short time and recognize the learned object steadily and quickly.
Related Topics
Physical Sciences and Engineering Engineering Control and Systems Engineering
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