自然科学进展(英文版)
自然科學進展(英文版)
자연과학진전(영문판)
PROGRESS IN NATURAL SCIENCE
2004年
3期
257-261
,共5页
multi-agent%support vector machine%radial basis function%genetic algorithm%regression
The use of computational-intelligence-based techniques in the optimization of agent initial positions in land combat simulations is studied. A novel method for the reduction of support vectors in the support vector machine (SVM) is presented. The optimization on the width of the Gaussian kernel function and the combination of the SVM with the radial basis function neural network are performed in the proposed method. Simulation results show that the proposed method can improve the running efficiency drastically compared with that using the traditional SVM with the same precision. We also summarize and present some experiences and trends in the study on the optimization problem in land combat simulation.