会议专题

An optimization method combined genetic algorithm with neural network

Based on genetic arithmetic and neural network theory, aggregate gradation of asphalt stabilized base course mixtures was optimized. In the course of optimization, the target function was asphalt mixtures fatigue properties, and the decisive parameter were the weight passed through 9.5mm sieve and ore powder dose. Compared to Superpave aggregate gradation, the optimized one fixed in with Superpavegradation prescript totally. Through fatigue experiment, the optimized asphalt mixtures fatigue properties was the longest. It is shown that the optimization method based on genetic arithmetic and neural network can be used to optimize asphalt mixtures aggregate gradation. This method is available to optimize involved target function that cannot be expressed by the decisive parameter apparently.

Asphalt stabilized base course Genetic Arithmetic Neural Network Optimization of aggregate gradation

Ge Zhesheng Hu Xiaoqian Huang Mingbo

South China University Technology, Guangzhou, Guangdong, 510640, China

国际会议

2012 International Conference on Intelligent System Design and Engineering Applications(2012年智能系统设计与工程应用国际会议 ISDEA 2012)

三亚

英文

111-113

2012-01-06(万方平台首次上网日期,不代表论文的发表时间)