EN

论文

当前位置: 首页 > 科学研究 > 科研成果 > 论文 > 正文

A Novel Fused Optimization Algorithm of Genetic Algorithm and Ant Colony Optimization

来源: | 发布时间🚪:2016-10-12| 点击🦟:
A Novel Fused Optimization Algorithm of Genetic Algorithm and Ant Colony Optimization

作者:Zhao, FT (Zhao, FuTao)[ 1 ] ; Yao, Z (Yao, Zhong)[ 1 ] ; Luan, J (Luan, Jing)[ 1 ] ; Song, X (Song, Xin)[ 2 ] 

MATHEMATICAL PROBLEMS IN ENGINEERING  

文献号: 2167413  

DOI: 10.1155/2016/2167413  

出版年: 2016  

摘要

A novel fused algorithm that delivers the benefits of both genetic algorithms (GAs) and ant colony optimization (ACO) is proposed to solve the supplier selection problem. The proposed method combines the evolutionary effect of GAs and the cooperative effect of ACO. A GA with a great global converging rate aims to produce an initial optimum for allocating initial pheromones of ACO. An ACO with great parallelism and effective feedback is then served to obtain the optimal solution. In this paper, the approach has been applied to the supplier selection problem. By conducting a numerical experiment, parameters of ACO are optimized using a traditional method and another hybrid algorithm of a GA and ACO, and the results of the supplier selection problem demonstrate the quality and efficiency improvementof the novel fused method with optimal parameters, verifying its feasibility and effectiveness. Adopting a fused algorithm of a GA and ACO to solve the supplier selection problem is an innovative solution that presents a clear methodological contribution to optimization algorithm research and can serve as a practical approach and management reference for various companies.

凯发娱乐专业提供⚗️:凯发娱乐凯发平台凯发开户等服务,提供最新官网平台、地址、注册、登陆、登录、入口、全站、网站、网页、网址、娱乐、手机版、app、下载、欧洲杯、欧冠、nba、世界杯、英超等,界面美观优质完美,安全稳定,服务一流💂🏿,凯发娱乐欢迎您。 凯发娱乐官网xml地图
凯发娱乐 凯发娱乐 凯发娱乐 凯发娱乐 凯发娱乐 凯发娱乐 凯发娱乐 凯发娱乐 凯发娱乐 凯发娱乐