报告开始:2024年10月26日 09:15(Asia/Bangkok)
报告时间:10min
所在会场:[RS1] Regular Session 1 [RS1-2] Dedicated Technologies for Wireless Networks
暂无文件
Many engineering optimization problems may be rephrased in terms of equivalent binary problems, and these can be effectively tackled with Evolutionary Algorithms. Unfortunately, when dealing with antenna designs, the fitness function computation may be extremely time consuming and therefore it is of paramount importance to speed up the convergency and to improve the performances of this kind of algorithms. The recent introduction and the increasing availability of quantum computing may be very effective to accelerate the design process, even though new approaches and new algorithms are needed in order to exploit the specificity of these instruments. In this paper, a new version of a novel quantum crossover operator for binary Genetic Algorithm (bGA) has been introduced and compared with its previous version. It has been successfully tested on different mathematical benchmark functions and on a preliminary thinned array design.
10月24日
2024
10月27日
2024
初稿截稿日期
注册截止日期
报告提交截止日期
2025年12月19日 马来西亚 Kuala Lumpur
2025亚洲通信与网络会议
发表评论