Node-Based Genetic Algorithm for Communication Spanning Tree Problem(<Special Section>Internet Technology VI)
スポンサーリンク
概要
- 論文の詳細を見る
Genetic Algorithm (GA) and other Evolutionary Algorithms (EAs) have been successfully applied to solve constrained minimum spanning tree (MST) problems of the communication network design and also have been used extensively in a wide variety of communication network design problems. Choosing an appropriate representation of candidate solutions to the problem is the essential issue for applying GAs to solve real world network design problems, since the encoding and the interaction of the encoding with the crossover and mutation operators have strongly influence on the success of GAs. In this paper, we investigate a new encoding crossover and mutation operators on the performance of GAs to design of minimum spanning tree problem. Based on the performance analysis of these encoding methods in GAs, we improve predecessor-based encoding, in which initialization depends on an underlying random spanning-tree algorithm. The proposed crossover and mutation operators offer locality, heritability, and computational efficiency. We compare with the approach to others that encode candidate spanning trees via the Pr?fer number-based encoding, edge set-based encoding, and demonstrate better results on larger instances for the communication spanning tree design problems.
- 一般社団法人電子情報通信学会の論文
- 2006-04-01
著者
-
Gen Mitsuo
Graduate School of Engineering Ashikaga Institute of Technology
-
Gen Mitsuo
The Dept. Of Industrial & Management Eng. Hanyang University
-
Lin Lin
Waseda Univ.
-
LIN Lin
Graduate School of Information, Production and Systems, Waseda University
関連論文
- Process Planning and Scheduling in Distributed Manufacturing System Using Multiobjective Genetic Algorithm
- Scheduling in FMS Environments by Network-based Hybrid Genetic Algorithm
- Reliability Optimization Design Using a Hybridized Genetic Algorithm with a Neural-Network Technique
- Optimal Design of Two-stage Logistics Network Considered Inventory by Boltzmann Random Key-based GA
- Optimization and improvement in robot-based assembly line system by hybrid genetic algorithm (特集:進化技術とその応用)
- A New Multiobjective Genetic Algorithm for Route Selection
- Case Study on Optimal Routing in Logistics Network by Priority-based Genetic Algorithm (特集:産学連携による論文)
- An effective evolutionary approach for bicriteria shortest path routing problems (特集:進化技術とその応用)
- A multi-stage reverse logistics network problem by using hybrid priority-based genetic algorithm (特集:進化技術とその応用)
- Scheduling in FMS Environments by Network-based Hybrid Genetic Algorithm
- A Hybrid Intelligent Algorithm for Stochastic Multilevel Programming
- A Multistage Method for Multiobjective Route Selection
- Multistage Operation-based Genetic Algorithm for Advanced Planning and Scheduling Problem
- Adaptive Genetic Local Search Algorithms for Solving Reliability Optimization Problems
- Multilayer Traffic Network Optimized by Multiobjective Genetic Clustering Algorithm
- BS-10-16 The Branch Office Area Design Model on the OSPF using Genetic Algorithm
- Bicriteria Network Optimization Problem using Priority-based Genetic Algorithm
- Multiprocessor Scheduling with Multi-objective Genetic Algorithm
- Node-Based Genetic Algorithm for Communication Spanning Tree Problem(Internet Technology VI)