AND ITS IMPLEMENTATION OF PROCESSOR-ELEMEN T
暂无分享,去创建一个
Genetic Algorithm (GA) is widely known as a general-pu rpose optimization method, which can provide sub-optimum solutions for various. optimization problems by means of modeling genetic evolutionary process of creatures. Several essential difficulties exist in GA, however, with regard to large amount of computation time, premature convergence in early stage of evolution and proper adjustment of many GA parameters. In order to overcome the difficulties of GA, this paper describes the architecture of a scalable and high-speed GA processor, which is .c)!aracterized by hardware-oriented approach based on Distributed GA, optimized hierarchic pipelines for high-speed evolutions and flexible genetic operations corresponding to a given problem. Furthermore, this paper also describes VLSI implementation of a pr ocessor-element to verify feasibility of our proposed architecture for applications.
[1] David E. Goldberg,et al. Genetic Algorithms in Search Optimization and Machine Learning , 1988 .
[2] Ashok Samal,et al. HGA: A Hardware-Based Genetic Algorithm , 1995, Third International ACM Symposium on Field-Programmable Gate Arrays.
[3] Reiko Tanese,et al. Distributed Genetic Algorithms , 1989, ICGA.
[4] Tughrul Arslan,et al. A parallel genetic VLSI architecture for combinatorial real-time applications-disc scheduling , 1995 .