Title :
On the application of parallel genetic algorithms in X-ray crystallography
Author :
Chang, C.-S. ; DeTitta, G. ; Miller, R. ; Weeks, C.
Author_Institution :
Dept. of Comput. Sci., State Univ. of New York, Buffalo, NY, USA
Abstract :
Discusses the design and implementations of a parallel genetic algorithm (PGA) for function optimization. The proposed PGA employs a coarse-grained approach in which a physical processor (a CPU) maintains several semi-isolated subpopulations (in the nodes), each of which operates an independent genetic plan. With this design, the entire population can preserve diversity by allowing each subpopulation to evolve relatively independently. Two types of network topologies are considered: a ring and a fully-connected graph, together with several novel genetic operators. Implementations of the PGA were performed on a network of Sun4 workstations, a network of SGI Indigos, and a Thinking Machine CM-5. The proposed PGA has been successfully utilized in solving an important problem in X-ray crystallography which can be formulated in terms of a function to be minimized. This function is used as the fitness function for our PGA. Results indicate that the PGA is suitable for solving problem instances of small sizes. However, the cost-effectiveness relationship with other approaches is unclear
Keywords :
X-ray crystallography calculation methods; functional analysis; genetic algorithms; minimisation; network topology; parallel algorithms; parallel architectures; physics computing; CPU; SGI Indigo; Sun4 workstations; Thinking Machine CM-5; X-ray crystallography; coarse-grained approach; cost effectiveness; fitness function; fully-connected graph; function minimization; function optimization; genetic operators; independent genetic plan; network topologies; parallel genetic algorithms; population diversity; problem solving; ring topology; semi-isolated node subpopulations; subpopulation evolution; Algorithm design and analysis; Application software; Computer science; Convergence; Crystallography; Design optimization; Electronics packaging; Genetic algorithms; Tires; X-ray diffraction;
Conference_Titel :
Scalable High-Performance Computing Conference, 1994., Proceedings of the
Conference_Location :
Knoxville, TN
Print_ISBN :
0-8186-5680-8
DOI :
10.1109/SHPCC.1994.296722