SIMULATION OF PSO BASED APPROACH FOR CMOL CELL ASSIGNMENT PROBLEM
Journal: INTERNATIONAL JOURNAL OF RESEARCH -GRANTHAALAYAH (Vol.3, No. 5)Publication Date: 2015-05-30
Authors : Prateek Shrivastava; Khemraj Deshmukh;
Page : 1-12
Keywords : CMOL CELL; Particle swarm optimization (PSO); genetic algorithms (GAS); algorithm technique; swarm system.;
Abstract
Particle swarm optimization (PSO) approach is used over genetic algorithms (GAS) to solve many of the same kinds of problems. This optimization technique does not suffer, however, from some of GA's difficulties; interaction in the group enhances rather than detracts from progress toward the solution. Further, a particle swarm system has memory, which the genetic algorithm does not have. In particle swarm optimization, individuals who fly past optima are tugged to return toward them; knowledge of good solutions is retained by all particles. The genetic algorithm works with the concept of chromosomes having gene where each gene act as a block of one solution. This is totally based on the solution which is followed by crossover and then mutation and finally reaches to fitness. The best fitness will be considered as a result and implemented in the practical area. Due to some drawbacks and problems exist in the genetic algorithm implemented, scientists moved to the other algorithm technique which is apparently based on the flock of birds moving to the target. This effectively overcome the shortcomings of GA and provides better fitness solutions to implement in the circuit.
Other Latest Articles
- HIGHLIGHTS ON THE HISTORY OF SMALLPOX EPIDEMIOLOGY AND ERADICATION IN THE SUDAN
- COMPARATIVE STUDY OF THE EFFECTS OF FAMILY CLIMATE ON THE ACADEMIC ACHIEVEMENTS OF GOVERNMENT AND PRIVATE SECONDARY SCHOOL STUDENTS
- ROLE OF URBAN TRANSFORMATION IN SOCIAL SUSTAINABILITY - A CASE OF INDORE CITY
- A LONG RUN RELATIONSHIP BETWEEN GOLD PRICE AND INFLATION- EVIDENCE FROM THE INDIAN EXPERIENCE
- INTELLIGENT ANALYZER FOR UNATTENDED OBJECT DETECTION
Last modified: 2017-09-28 17:12:23