Putting the "Genetics" Back into Genetic Algorithms (Reconsidering the Role of Crossover in Hybrid Operators)
نویسندگان
چکیده
The original analysis of genetic algorithms presents combination to be the primary mechanism of crossover. Although good solutions can be found by combination, they are often not locally optimal. Thus, a popular technique is to locally optimize each crossover solution before adding it to the population. In these \hybrid" operators, crossover can be viewed as a means of restarting the local optimizer. Unfortunately, if crossover does little more than combine random parts of two parent solutions, the performance of the resulting hybrid operator may not be signi cantly di erent from random restart of the local optimizer. The design of the crossover operator a ects the e ciency and e ectiveness of hybrid operators. A new analysis presents preserving common schemata as an important design consideration for crossover.
منابع مشابه
Reconsidering the Selection Concept of Genetic Algorithms from a Population Genetics Inspired Point of View
In this paper we propose some generic extensions to the general selection concept of a Genetic Algorithm (GA). These bionically inspired interrelated further developments aim to make the algorithm more open for scalability on the one hand, and to stabilize the performance of weaker crossover operators on the other hand without necessitating the development of new coding standards and operators ...
متن کاملOPTIMAL OPERATORS OF GENETIC ALGORITHM IN OPTIMIZING SEGMENTAL PRECAST CONCRETE BRIDGES SUPERSTRUCTURE
Bridges constitute an expensive segment of construction projects; the optimization of their designs will affect their high cost. Segmental precast concrete bridges are one of the most commonly serviced bridges built for mid and long spans. Genetic algorithm is one of the most widely applied meta-heuristic algorithms due to its ability in optimizing cost. Next to providing cost optimization of t...
متن کاملAN EFFICIENT CROSSOVER OPERATOR FOR TRAVELING SALESMAN PROBLEM
Crossover operator plays a crucial role in the efficiency of genetic algorithm (GA). Several crossover operators have been proposed for solving the travelling salesman problem (TSP) in the literature. These operators have paid less attention to the characteristics of the traveling salesman problem, and majority of these operators can only generate feasible solutions. In this paper, a crossover ...
متن کاملMulti-Objective Optimization of Solar Thermal Energy Storage Using Hybrid of Particle Swarm Optimization and Multiple Crossover and Mutation Operator
Increasing of net energy storage (Q net) and discharge time of phase change material (t PCM), simultaneously, are important purpose in the design of solar systems. In the present paper, Multi-Objective (MO) based on hybrid of Particle Swarm Optimization (PSO) and multiple crossover and mutation operator is used for Pareto based optimization of solar systems. The conflicting objectives are Q net...
متن کاملIntelligent scalable image watermarking robust against progressive DWT-based compression using genetic algorithms
Image watermarking refers to the process of embedding an authentication message, called watermark, into the host image to uniquely identify the ownership. In this paper a novel, intelligent, scalable, robust wavelet-based watermarking approach is proposed. The proposed approach employs a genetic algorithm to find nearly optimal positions to insert watermark. The embedding positions coded as chr...
متن کامل