Introducing Genetic Algorithm as an Intelligent Optimization Technique

The Genetic Algorithm (GA) is a stochastic global search method that mimics the metaphor of natural biological evolution. GA operates on a population of potential solutions applying the principle of survival of the fittest to produce (hopefully) better and better approximations to a solution. Genetic algorithms are particularly suitable for solving complex optimization problems and for applications that require adaptive problem solving strategies. Here, in this paper genetic algorithm is introduced as an optimization technique.

[1]  R. Diegelmann,et al.  Wound healing: an overview of acute, fibrotic and delayed healing. , 2004, Frontiers in bioscience : a journal and virtual library.

[2]  Paul Martin,et al.  Wound Healing--Aiming for Perfect Skin Regeneration , 1997, Science.

[3]  K. Olczyk,et al.  [Wound repair]. , 1998, Postepy higieny i medycyny doswiadczalnej.

[4]  R. Clark,et al.  Overview and General Considerations of Wound Repair , 1998 .

[5]  G R Tobin,et al.  Physiology and healing dynamics of chronic cutaneous wounds. , 1998, American journal of surgery.