Genetic optimization algorithms applied toward mission computability models

05/27/2020
by   Mee Seong Im, et al.
0

Genetic algorithms are modeled after the biological evolutionary processes that use natural selection to select the best species to survive. They are heuristics based and low cost to compute. Genetic algorithms use selection, crossover, and mutation to obtain a feasible solution to computational problems. In this paper, we describe our genetic optimization algorithms to a mission-critical and constraints-aware computation problem.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/02/2018

Systematic Testing of Genetic Algorithms: A Metamorphic Testing based Approach

Genetic Algorithms are a popular set of optimization algorithms often us...
research
12/05/2005

Amazing geometry of genetic space or are genetic algorithms convergent?

There is no proof yet of convergence of Genetic Algorithms. We do not su...
research
04/07/2004

Exploring tradeoffs in pleiotropy and redundancy using evolutionary computing

Evolutionary computation algorithms are increasingly being used to solve...
research
06/02/2016

On the performance of different mutation operators of a subpopulation-based genetic algorithm for multi-robot task allocation problems

The performance of different mutation operators is usually evaluated in ...
research
10/11/2020

Non-Stationary Stochastic Global Optimization Algorithms

Gomez proposes a formal and systematic approach for characterizing stoch...
research
06/15/2023

Kinetic based optimization enhanced by genetic dynamics

We propose and analyse a variant of the recently introduced kinetic base...
research
02/14/2020

A comparison of different types of Niching Genetic Algorithms for variable selection in solar radiation estimation

Variable selection problems generally present more than a single solutio...

Please sign up or login with your details

Forgot password? Click here to reset