A parallel genetic algorithm for optimization is outlined, and its performance on both mathematical and biomechanical optimization problems is compared to a sequential quadratic programming algorithm, a downhill simplex algorithm and a simulated annealing algorithm. When high-dimensional non-smooth or discontinuous problems with numerous local optima are considered, only the simulated annealing and the genetic algorithm, which are both characterized by a weak search heuristic, are successful in finding the optimal region in parameter space. The key advantage of the genetic algorithm is that it can easily be parallelized at negligible overhead
. A parallel two-level evolutionary algorithm which evolves genetic algorithms of maximum convergenc...
http://deepblue.lib.umich.edu/bitstream/2027.42/3571/5/bab2674.0001.001.pdfhttp://deepblue.lib.umich...
Genetic algorithms are modern algorithms intended to solve optimization problems. Inspiration origin...
Parallel genetic algorithms are often very different from the "traditional" genetic algori...
Genetic algorithms, a stochastic evolutionary computing technique, have demonstrated a capacity for ...
Many optimization problems have complex search space, which either increase the solving problem time...
Genetic algorithms are search or classification algorithms based on natural models. They present a h...
Optimizing Boggle boards: An evaluation of parallelizable techniques i This paper’s objective is to ...
Evolutionary algorithms (EAs) are modern techniques for searching complex spaces for on optimum [11]...
Use of non-deterministic algorithms for solving multi-variable optimization problems is widely used ...
The main goal of this paper is to summarize the previous research on parallel genetic algorithms. We...
In this paper, we review parallel search techniques for approximating the global optimal solution of...
Most real-life data analysis problems are difficult to solve using exact methods, due to the size of...
Parallel genetic algorithms (PGA) use two major modifications compared to the genetic algorithm. Fir...
An approach based on genetic algorithm and parallel computing has been presented and discussed for s...
. A parallel two-level evolutionary algorithm which evolves genetic algorithms of maximum convergenc...
http://deepblue.lib.umich.edu/bitstream/2027.42/3571/5/bab2674.0001.001.pdfhttp://deepblue.lib.umich...
Genetic algorithms are modern algorithms intended to solve optimization problems. Inspiration origin...
Parallel genetic algorithms are often very different from the "traditional" genetic algori...
Genetic algorithms, a stochastic evolutionary computing technique, have demonstrated a capacity for ...
Many optimization problems have complex search space, which either increase the solving problem time...
Genetic algorithms are search or classification algorithms based on natural models. They present a h...
Optimizing Boggle boards: An evaluation of parallelizable techniques i This paper’s objective is to ...
Evolutionary algorithms (EAs) are modern techniques for searching complex spaces for on optimum [11]...
Use of non-deterministic algorithms for solving multi-variable optimization problems is widely used ...
The main goal of this paper is to summarize the previous research on parallel genetic algorithms. We...
In this paper, we review parallel search techniques for approximating the global optimal solution of...
Most real-life data analysis problems are difficult to solve using exact methods, due to the size of...
Parallel genetic algorithms (PGA) use two major modifications compared to the genetic algorithm. Fir...
An approach based on genetic algorithm and parallel computing has been presented and discussed for s...
. A parallel two-level evolutionary algorithm which evolves genetic algorithms of maximum convergenc...
http://deepblue.lib.umich.edu/bitstream/2027.42/3571/5/bab2674.0001.001.pdfhttp://deepblue.lib.umich...
Genetic algorithms are modern algorithms intended to solve optimization problems. Inspiration origin...