Biomimetic use of genetic algorithms

08/21/2011
by   Jean-Louis Dessalles, et al.
0

Genetic algorithms are considered as an original way to solve problems, probably because of their generality and of their "blind" nature. But GAs are also unusual since the features of many implementations (among all that could be thought of) are principally led by the biological metaphor, while efficiency measurements intervene only afterwards. We propose here to examine the relevance of these biomimetic aspects, by pointing out some fundamental similarities and divergences between GAs and the genome of living beings shaped by natural selection. One of the main differences comes from the fact that GAs rely principally on the so-called implicit parallelism, while giving to the mutation/selection mechanism the second role. Such differences could suggest new ways of employing GAs on complex problems, using complex codings and starting from nearly homogeneous populations.

READ FULL TEXT
research
02/08/2012

Genetic algorithms in astronomy and astrophysics

Genetic algorithms (GAs) emulate the process of biological evolution, in...
research
08/02/1998

Genetic Algorithm for SU(N) gauge theory on a lattice

An Algorithm is proposed for the simulation of pure SU(N) lattice gauge ...
research
07/03/2017

A Distance Between Populations for n-Points Crossover in Genetic Algorithms

Genetic algorithms (GAs) are an optimization technique that has been suc...
research
09/11/1998

Genetic Algorithm for SU(2) Gauge Theory on a 2-dimensional Lattice

An algorithm is proposed for the simulation of pure SU(N) lattice gauge ...
research
03/15/2023

Epigenetics Algorithms: Self-Reinforcement-Attention mechanism to regulate chromosomes expression

Genetic algorithms are a well-known example of bio-inspired heuristic me...
research
07/18/2018

Genetic algorithms with DNN-based trainable crossover as an example of partial specialization of general search

Universal induction relies on some general search procedure that is doom...

Please sign up or login with your details

Forgot password? Click here to reset