We present a general-purpose optimization algorithm inspired by "run-and-tumble", the biased random walk chemotactic swimming strategy used by the bacterium Escherichia coli to locate regions of high nutrient concentration The method uses particles (corresponding to bacteria) that swim through the variable space (corresponding to the attractant concentration profile). By constantly performing temporal comparisons, the particles drift towards the minimum or maximum of the function of interest. We illustrate the use of our method with four examples. We also present a discrete version of the algorithm. The new algorithm is expected to be useful in combinatorial optimization problems involving many variables, where the functional landscape is a...
In 2002, K. M. Passino proposed Bacterial Foraging Optimization Algorithm (BFOA) for distributed opt...
Although the "adaptive" strategy used by Escherichia coli has dominated our understanding of bacteri...
In this paper, adaptive bacterial foraging algorithms and their application to solve real world prob...
We present a general-purpose optimization algorithm inspired by “run-and-tumble”, the biased random ...
We present a general-purpose optimisation algorithm inspired by "run-and-tumble2, the biased random ...
A simple version of a Swarm Intelligence algorithm called bacterial foraging optimization algorithm ...
E. coli does chemotaxis by performing a biased random walk composed of alternating periods of swimmi...
Nature and bio-inspired algorithms have been recently used for solving high dimensional search and o...
Inspired by bacterial motility, we propose an algorithm for adaptation over networks with mobile nod...
This paper presents the social foraging behavior of Escherichia coli (E. Coli) bacteria based on Bac...
In this article a novel algorithm based on the chemotaxis process of Echerichia coil is developed to...
Bacterial colony chemotaxis algorithm was originally developed for optimal problem with continuous s...
Bacterial foraging optimization (BFO) algorithm is a novel swarm intelligence optimization algorithm...
Inspired by the colony foraging behavior of Escherichia coli bacteria, this paper proposes a novel b...
This paper proposes a novel bacterial colony foraging (BCF) algorithm for complex optimization probl...
In 2002, K. M. Passino proposed Bacterial Foraging Optimization Algorithm (BFOA) for distributed opt...
Although the "adaptive" strategy used by Escherichia coli has dominated our understanding of bacteri...
In this paper, adaptive bacterial foraging algorithms and their application to solve real world prob...
We present a general-purpose optimization algorithm inspired by “run-and-tumble”, the biased random ...
We present a general-purpose optimisation algorithm inspired by "run-and-tumble2, the biased random ...
A simple version of a Swarm Intelligence algorithm called bacterial foraging optimization algorithm ...
E. coli does chemotaxis by performing a biased random walk composed of alternating periods of swimmi...
Nature and bio-inspired algorithms have been recently used for solving high dimensional search and o...
Inspired by bacterial motility, we propose an algorithm for adaptation over networks with mobile nod...
This paper presents the social foraging behavior of Escherichia coli (E. Coli) bacteria based on Bac...
In this article a novel algorithm based on the chemotaxis process of Echerichia coil is developed to...
Bacterial colony chemotaxis algorithm was originally developed for optimal problem with continuous s...
Bacterial foraging optimization (BFO) algorithm is a novel swarm intelligence optimization algorithm...
Inspired by the colony foraging behavior of Escherichia coli bacteria, this paper proposes a novel b...
This paper proposes a novel bacterial colony foraging (BCF) algorithm for complex optimization probl...
In 2002, K. M. Passino proposed Bacterial Foraging Optimization Algorithm (BFOA) for distributed opt...
Although the "adaptive" strategy used by Escherichia coli has dominated our understanding of bacteri...
In this paper, adaptive bacterial foraging algorithms and their application to solve real world prob...