Computational Chemotaxis in Ants and Bacteria over Dynamic Environments
Vitorino Ramos, C. M. Fernandes, A. C. Rosa, A. Abraham

TL;DR
This paper introduces a novel swarm intelligence algorithm inspired by ant and bacterial chemotaxis, demonstrating superior adaptability and speed in dynamic optimization tasks compared to existing bacterial foraging models.
Contribution
A new collective adaptation model based on ant colony behaviors is proposed, outperforming bacterial foraging algorithms in dynamic environments.
Findings
SSA algorithm adapts quickly to unforeseen changes
Outperforms BFOA in adaptive speed
Effective in severe dynamic optimization problems
Abstract
Chemotaxis can be defined as an innate behavioural response by an organism to a directional stimulus, in which bacteria, and other single-cell or multicellular organisms direct their movements according to certain chemicals in their environment. This is important for bacteria to find food (e.g., glucose) by swimming towards the highest concentration of food molecules, or to flee from poisons. Based on self-organized computational approaches and similar stigmergic concepts we derive a novel swarm intelligent algorithm. What strikes from these observations is that both eusocial insects as ant colonies and bacteria have similar natural mechanisms based on stigmergy in order to emerge coherent and sophisticated patterns of global collective behaviour. Keeping in mind the above characteristics we will present a simple model to tackle the collective adaptation of a social swarm based on real…
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