Computational Algorithms Inspired by Biological Processes and Evolution

M., Janga Reddy ; D., Nagesh Kumar (2012) Computational Algorithms Inspired by Biological Processes and Evolution Current Science, 103 (4, 25). pp. 370-380.

[img] PDF
325kB

Abstract

In recent times computational algorithms inspired by biological processes and evolution are gaining much popularity for solving science and engineering problems. These algorithms are broadly classified into evolutionary computation and swarm intelligence algorithms, which are derived based on the analogy of natural evolution and biological activities. These include genetic algorithms, genetic programming, differential evolution, particle swarm optimization, ant colony optimization, artificial neural networks, etc. The algorithms being random-search techniques, use some heuristics to guide the search towards optimal solution and speed-up the convergence to obtain the global optimal solutions. The bio-inspired methods have several attractive features and advantages compared to conventional optimization solvers. They also facilitate the advantage of simulation and optimization environment simultaneously to solve hard-to-define (in simple expressions), real-world problems. These biologically inspired methods have provided novel ways of problem-solving for practical problems in traffic routing, networking, games, industry, robotics, economics, mechanical, chemical, electrical, civil, water resources and others fields. This article discusses the key features and development of bio-inspired computational algorithms, and their scope for application in science and engineering fields.

Item Type:Article
Source:Copyright of this article belongs to ResearchGate GmbH.
Keywords:Algorithms, biological processes, evolutionary computation, nonlinear optimization, swarm intelligence.
ID Code:126221
Deposited On:22 Sep 2022 09:32
Last Modified:20 Oct 2022 11:07

Repository Staff Only: item control page