Recent Advances in Artificial Immune Systems: Models, Algorithms, and Applications

Recent Advances in Artificial Immune Systems: Models, Algorithms, and Applications

Florin Popentiu Vladicescu, Grigore Albeanu
Copyright: © 2017 |Pages: 23
DOI: 10.4018/978-1-5225-2322-2.ch004
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Abstract

The designers of Artificial Immune Systems (AIS) had been inspired from the properties of natural immune systems: self-organization, adaptation and diversity, learning by continual exposure, knowledge extraction and generalization, clonal selection, networking and meta-dynamics, knowledge of self and non-self, etc. The aim of this chapter, along its sections, is to describe the principles of artificial immune systems, the most representational data structures (for the representation of antibodies and antigens), suitable metrics (which quantifies the interactions between components of the AIS) and their properties, AIS specific algorithms and their characteristics, some hybrid computational schemes (based on various soft computing methods and techniques like artificial neural networks, fuzzy and intuitionistic-fuzzy systems, evolutionary computation, and genetic algorithms), both standard and extended AIS models/architectures, and AIS applications, in the end.
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Principles Of Artificial Immune Systems

Developing competitive algorithms for solving classification or optimization problems, using ideas inspired from immunology, asks for a deep understanding of both the mechanism discovered by immunologists and the models of AIS proposed by computer scientists. The next subsections describes the elements of the natural immune system and the proposed theories, the basics of artificial immune systems, and the design of computing processes as artificial immune algorithms.

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