Inspiration from genetics to promote recognition and protection within ad hoc sensor networks
Reinert Korsnes, Knut Ovsthus

TL;DR
This paper proposes a biologically inspired genetic coding system for ad hoc sensor networks, enabling recognition, protection, and intrusion detection through a dynamic phylogenetic tree of genetically related nodes.
Contribution
It introduces a novel genetic coding framework for sensor nodes, inspired by immune systems, to enhance security and recognition in ad hoc networks.
Findings
Genetic codes enable nodes to recognize outsiders and intruders.
Nodes can detect adversaries through genetic relation checks.
The system supports dynamic adaptation with genetic drift and mutation effects.
Abstract
This work illustrates potentials for recognition within {\em ad hoc} sensor networks if their nodes possess individual inter-related biologically inspired genetic codes. The work takes ideas from natural immune systems protecting organisms from infection. Nodes in the present proposal have individual gene sets fitting into a self organised phylogenetic tree. Members of this population are genetically ''relatives''. Outsiders cannot easily copy or introduce a new node in the network without going through a process of conception between two nodes in the population. Related nodes can locally decide to check each other for their genetic relation without directly revealing their gene sets. A copy/clone of a gene sequence or a random gene set will appear as alien. Nodes go through a cycle of introduction (conception or ''birth'') with parents in the network and later exit from it (''death'').…
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Taxonomy
TopicsArtificial Immune Systems Applications · Molecular Communication and Nanonetworks · Opportunistic and Delay-Tolerant Networks
