Semantic Information in MC: Chemotaxis Beyond Shannon
Lukas Brand, Yan Wang, Maurizio Magarini, Robert Schober, and, Sebastian Lotter

TL;DR
This paper applies a semantic information framework to bacterial chemotaxis, revealing how environmental conditions influence the information bacteria utilize for survival, and suggesting new directions for molecular communication system design.
Contribution
It introduces the use of semantic information theory to analyze natural MC systems like bacterial chemotaxis, moving beyond traditional Shannon-based measures.
Findings
Semantic information quantifies bacterial adaptation to environments.
Environmental conditions significantly affect information utilization.
The framework can guide future nanoscale communication system designs.
Abstract
The recently emerged molecular communication (MC) paradigm intends to leverage communication engineering tools for the design of synthetic chemical communication systems. These systems are envisioned to operate at nanoscale and in biological environments, such as the human body, and catalyze the emergence of revolutionary applications in the context of early disease monitoring and drug targeting. Despite the abundance of theoretical (and recently also experimental) MC system designs proposed over the past years, some fundamental questions remain unresolved, hindering the breakthrough of MC in real-world applications. One of these questions is: What can be a useful measure of information in the context of MC applications? While most existing works on MC build upon the concept of syntactic information as introduced by Shannon, in this paper, we explore the framework of semantic…
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Taxonomy
TopicsNeural Networks and Applications · Advanced Memory and Neural Computing · Modular Robots and Swarm Intelligence
