Semantic Learning for Molecular Communication in Internet of Bio-Nano Things
Journal:
arXiv
Published Date:
Feb 12, 2025
Abstract
Molecular communication (MC) provides a foundational framework for
information transmission in the Internet of Bio-Nano Things (IoBNT), where
efficiency and reliability are crucial. However, the inherent limitations of
molecular channels, such as low transmission rates, noise, and intersymbol
interference (ISI), limit their ability to support complex data transmission.
This paper proposes an end-to-end semantic learning framework designed to
optimize task-oriented molecular communication, with a focus on biomedical
diagnostic tasks under resource-constrained conditions. The proposed framework
employs a deep encoder-decoder architecture to efficiently extract, quantize,
and decode semantic features, prioritizing taskrelevant semantic information to
enhance diagnostic classification performance. Additionally, a probabilistic
channel network is introduced to approximate molecular propagation dynamics,
enabling gradient-based optimization for end-to-end learning. Experimental
results demonstrate that the proposed semantic framework improves diagnostic
accuracy by at least 25% compared to conventional JPEG compression with LDPC
coding methods under resource-constrained communication scenarios.