Artificial Intelligence for Molecular Communication
Max Bartunik, Jens Kirchner, Oliver Keszocze

TL;DR
This paper reviews the use of artificial neural networks for demodulating molecular communication signals, highlighting challenges and approaches in modeling and decoding data in nano-scale medical applications.
Contribution
It provides a comprehensive overview of neural network-based demodulation methods in molecular communication, including synthetic and real measurement data approaches.
Findings
Neural networks can reliably classify noisy molecular signals.
Synthetic data based on theoretical models aids neural network training.
Prototype measurements help validate demodulation approaches.
Abstract
Molecular communication is a novel approach for data transmission between miniaturized devices, especially in contexts where electrical signals are to be avoided. The communication is based on sending molecules (or other particles) at nano scale through channel instead sending electrons over a wire. Molecular communication devices have a large potential in medical applications as they offer an alternative to antenna-based transmission systems that may not be applicable due to size, temperature, or radiation constraints. The communication is achieved by transforming a digital signal into concentrations of molecules. These molecules are then detected at the other end of the communication channel and transformed back into a digital signal. Accurately modeling the transmission channel is often not possible which may be due to a lack of data or time-varying parameters of the channel (e. g.,…
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