Information-theoretic language of proteinoid gels: Boolean gates and QR codes
Saksham Sharma, Adnan Mahmud, Giuseppe Tarabella, Panagiotis, Mougoyannis, Andrew Adamatzky

TL;DR
This paper introduces an information-theoretic language for proteinoid gels using QR codes, enabling digital encoding and retrieval of analog signals, and demonstrates potential for soft matter fluidic systems to be programmed via information theory.
Contribution
It develops a novel digital language for proteinoids with QR codes, linking analog signals to binary gates and enabling signal recovery from visual codes.
Findings
Proteinoid signals can be represented by Boolean gates.
QR codes can encode proteinoid internal states.
Analog signals can be reconstructed from QR codes.
Abstract
With an aim to build analog computers out of soft matter fluidic systems in future, this work attempts to invent a new information-theoretic language, in the form of two-dimensional Quick Response (QR) codes. This language is, effectively, a digital representation of the analog signals shown by the proteinoids. We use two different experimental techniques: (i) a voltage-sensitive dye and (ii) a pair of differential electrodes, to record the analog signals. The analog signals are digitally approximatied (synthesised) by sampling the analog signals into a series of discrete values, which are then converted into binary representations. We have shown the AND-OR-NOT-XOR-NOR-NAND-XNOR gate representation of the digitally sampled signal of proteinoids. Additional encoding schemes are applied to convert the binary code identified above to a two-dimensional QR code. As a result, the QR code…
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Taxonomy
TopicsDNA and Biological Computing · Fractal and DNA sequence analysis · Machine Learning in Bioinformatics
