logo
ResearchBunny Logo
Digital circuits and neural networks based on acid-base chemistry implemented by robotic fluid handling

Engineering and Technology

Digital circuits and neural networks based on acid-base chemistry implemented by robotic fluid handling

A. A. Agiza, K. Oakley, et al.

This groundbreaking research conducted by Ahmed A. Agiza, Kady Oakley, Jacob K. Rosenstein, Brenda M. Rubenstein, Eunsuk Kim, Marc Riedel, and Sherief Reda explores an innovative fusion of digital circuits and neural networks with acid-base chemistry, empowering new forms of information processing through a robotic fluid handler. Discover how acids and bases can revolutionize data encoding and circuitry.

00:00
00:00
~3 min • Beginner • English
Abstract
Acid-base reactions are ubiquitous, easy to prepare, and execute without sophisticated equipment. Acids and bases are also inherently complementary and naturally map to a universal representation of "0" and "1". Here, we propose how to leverage acids, bases, and their reactions to encode binary information and perform information processing based upon the majority and negation operations. These operations form a functionally complete set that we use to implement more complex computations such as digital circuits and neural networks. We present the building blocks needed to build complete digital circuits using acids and bases for dual-rail encoding data values as complementary pairs, including a set of primitive logic functions that are widely applicable to molecular computation. We demonstrate how to implement neural network classifiers and some classes of digital circuits with acid-base reactions orchestrated by a robotic fluid handling device. We validate the neural network experimentally on a number of images with different formats, resulting in a perfect match to the in-silico classifier. Additionally, the simulation of our acid-base classifier matches the results of the in-silico classifier with approximately 99% similarity.
Publisher
Nature Communications
Published On
Jan 30, 2023
Authors
Ahmed A. Agiza, Kady Oakley, Jacob K. Rosenstein, Brenda M. Rubenstein, Eunsuk Kim, Marc Riedel, Sherief Reda
Tags
digital circuits
neural networks
acid-base chemistry
information processing
robotic fluid handling
Listen, Learn & Level Up
Over 10,000 hours of research content in 25+ fields, available in 12+ languages.
No more digging through PDFs, just hit play and absorb the world's latest research in your language, on your time.
listen to research audio papers with researchbunny