Microprocessors in
smartphones, computers, and data centers process information by manipulating
electrons through solid semiconductors but our brains have a different system.
They rely on the manipulation of ions in liquid to process information.
Inspired by the brain, researchers have
long been seeking to develop ‘ionics’ in an aqueous solution. While ions in
water move slower than electrons in semiconductors, scientists think the diversity
of ionic species with different physical and chemical properties could be
harnessed for richer and more diverse information processing.
Ionic computing, however, is still in
its early days. To date, labs have only developed individual ionic devices such
as ionic diodes and transistors, but no one has put many such devices together
into a more complex circuit for computing — until now.
A team of researchers at the Harvard
John A. Paulson School of Engineering and Applied Sciences (SEAS), in collaboration
with DNA Script, a biotech startup, have developed an ionic circuit comprising hundreds
of ionic transistors and performed a core process of neural net computing.
The research is published in Advanced Materials.
The researchers began by building a new
type of ionic transistor from a technique they recently pioneered. The transistor consists of an aqueous solution of
quinone molecules, interfaced with two concentric ring electrodes with a center
disk electrode, like a bullseye. The two ring electrodes electrochemically
lower and tune the local pH around the center disk by producing and trapping
hydrogen ions. A voltage applied to the center disk causes an electrochemical
reaction to generate an ionic current from the disk into the water. The
reaction rate can be sped up or down –– increasing or decreasing the ionic
current — by tuning the local pH. In other words, the pH controls, or
gates, the disk’s ionic current in the aqueous solution, creating an ionic
counterpart of the electronic transistor.
They then engineered the pH-gated ionic
transistor in such a way that the disk current is an arithmetic multiplication
of the disk voltage and a “weight” parameter representing the local pH gating
the transistor. They organized these transistors into a 16 × 16 array to expand
the analog arithmetic multiplication of individual transistors into an analog
matrix multiplication, with the array of local pH values serving as a weight
matrix encountered in neural networks.
A CMOS chip (left) with an array (center) of hundreds
of individual ionic transistors (right). (Credit: Woo-Bin Jung/Harvard SEAS)
“Matrix multiplication is the most
prevalent calculation in neural networks for artificial intelligence,” said
Woo-Bin Jung, a postdoctoral fellow at SEAS and the first author of the paper.
“Our ionic circuit performs the matrix multiplication in water in an analog
manner that is based fully on electrochemical machinery.”
“Microprocessors manipulate electrons in
a digital fashion to perform matrix multiplication,” said Donhee Ham, the
Gordon McKay Professor of Electrical Engineering and Applied Physics at SEAS
and the senior author of the paper. “While our ionic circuit cannot be as fast
or accurate as the digital microprocessors, the electrochemical matrix
multiplication in water is charming in its own right, and has a potential to be
energy efficient.”
Now, the team looks to enrich the
chemical complexity of the system.
“So far, we have used only 3 to 4 ionic species, such as hydrogen and quinone ions, to enable the gating and ionic transport in the aqueous ionic transistor,” said Jung. “It will be very interesting to employ more diverse ionic species and to see how we can exploit them to make rich the contents of information to be processed.”
Source: https://seas.harvard.edu/news/2022/09/neural-net-computing-water
Journal article: https://onlinelibrary.wiley.com/doi/10.1002/adma.202205096
Source: Neural
net computing in water – Scents of Science (myfusimotors.com)
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