TY - JOUR
T1 - A scalable neural network emulator with MRAM-based mixed-signal circuits
AU - Lee, Jua
AU - Song, Jiho
AU - Im, Hyeon Seong
AU - Kim, Jonghwi
AU - Lee, Woonjae
AU - Yi, Wooseok
AU - Kwon, Soonwan
AU - Jung, Byungsu
AU - Kim, Joohyoung
AU - Lee, Yoonmyung
AU - Chun, Jung Hoon
N1 - Publisher Copyright:
Copyright © 2025 Lee, Song, Im, Kim, Lee, Yi, Kwon, Jung, Kim, Lee and Chun.
PY - 2025
Y1 - 2025
N2 - In this study, we present a mixed-signal framework that utilizes MRAM (Magneto-resistive Random Access Memory) technology to emulate behaviors observed in biological neural networks on silicon substrates. While modern technology increasingly draws inspiration from biological neural networks, fully understanding these complex systems remains a significant challenge. Our framework integrates multi-bit MRAM synapse arrays and analog circuits to replicate essential neural functions, including Leaky Integrate and Fire (LIF) dynamics, Excitatory and Inhibitory Postsynaptic Potentials (EPSP and IPSP), the refractory period, and the lateral inhibition. A key challenge in using MRAM for neuromorphic systems is its low on/off resistance ratio, which limits the accuracy of current-mode analog computation. To overcome this, we introduce a current subtraction architecture that reliably generates multi-level synaptic currents based on MRAM states. This enables robust analog neural processing while preserving MRAM’s advantages, such as non-volatility and CMOS compatibility. The chip’s adjustable operating frequency allows it to replicate biologically realistic time scales as well as accelerate experimental processes. Experimental results from fabricated chips confirm the successful emulation of biologically inspired neural dynamics, demonstrating the feasibility of MRAM-based analog neuromorphic computation for real-time and scalable neural emulation.
AB - In this study, we present a mixed-signal framework that utilizes MRAM (Magneto-resistive Random Access Memory) technology to emulate behaviors observed in biological neural networks on silicon substrates. While modern technology increasingly draws inspiration from biological neural networks, fully understanding these complex systems remains a significant challenge. Our framework integrates multi-bit MRAM synapse arrays and analog circuits to replicate essential neural functions, including Leaky Integrate and Fire (LIF) dynamics, Excitatory and Inhibitory Postsynaptic Potentials (EPSP and IPSP), the refractory period, and the lateral inhibition. A key challenge in using MRAM for neuromorphic systems is its low on/off resistance ratio, which limits the accuracy of current-mode analog computation. To overcome this, we introduce a current subtraction architecture that reliably generates multi-level synaptic currents based on MRAM states. This enables robust analog neural processing while preserving MRAM’s advantages, such as non-volatility and CMOS compatibility. The chip’s adjustable operating frequency allows it to replicate biologically realistic time scales as well as accelerate experimental processes. Experimental results from fabricated chips confirm the successful emulation of biologically inspired neural dynamics, demonstrating the feasibility of MRAM-based analog neuromorphic computation for real-time and scalable neural emulation.
KW - analog neural network
KW - biological neural network
KW - inhibitory post synaptic potential
KW - lateral inhibition
KW - refractory period
UR - https://www.scopus.com/pages/publications/105008752001
U2 - 10.3389/fnins.2025.1599144
DO - 10.3389/fnins.2025.1599144
M3 - Article
AN - SCOPUS:105008752001
SN - 1662-4548
VL - 19
JO - Frontiers in Neuroscience
JF - Frontiers in Neuroscience
M1 - 1599144
ER -