Leveraging Non-Equilibrium ECRAM Dynamics for Short-Term Plasticity in Neuromorphic Circuits
Alex Currie, Sean Borkholder, Nithil Harris Manimaran, Huayuan Han, Cory Merkel + 2 more
TLDR
This paper leverages non-equilibrium ECRAM dynamics to efficiently implement short-term plasticity and temporal computation in neuromorphic circuits.
Key contributions
- Transforms volatile ECRAM dynamics into a computational resource for neuromorphic hardware via device-circuit co-design.
- Introduces a delay-feedback LIF neuron architecture co-designed with ECRAM synapses for activity-dependent conductance modulation.
- Demonstrates synaptic facilitation and intrinsic excitability modulation with 2 pJ/spike using experimentally characterized ECRAMs.
- Enables frequency-selective spike processing, allowing ECRAM synapses to act as tunable temporal filters in SNNs.
Why it matters
This paper is significant because it re-frames typically undesirable ECRAM device variability into a valuable computational resource for neuromorphic computing. By co-designing devices and circuits, it offers an energy-efficient hardware-native solution for short-term plasticity. This approach could lead to more biologically realistic and powerful spiking neural networks.
Original Abstract
Short-term plasticity (STP) is fundamental to temporal information processing in biological neural systems but remains difficult to realize efficiently in neuromorphic hardware. Memristive electrochemical random-access memory (ECRAM) devices naturally exhibit non-equilibrium ionic dynamics that produce transient conductance modulation; however, these behaviors are typically treated as undesirable variability or tolerated as side effects in memory-centric computing paradigms. In this work, we instead transform these volatile dynamics from a tolerated device artifact into a computational resource through a cross-layer device-circuit-system co-design framework. We introduce a delay-feedback leaky integrate-and-fire (LIF) neuron architecture co-designed with ECRAM synapses that exploits activity-dependent conductance modulation with negligible additional circuit overhead. The architecture integrates ECRAM-based synapses with a tunable delay-feedback spike-generation path, enabling transient device dynamics to directly modulate neuron excitability and synaptic efficacy. We used experimentally characterized ECRAM devices exhibiting transient conductance modulation (1.5 KOhms per spike) to develop a compact behavioral model suitable for circuit-level simulation. Circuit simulations demonstrate two key STP behaviors -- synaptic facilitation and intrinsic excitability modulation -- while consuming 2 pJ per spike, and the same device-driven mechanisms extend across multiple neuron topologies. Network-level analysis further demonstrates frequency-selective spike processing, allowing individual synapses to act as tunable temporal filters within spiking neural networks. This work demonstrates that non-equilibrium ECRAM dynamics can serve as a native hardware substrate for STP and temporal computation in neuromorphic circuits.
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