Reminding Forgetful Organic Neuromorphic Device Networks
Daniel Felder, Katerina Muche, John Linkhorst, Matthias Wessling

TL;DR
This paper models and analyzes organic neuromorphic device networks affected by self-discharge, proposing a reminder method to mitigate performance degradation and enabling reliable neural network implementation on organic hardware.
Contribution
It introduces a simulation framework for organic neuromorphic networks, quantifies self-discharge effects, and proposes a reminder strategy to maintain network accuracy over time.
Findings
Single-layer networks remain accurate despite weight drift.
Multi-layer networks degrade over 20 minutes without intervention.
Reminder strategy reduces loss below 0.1 even in worst-case scenarios.
Abstract
Organic neuromorphic device networks can accelerate neural network algorithms and directly integrate with microfluidic systems or living tissues. Proposed devices based on the bio-compatible conductive polymer PEDOT:PSS have shown high switching speeds and low energy demand. However, as electrochemical systems, they are prone to self-discharge through parasitic electrochemical reactions. Therefore, the network's synapses forget their trained conductance states over time. This work integrates single-device high-resolution charge transport models to simulate neuromorphic device networks and analyze the impact of self-discharge on network performance. Simulation of a single-layer nine-pixel image classification network reveals no significant impact of self-discharge on training efficiency. And, even though the network's weights drift significantly during self-discharge, its predictions…
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