ArXiv TLDR

On the Role of Preprocessing and Memristor Dynamics in Reservoir Computing for Image Classification

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2604.21602

Rishona Daniels, Duna Wattad, Ronny Ronen, David Saad, Shahar Kvatinsky

cs.NEcs.AIcs.ARcs.ETcs.LG

TLDR

Analyzes memristor dynamics and preprocessing in reservoir computing for image classification, achieving high MNIST accuracy and robustness.

Key contributions

  • Analyzes a parallel delayed feedback network (PDFN) RC architecture using volatile memristors.
  • Evaluates how memristor characteristics (decay rate, quantization, variability) impact RC performance.
  • Proposes preprocessing methods to enhance data representation in memristor-based reservoirs.
  • Achieves 95.89% MNIST accuracy and 94.2% robustness under 20% device variability.

Why it matters

This paper comprehensively evaluates memristor device requirements for reservoir computing. It demonstrates that volatile memristors achieve high accuracy and robustness in image classification, paving the way for compact, energy-efficient neuromorphic systems.

Original Abstract

Reservoir computing (RC) is an emerging recurrent neural network architecture that has attracted growing attention for its low training cost and modest hardware requirements. Memristor-based circuits are particularly promising for RC, as their intrinsic dynamics can reduce network size and parameter overhead in tasks such as time-series prediction and image recognition. Although RC has been demonstrated with several memristive devices, a comprehensive evaluation of device-level requirements remains limited. In this paper, we analyze and explain the operation of a parallel delayed feedback network (PDFN) RC architecture with volatile memristors, focusing on how device characteristics -- such as decay rate, quantization, and variability -- affect reservoir performance. We further discuss strategies to improve data representation in the reservoir using preprocessing methods and suggest potential improvements. The proposed approach achieves 95.89% classification accuracy on MNIST, comparable with the best reported memristor-based RC implementations. Furthermore, the method maintains high robustness under 20% device variability, achieving an accuracy of up to 94.2%. These results demonstrate that volatile memristors can support reliable spatio-temporal information processing and reinforce their potential as key building blocks for compact, high-speed, and energy-efficient neuromorphic computing systems.

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