Exploiting the Short-term to Long-term Plasticity Transition in Memristive Nanodevice Learning Architectures

06/27/2016
by   Christopher H. Bennett, et al.
0

Memristive nanodevices offer new frontiers for computing systems that unite arithmetic and memory operations on-chip. Here, we explore the integration of electrochemical metallization cell (ECM) nanodevices with tunable filamentary switching in nanoscale learning systems. Such devices offer a natural transition between short-term plasticity (STP) and long-term plasticity (LTP). In this work, we show that this property can be exploited to efficiently solve noisy classification tasks. A single crossbar learning scheme is first introduced and evaluated. Perfect classification is possible only for simple input patterns, within critical timing parameters, and when device variability is weak. To overcome these limitations, a dual-crossbar learning system partly inspired by the extreme learning machine (ELM) approach is then introduced. This approach outperforms a conventional ELM-inspired system when the first layer is imprinted before training and testing, and especially so when variability in device timing evolution is considered: variability is therefore transformed from an issue to a feature. In attempting to classify the MNIST database under the same conditions, conventional ELM obtains 84 classification, the imprinted, uniform device system obtains 88 classification, and the imprinted, variable device system reaches 92 classification. We discuss benefits and drawbacks of both systems in terms of energy, complexity, area imprint, and speed. All these results highlight that tuning and exploiting intrinsic device timing parameters may be of central interest to future bio-inspired approximate computing systems.

READ FULL TEXT

page 3

page 9

research
11/27/2017

FCLT - A Fully-Correlational Long-Term Tracker

We propose FCLT - a fully-correlational long-term tracker. The two main ...
research
09/12/2017

Spatio-temporal Learning with Arrays of Analog Nanosynapses

Emerging nanodevices such as resistive memories are being considered for...
research
04/11/2022

Persistence in Complex Systems

Persistence is an important characteristic of many complex systems in na...
research
02/13/2013

Pavlov's dog associative learning demonstrated on synaptic-like organic transistors

In this letter, we present an original demonstration of an associative l...
research
11/03/2022

Convolution channel separation and frequency sub-bands aggregation for music genre classification

In music, short-term features such as pitch and tempo constitute long-te...
research
09/11/2012

Counterfactual Reasoning and Learning Systems

This work shows how to leverage causal inference to understand the behav...

Please sign up or login with your details

Forgot password? Click here to reset