3.8 Article

Dopant network processing units: towards efficient neural network emulators with high-capacity nanoelectronic nodes

期刊

出版社

IOP Publishing Ltd
DOI: 10.1088/2634-4386/ac1a7f

关键词

intelligent matter; neural networks in materio; neuromorphic computing; non von Neumann computing; nanoelectronic materials

资金

  1. We thank B J Geurts for fruitful discussions. We thank M H Siekman and J G M Sanderink for technical support. We acknowledge financial support from the University of Twente, the Dutch Research Council (NWO) Natuurkunde Projectruimte Grant No. 680-91-114, t
  2. University of Twente [680-91-114, 400-17-607, 16237]
  3. Dutch Research Council (NWO)
  4. Toyota Motor Europe NV

向作者/读者索取更多资源

This research introduces DNPUs as high-capacity neurons, transitioning from a single neuron framework to a multi-neuron framework to enhance the performance and accuracy of hardware neural networks.
The rapidly growing computational demands of deep neural networks require novel hardware designs. Recently, tuneable nanoelectronic devices were developed based on hopping electrons through a network of dopant atoms in silicon. These 'dopant network processing units' (DNPUs) are highly energy-efficient and have potentially very high throughput. By adapting the control voltages applied to its electrodes, a single DNPU can solve a variety of linearly non-separable classification problems. However, using a single device has limitations due to the implicit single-node architecture. This paper presents a promising novel approach to neural information processing by introducing DNPUs as high-capacity neurons and moving from a single to a multi-neuron framework. By implementing and testing a small multi-DNPU classifier in hardware, we show that feed-forward DNPU networks improve the performance of a single DNPU from 77% to 94% test accuracy on a binary classification task with concentric classes on a plane. Furthermore, motivated by the integration of DNPUs with memristor crossbar arrays, we study the potential of using DNPUs in combination with linear layers. We show by simulation that an MNIST classifier with only 10 DNPU nodes achieves over 96% test accuracy. Our results pave the road towards hardware neural network emulators that offer atomic-scale information processing with low latency and energy consumption.

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