Literature DB >> 25594981

Memristor-based multilayer neural networks with online gradient descent training.

Daniel Soudry, Dotan Di Castro, Asaf Gal, Avinoam Kolodny, Shahar Kvatinsky.   

Abstract

Learning in multilayer neural networks (MNNs) relies on continuous updating of large matrices of synaptic weights by local rules. Such locality can be exploited for massive parallelism when implementing MNNs in hardware. However, these update rules require a multiply and accumulate operation for each synaptic weight, which is challenging to implement compactly using CMOS. In this paper, a method for performing these update operations simultaneously (incremental outer products) using memristor-based arrays is proposed. The method is based on the fact that, approximately, given a voltage pulse, the conductivity of a memristor will increment proportionally to the pulse duration multiplied by the pulse magnitude if the increment is sufficiently small. The proposed method uses a synaptic circuit composed of a small number of components per synapse: one memristor and two CMOS transistors. This circuit is expected to consume between 2% and 8% of the area and static power of previous CMOS-only hardware alternatives. Such a circuit can compactly implement hardware MNNs trainable by scalable algorithms based on online gradient descent (e.g., backpropagation). The utility and robustness of the proposed memristor-based circuit are demonstrated on standard supervised learning tasks.

Mesh:

Year:  2015        PMID: 25594981     DOI: 10.1109/TNNLS.2014.2383395

Source DB:  PubMed          Journal:  IEEE Trans Neural Netw Learn Syst        ISSN: 2162-237X            Impact factor:   10.451


  9 in total

1.  On the Generalization Ability of Online Gradient Descent Algorithm Under the Quadratic Growth Condition.

Authors:  Daqing Chang; Ming Lin; Changshui Zhang
Journal:  IEEE Trans Neural Netw Learn Syst       Date:  2018-01-17       Impact factor: 10.451

2.  Physical Realization of a Supervised Learning System Built with Organic Memristive Synapses.

Authors:  Yu-Pu Lin; Christopher H Bennett; Théo Cabaret; Damir Vodenicarevic; Djaafar Chabi; Damien Querlioz; Bruno Jousselme; Vincent Derycke; Jacques-Olivier Klein
Journal:  Sci Rep       Date:  2016-09-07       Impact factor: 4.379

3.  Training Deep Convolutional Neural Networks with Resistive Cross-Point Devices.

Authors:  Tayfun Gokmen; Murat Onen; Wilfried Haensch
Journal:  Front Neurosci       Date:  2017-10-10       Impact factor: 4.677

4.  Efficient and self-adaptive in-situ learning in multilayer memristor neural networks.

Authors:  Can Li; Daniel Belkin; Yunning Li; Peng Yan; Miao Hu; Ning Ge; Hao Jiang; Eric Montgomery; Peng Lin; Zhongrui Wang; Wenhao Song; John Paul Strachan; Mark Barnell; Qing Wu; R Stanley Williams; J Joshua Yang; Qiangfei Xia
Journal:  Nat Commun       Date:  2018-06-19       Impact factor: 14.919

5.  Using Memristors for Robust Local Learning of Hardware Restricted Boltzmann Machines.

Authors:  Maxence Ernoult; Julie Grollier; Damien Querlioz
Journal:  Sci Rep       Date:  2019-02-12       Impact factor: 4.379

6.  Compensating Circuit to Reduce the Impact of Wire Resistance in a Memristor Crossbar-Based Perceptron Neural Network.

Authors:  Son Ngoc Truong
Journal:  Micromachines (Basel)       Date:  2019-10-02       Impact factor: 2.891

7.  BrainFreeze: Expanding the Capabilities of Neuromorphic Systems Using Mixed-Signal Superconducting Electronics.

Authors:  Paul Tschirhart; Ken Segall
Journal:  Front Neurosci       Date:  2021-12-21       Impact factor: 4.677

8.  Acceleration of Deep Neural Network Training with Resistive Cross-Point Devices: Design Considerations.

Authors:  Tayfun Gokmen; Yurii Vlasov
Journal:  Front Neurosci       Date:  2016-07-21       Impact factor: 4.677

9.  Weighted Synapses Without Carry Operations for RRAM-Based Neuromorphic Systems.

Authors:  Yan Liao; Ning Deng; Huaqiang Wu; Bin Gao; Qingtian Zhang; He Qian
Journal:  Front Neurosci       Date:  2018-03-16       Impact factor: 4.677

  9 in total

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