Winner-takes-all mechanism realized by memristive neural network
Winner-Takes-All (WTA), an important mechanism in neural networks of recurrently connected neurons, is a critical element of many models of cortical processing. However, few WTA neural networks have been realized physically, especially by memristor networks. In this work, we have designed and implem...
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sg-ntu-dr.10356-1429812020-07-17T02:36:26Z Winner-takes-all mechanism realized by memristive neural network Wang, Jun Jie Yu, Qi Hu, Shao Gang Liu, Yanchen Guo, Rui Chen, Tu Pei Yin, You Liu, Yang School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Artificial Neural Networks Artificial Intelligence Winner-Takes-All (WTA), an important mechanism in neural networks of recurrently connected neurons, is a critical element of many models of cortical processing. However, few WTA neural networks have been realized physically, especially by memristor networks. In this work, we have designed and implemented a neural network with memristor-based synapses to realize the WTA in a neural system. Neuronal self-excitatory, excitatory, and inhibition by other neurons have been demonstrated. Competitions between two neurons, among three neurons, and between two groups of neurons are realized based on the memristive neural network. The winner neuron or winner group can suppress the other neuron(s) or other group(s) of neurons and dominate the neuronal firing. This work paves the way for further realization of complex models of cortical processing with memristive neural networks. Published version 2020-07-17T02:36:26Z 2020-07-17T02:36:26Z 2019 Journal Article Wang, J. J., Yu, Q., Hu, S. G., Liu, Y., Guo, R., Chen, T. P., . . . Liu, Y. (2019). Winner-takes-all mechanism realized by memristive neural network. Applied Physics Letters, 115(24), 243701-. doi:10.1063/1.5120973 0003-6951 https://hdl.handle.net/10356/142981 10.1063/1.5120973 2-s2.0-85076597170 24 115 en Applied Physics Letters © 2019 Author(s). All rights reserved. This paper was published by AIP Publishing in Applied Physics Letters and is made available with permission of 2019 Author(s). application/pdf |
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Engineering::Electrical and electronic engineering Artificial Neural Networks Artificial Intelligence Wang, Jun Jie Yu, Qi Hu, Shao Gang Liu, Yanchen Guo, Rui Chen, Tu Pei Yin, You Liu, Yang Winner-takes-all mechanism realized by memristive neural network |
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Winner-Takes-All (WTA), an important mechanism in neural networks of recurrently connected neurons, is a critical element of many models of cortical processing. However, few WTA neural networks have been realized physically, especially by memristor networks. In this work, we have designed and implemented a neural network with memristor-based synapses to realize the WTA in a neural system. Neuronal self-excitatory, excitatory, and inhibition by other neurons have been demonstrated. Competitions between two neurons, among three neurons, and between two groups of neurons are realized based on the memristive neural network. The winner neuron or winner group can suppress the other neuron(s) or other group(s) of neurons and dominate the neuronal firing. This work paves the way for further realization of complex models of cortical processing with memristive neural networks. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Wang, Jun Jie Yu, Qi Hu, Shao Gang Liu, Yanchen Guo, Rui Chen, Tu Pei Yin, You Liu, Yang |
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Article |
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Wang, Jun Jie Yu, Qi Hu, Shao Gang Liu, Yanchen Guo, Rui Chen, Tu Pei Yin, You Liu, Yang |
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Wang, Jun Jie |
title |
Winner-takes-all mechanism realized by memristive neural network |
title_short |
Winner-takes-all mechanism realized by memristive neural network |
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Winner-takes-all mechanism realized by memristive neural network |
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Winner-takes-all mechanism realized by memristive neural network |
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Winner-takes-all mechanism realized by memristive neural network |
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winner-takes-all mechanism realized by memristive neural network |
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2020 |
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https://hdl.handle.net/10356/142981 |
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1681058369263108096 |