2022
DOI: 10.3389/fphy.2022.839243
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Overview of Memristor-Based Neural Network Design and Applications

Abstract: Conventional von Newmann-based computers face severe challenges in the processing and storage of the large quantities of data being generated in the current era of “big data.” One of the most promising solutions to this issue is the development of an artificial neural network (ANN) that can process and store data in a manner similar to that of the human brain. To extend the limits of Moore’s law, memristors, whose electrical and optical behaviors closely match the biological response of the human brain, have b… Show more

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Cited by 14 publications
(13 citation statements)
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References 143 publications
(150 reference statements)
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“…Memristor, with a simple form of a sandwich-like, two-terminal structure but a dynamically reconfigured storage layer, has become the popular principle of artificial neuron [40]. Not only because the simple and scalable structure, but also for the resemblance of ions dynamics to biological neuron, in which ions will migrate inside the interlayer under the electrical inputs, imitating the ions diffusion through the neuron membrane [41].…”
Section: Implementation Of Neuron In Single Devicementioning
confidence: 99%
“…Memristor, with a simple form of a sandwich-like, two-terminal structure but a dynamically reconfigured storage layer, has become the popular principle of artificial neuron [40]. Not only because the simple and scalable structure, but also for the resemblance of ions dynamics to biological neuron, in which ions will migrate inside the interlayer under the electrical inputs, imitating the ions diffusion through the neuron membrane [41].…”
Section: Implementation Of Neuron In Single Devicementioning
confidence: 99%
“…[27][28][29][30][31] Upon the application of an external electrical stimulus, the MM system discloses programmable conductance states. [32][33][34] The prototypical In-memory computing and in-sensor computation using MM systems. a) In a traditional computational platform, the data D are transferred to a processing element, when a function f is implemented on the D, resulting in substantial costs in power and time.…”
Section: Introductionmentioning
confidence: 99%
“…[ 27–31 ] Upon the application of an external electrical stimulus, the MM system discloses programmable conductance states. [ 32–34 ] The prototypical MM operations, enabled by the phase‐change, i.e., thermally induced crystalline–amorphous transitions, tunnel magnetoresistance, viz., spin‐dependent tunnel conductance, and electrochemical reaction, e.g., redox and ion migration, are based on the switching of a dielectric layer in a two‐terminal metal–dielectric–metal configuration. [ 35–37 ] The MM systems, which have a small footprint, low programming energy, high reliability, and short switching time, exhibit a marked contrast in the electrical conductance as a result of the dependence of conductance states on the history of electrical stimuli.…”
Section: Introductionmentioning
confidence: 99%
“…Memristor has a remarkable contribution in synthesizing neuronal activities in a dynamical model. Memristive systems have a wide range of real-life applications in memristive neural networks [14], secure communication [15], neural computations [16], memory devices [17], etc.…”
Section: Introductionmentioning
confidence: 99%