2023
DOI: 10.1002/adfm.202302929
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Functional Materials for Memristor‐Based Reservoir Computing: Dynamics and Applications

Abstract: The booming development of artificial intelligence (AI) requires faster physical processing units as well as more efficient algorithms. Recently, reservoir computing (RC) has emerged as an alternative brain‐inspired framework for fast learning with low training cost, since only the weights associated with the output layers should be trained. Physical RC becomes one of the leading paradigms for computation using high‐dimensional, nonlinear, dynamic substrates. Among them, memristor appears to be a simple, adapt… Show more

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Cited by 30 publications
(10 citation statements)
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“…Thus, the hybridization of active dopants (metal NPs and metal oxide NPs) with the organic matrix, modulating the charge injection barrier and ions transport properties, is a valuable strategy to control the CFs towards improving the electronic performance. [211] Figure 9c shows a supramolecular assembly strategy for POM clusters to realize charge trapping and CF formation in low-power NVMs for neuromorphic computing. Downscaling of integrated memories (PC main memory, USB memory, and SSD memory) to the sub-10 nm level [212] permits the integration of stimuli-responsive molecules, with 3D structural frameworks and discrete energy levels, as switching elements.…”
Section: Pom-based Nvm Devicesmentioning
confidence: 99%
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“…Thus, the hybridization of active dopants (metal NPs and metal oxide NPs) with the organic matrix, modulating the charge injection barrier and ions transport properties, is a valuable strategy to control the CFs towards improving the electronic performance. [211] Figure 9c shows a supramolecular assembly strategy for POM clusters to realize charge trapping and CF formation in low-power NVMs for neuromorphic computing. Downscaling of integrated memories (PC main memory, USB memory, and SSD memory) to the sub-10 nm level [212] permits the integration of stimuli-responsive molecules, with 3D structural frameworks and discrete energy levels, as switching elements.…”
Section: Pom-based Nvm Devicesmentioning
confidence: 99%
“…Therefore, unlike classical von Neumann computing, POM-based RC has displayed increasing popularity toward neuromorphic computing. [211]…”
Section: Pom-based Nonvolatile Neuromorphic Devices Versus State-of-t...mentioning
confidence: 99%
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“…extremely small data memory elements that can change their logic state information by the potential-induced change in their resistive properties, 18,19 should have a positive impact on conventional computing as well as neuromorphic applications. 20,21 However, the immobilisation of POMs on various surfaces 22 and the revolutionary implementation of POM electronics in technical devices requires solving urgent problems of POM charge stabilisation on surfaces, multistate capacitance switching at room temperature (r.t.), spatially controlled positioning and nano-structuring of POMs, their crosstalk and electrical contacting, and, finally, efficient integration into existing production lines.…”
mentioning
confidence: 99%
“…This fast ion relaxation leads to good spike-dependent plasticity, especially at a high frequency (Figure ). Second, this device is set-step free and without a delay time, which is usually observed in threshold switching diffusive devices. , Consequently, it resembles more the Ca 2+ dynamics within biological synapses, leading to the good emulation of synaptic functions and the building of memristive operators for edge extraction with encouraging results. This feature also enables low-power operation, which is significantly important in memristive devices, especially in high-density arrays .…”
mentioning
confidence: 99%