2022
DOI: 10.1038/s41928-022-00878-9
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A memristive deep belief neural network based on silicon synapses

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Cited by 29 publications
(19 citation statements)
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“…In addition, Wang et al reported an important method for fabricating memristors based on a CMOS integrated circuit technology. 50 The schematic of memristive synapses based on two-terminal floating-gate devices is shown in Figure 6c, in which it can be found that the as-fabricated silicon-based neural synaptic devices show significantly high performance, which meets the requirements for neuromorphic computing. Further, they have implemented an ultrahigh-accuracy image recognition using the as-fabricated memristor device array, which is expected to be applied to intelligent recognition systems in AI.…”
Section: Memristor-based Chipsmentioning
confidence: 99%
“…In addition, Wang et al reported an important method for fabricating memristors based on a CMOS integrated circuit technology. 50 The schematic of memristive synapses based on two-terminal floating-gate devices is shown in Figure 6c, in which it can be found that the as-fabricated silicon-based neural synaptic devices show significantly high performance, which meets the requirements for neuromorphic computing. Further, they have implemented an ultrahigh-accuracy image recognition using the as-fabricated memristor device array, which is expected to be applied to intelligent recognition systems in AI.…”
Section: Memristor-based Chipsmentioning
confidence: 99%
“…First, we divide the collected device structure parameters as well as the impact ionization coefficients into two parts: the training data and the test data. The DNN and the training data are then used to train a model for the impact ionization coefficients, and, finally, the test data are used to test the accuracy of the prediction model [ 19 , 20 , 21 , 22 ]. As shown in Figure 8 , the DNN used in this work consisted of four hidden layers, an input layer, and, finally, an impact ionization coefficient unit.…”
Section: Deep Neural Network For Impact Ionization Coefficient Predic...mentioning
confidence: 99%
“…Memristors, which are two-terminal devices that change their electrical conductance and store analog values, have been widely employed as synapses in artificial neural networks due to their simple structure, non-volatile analog memory properties, and inherent ability to process vector-matrix multiplication when they are fabricated in a crossbar array structure. [8][9][10][11][12][13][14][15][16] Based on the desirable characteristics of the memristor crossbar array, various studies have demonstrated that the energy efficiency, hardware size, and inference speed can be effectively improved compared with the conventional CMOS-based processors 12,17,18 Despite the effectiveness of memristors as synapses in neural network systems, it is hard to train the weights of the neural network in a memristor crossbar array. Two-terminal memristors show long retention and fast speed, but they usually undergo severe non-linear and asymmetric update properties.…”
Section: Introductionmentioning
confidence: 99%
“…Memristors, which are two-terminal devices that change their electrical conductance and store analog values, have been widely employed as synapses in artificial neural networks due to their simple structure, non-volatile analog memory properties, and inherent ability to process vector-matrix multiplication when they are fabricated in a crossbar array structure. 8–16 Based on the desirable characteristics of the memristor crossbar array, various studies have demonstrated that the energy efficiency, hardware size, and inference speed can be effectively improved compared with the conventional CMOS-based processors 12,17,18…”
Section: Introductionmentioning
confidence: 99%