2019 IEEE International Symposium on Circuits and Systems (ISCAS) 2019
DOI: 10.1109/iscas.2019.8702245
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Memristive Non-Idealities: Is there any Practical Implications for Designing Neural Network Chips?

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Cited by 34 publications
(18 citation statements)
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“…Several nonidealities cause the deterioration of the performance of memristive crossbar-based neural net architectures. Figure 1 shows some nonidealities such as a limited number of stable resistive states, [36][37][38] conductance variation, [39][40][41] memristor aging issues, [21] endurance, [34,42] reliability issues, [43] and device failure. [35] Limiting the number of stable resistive state leads to low precision of dot product multiplication, which, in turn, reduces the memristive neural network accuracy.…”
Section: Memristor and Memristor Nonidealitiesmentioning
confidence: 99%
“…Several nonidealities cause the deterioration of the performance of memristive crossbar-based neural net architectures. Figure 1 shows some nonidealities such as a limited number of stable resistive states, [36][37][38] conductance variation, [39][40][41] memristor aging issues, [21] endurance, [34,42] reliability issues, [43] and device failure. [35] Limiting the number of stable resistive state leads to low precision of dot product multiplication, which, in turn, reduces the memristive neural network accuracy.…”
Section: Memristor and Memristor Nonidealitiesmentioning
confidence: 99%
“…This makes the use of memristor as an analog memory in large crossbar array not practical, however, as a discrete state device and as a binary state device, they can be used effectively, in small arrays. The crossbar also suffers from sneak path problems, parasitic resistors, and wire resistors, that can further limit the large scaling of crossbar that can be implemented today [61,54].…”
Section: Crossbar Arraysmentioning
confidence: 99%
“…The binarization operation transforms full-precision weights into binary values using the signum function, described in Eq. (1).…”
Section: A Binary Weight Regularizationmentioning
confidence: 99%
“…ReRAM devices, in such configurations, can be used to reduce the time complexity of 2D matrix-vector multiplications, used extensively during forward and backward propagation cycles in DNNs, from O(n 2 ) to O(n), and in extreme cases to O(1). However, current ReRAM crossbars face concerns of aging, non-idealities and endurance [1], that limit the accuracy of their conductive states, affecting the reliability and robustness of memristive DNNs.…”
Section: Introductionmentioning
confidence: 99%