2019
DOI: 10.1002/adfm.201807316
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Bienenstock, Cooper, and Munro Learning Rules Realized in Second‐Order Memristors with Tunable Forgetting Rate

Abstract: Memristors with synaptic functions are very promising for developing artificial neural networks. Compared with the extensively reported spike-timingdependent plasticity (STDP), Bienenstock, Cooper, and Munro (BCM) learning rules, the most accurate model of the synaptic plasticity to date, are more compatible with the neural computing system; however, the progress in the realization of the BCM rules has been quite limited. The realized BCM rules so far mostly performs just the spike-rate-dependent plasticity (S… Show more

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Cited by 75 publications
(70 citation statements)
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“…In the BCM framework, the high/low spike rate of a train can result in the potentiation/depression of the synaptic weight depending on whether the spike rate is higher than a threshold (θ) [30][31][32][33] . For the memristor-based artificial synapse, several groups have demonstrated BCM rules using rate-based presynaptic spikes, which have led to advances in the field [34][35][36] . These results show that the absolute change in the synaptic weight (i.e., the conductance change of the memristor, |ΔG c |) has a monotonic dependence on the spike rates in both the depression region (ΔG c < 0) and potentiation region (ΔG c > 0).…”
mentioning
confidence: 99%
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“…In the BCM framework, the high/low spike rate of a train can result in the potentiation/depression of the synaptic weight depending on whether the spike rate is higher than a threshold (θ) [30][31][32][33] . For the memristor-based artificial synapse, several groups have demonstrated BCM rules using rate-based presynaptic spikes, which have led to advances in the field [34][35][36] . These results show that the absolute change in the synaptic weight (i.e., the conductance change of the memristor, |ΔG c |) has a monotonic dependence on the spike rates in both the depression region (ΔG c < 0) and potentiation region (ΔG c > 0).…”
mentioning
confidence: 99%
“…However, such a monotonic change is different from the original BCM rule in neurobiology; that is, there should exist non-monotonic behavior (i.e., an enhanced depression effect (EDE)) in the depression region [30][31][32][33]37,38 . Additionally, previous memristor studies lack the following essential features: first, the lack of a multiplicative term between presynaptic and postsynaptic activities, and second the short-term modification [34][35][36] . This also marks a significant inconsistency with the biological BCM learning.…”
mentioning
confidence: 99%
“…www.advelectronicmat.de be utilized to mimic LTP with forgetting effect, [159,[161][162][163] STP to LTP transformation, [157,160,[164][165][166][167][168][169][170] metaplasticitry, [112,[171][172][173][174][175] and triplet-STDP. [176][177][178] The device structure, size, switching performance, and emulated synaptic plasticity of the representative memristive devices are summarized in Table 1.…”
Section: Memristive Synapsesmentioning
confidence: 99%
“…A similar approach has been adopted to biorealistically implement STDP learning rules in the biomolecular memristive devices. [157] Very recently, Xiong et al [163] realized the tunable forgetting rate by engineering the electrode/oxide interface by controlling the electrode composition in STO memristive devices, as reported in Figure 10d,e. Lu and his coworkers demonstrated BCM rules in Pd/WO x /W second-order memristive devices.…”
Section: Wwwadvelectronicmatdementioning
confidence: 99%
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