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Pattern classification by memristive crossbar circuits using ex situ and in situ training

机译:使用 ex situ 和 in situ 训练通过忆阻纵横电路进行模式分类

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Memristors are memory resistors that promise the efficient implementation of synaptic weights in artificial neural networks. Whereas demonstrations of the synaptic operation of memristors already exist, the implementation of even simple networks is more challenging and has yet to be reported. Here we demonstrate pattern classification using a single-layer perceptron network implemented with a memrisitive crossbar circuit and trained using the perceptron learning rule by ex situ and in situ methods. In the first case, synaptic weights, which are realized as conductances of titanium dioxide memristors, are calculated on a precursor software-based network and then imported sequentially into the crossbar circuit. In the second case, training is implemented in situ , so the weights are adjusted in parallel. Both methods work satisfactorily despite significant variations in the switching behaviour of the memristors. These results give hope for the anticipated efficient implementation of artificial neuromorphic networks and pave the way for dense, high-performance information processing systems.
机译:忆阻器是记忆电阻器,有望在人工神经网络中有效实现突触权重。尽管已经存在忆阻器的突触操作的演示,但即使是简单网络的实现也更具挑战性,尚待报道。在这里,我们展示了使用具有记忆交叉开关电路并通过感知器学习规则通过非原位和原位方法进行训练的单层感知器网络进行模式分类的方法。在第一种情况下,在基于软件的前体网络上计算作为二氧化钛忆阻器电导的突触权重,然后将其顺序输入到纵横制电路中。在第二种情况下,训练是在原地进行的,因此权重是并行调整的。尽管忆阻器的开关行为有很大差异,但这两种方法仍能令人满意地工作。这些结果为人工神经形态网络的预期有效实施提供了希望,并为密集的高性能信息处理系统铺平了道路。

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