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Plasticity in memristive devices for spiking neural networks

机译:尖峰神经网络的忆阻设备的可塑性

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摘要

Memristive devices present a new device technology allowing for the realization of compact non-volatile memories. Some of them are already in the process of industrialization. Additionally, they exhibit complex multilevel and plastic behaviors, which make them good candidates for the implementation of artificial synapses in neuromorphic engineering. However, memristive effects rely on diverse physical mechanisms, and their plastic behaviors differ strongly from one technology to another. Here, we present measurements performed on different memristive devices and the opportunities that they provide. We show that they can be used to implement different learning rules whose properties emerge directly from device physics: real time or accelerated operation, deterministic or stochastic behavior, long term or short term plasticity. We then discuss how such devices might be integrated into a complete architecture. These results highlight that there is no unique way to exploit memristive devices in neuromorphic systems. Understanding and embracing device physics is the key for their optimal use.
机译:忆阻器件提出了一种新的器件技术,可实现紧凑的非易失性存储器。其中一些已经在工业化过程中。此外,它们表现出复杂的多级和可塑性行为,使其成为在神经形态工程中实施人工突触的良好候选者。但是,忆阻效应依赖于多种物理机制,并且一种技术与另一种技术的可塑性行为差异很大。在这里,我们介绍了在不同的忆阻设备上执行的测量以及它们提供的机会。我们证明了它们可用于实施不同的学习规则,这些规则的性质直接来自设备物理:实时或加速操作,确定性或随机行为,长期或短期可塑性。然后,我们讨论如何将此类设备集成到完整的体系结构中。这些结果表明,在神经形态系统中没有独特的方法来利用忆阻装置。了解和拥抱设备物理是最佳使用它们的关键。

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