Simulation of a memristor-based spiking neural network immune to device variations.

IJCNN(2011)

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摘要
We propose a design methodology to exploit adaptive nanodevices (memristors), virtually immune to their variability. Memristors are used as synapses in a spiking neural network performing unsupervised learning. The memristors learn through an adaptation of spike timing dependent plasticity. Neurons' threshold is adjusted following a homeostasis-type rule. System level simulations on a textbook case show that performance can compare with traditional supervised networks of similar complexity. They also show the system can retain functionality with extreme variations of various memristors' parameters, thanks to the robustness of the scheme, its unsupervised nature, and the power of homeostasis. Additionally the network can adjust to stimuli presented with different coding schemes.
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关键词
encoding,memristors,nanoelectronics,neural nets,plasticity,unsupervised learning,adaptive nanodevice,coding scheme,device variation,homeostasis-type rule,memristor,spike timing dependent plasticity,spiking neural network,synapses,system level simulation,unsupervised learning
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