High-Precision Tuning of State for Memristive Devices by Adaptable Variation-Tolerant Algorithm

نویسندگان

  • Fabien Alibart
  • Ligang Gao
  • Brian Hoskins
  • Dmitri B. Strukov
چکیده

Using memristive properties common for titanium dioxide thin film devices, we designed a simple write algorithm to tune device conductance at a specific bias point to 1% relative accuracy (which is roughly equivalent to seven-bit precision) within its dynamic range even in the presence of large variations in switching behavior. The high precision state is nonvolatile and the results are likely to be sustained for nanoscale memristive devices because of the inherent filamentary nature of the resistive switching. The proposed functionality of memristive devices is especially attractive for analog computing with low precision data. As one representative example we demonstrate hybrid circuitry consisting of an integrated circuit summing amplifier and two memristive devices to perform the analog multiply-and-add (dot-product) computation, which is a typical bottleneck operation in information processing.

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عنوان ژورنال:
  • Nanotechnology

دوره 23 7  شماره 

صفحات  -

تاریخ انتشار 2012