Abstract / Description of output
Devices that exhibit resistive switching are promising components for future nanoelectronics with applications ranging from emerging memory to neuromorphic computing and biosensors. In this work, we present an algorithm for identifying switchable devices i.e. devices that can be programmed in distinct resistive states and which change their state predictably and repeatably in response to input stimuli. The method is based on extrapolating the statistical significance of difference in between two distinct resistive states as measured from devices subjected to standardised bias protocols. The test routine is applied on distinct elements of 32x32 RRAM crossbar arrays and yields a measure of device switchability in the form of a statistical significance pvalue. Ranking devices by p-value shows that switchable devices are typically found in the bottom 10% and are therefore easily distinguishable from non-functional devices. Implementation of this algorithm dramatically cuts RRAM testing time by granting fast access to the best devices in each array as well as yield metrics.
Original language | Undefined/Unknown |
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Type | Dataset |
Media of output | xlsx |
Publisher | University of Southampton |
DOIs | |
Publication status | Published - 8 Apr 2016 |