Memristive Operational Amplifiers

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Authors

Ibrayev, Timur
Fedorova, Irina
Maan, Akshay Kumar
James, Alex Pappachen

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Procedia Computer Science

Abstract

Abstract The neuronal algorithms process the information coming from the natural environment in analog domain at sensory processing level and convert the signals to digital domain before performing cognitive processing. The weighting of the signals is an inherent way the neurons tell the brain on the importance of the inputs and digitisation using threshold logic the neurons way to make low level decisions from it. The analogue implementation of the weighted multiplication to input responses is essentially an amplification operation and so is the threshold logic comparator that can be implemented using amplifiers. In this sense, amplifiers are essential building in the development of threshold logic computing architectures. Specifically, operational amplifier would act as the best candidate for use with threshold logic circuits due to its useful properties of large gain, low output resistance and high input resistance. In this paper, a reconfigurable operational amplifier is proposed based on quantised conductance devices in combination with MOSFET devices. The designed amplifier is used to design a threshold logic cell that has the capability to work as different logic gates. The presented quantised conductance memristive operational amplifier show promising performance results in terms of power dissipation, on-chip area and THD values.

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Timur Ibrayev, Irina Fedorova, Akshay Kumar Maan, Alex Pappachen James, Memristive Operational Amplifiers, In Procedia Computer Science, Volume 41, 2014, Pages 114-119

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