Memories - Materials, Devices, Circuits and Systems (Oct 2023)

Analyzing the impact of parasitics on a CMOS-Memristive crossbar neural network based on winner-take-all and Hebbian rule

  • Sherin A. Thomas,
  • Rohit Sharma,
  • Devarshi Mrinal Das

Journal volume & issue
Vol. 5
p. 100081

Abstract

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For cognitive tasks and classifications, neuromorphic systems have shown great potential. This paper presents a novel architecture using CMOS memristive synapses where the memristors are trained using the Hebbian rule, and the winner-take-all mechanism is used for the recognition task. The proposed architecture offers a simplified approach compared to previous state-of-the-art works, making it accessible for implementing pattern recognition tasks with in-memory computation. As the size of the memristive switching devices is in the nanometer scale, designing, modeling, and optimizing the system becomes increasingly complex. This complexity leads to various signal integrity issues that arise due to parasitic components of the crossbar. A crossbar array architecture is designed using the extracted crossbar’s parasitic components obtained using the Q3D extractor. The modeled architecture provides insight into the crossbar array’s parasitic affect behavior at the schematic level for different real-time applications and how the parasitics of the crossbar will affect the fidelity and performance of the system. The proposed architecture uses a threshold-based post-synaptic neuron, which does not require any capacitor, unlike the LIF neuron, and occupies a smaller area. A neuron refractory controller is designed to make the training process efficient by keeping track of the neuron already fired and preventing it from firing in the consecutive training phase. The CMOS memristive synapse uses an average of 0.32 nJ energy to recognize each pattern, much less than earlier works. The proposed architecture is validated using 180 nm CMOS technology.

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