Self healable neuromorphic memtransistor elements for decentralized sensory signal processing in robotics

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Abstract

Sensory information processing in robot skins currently rely on a centralized approach where signal transduction (on the body) is separated from centralized computation and decision-making, requiring the transfer of large amounts of data from periphery to central processors, at the cost of wiring, latency, fault tolerance and robustness. We envision a decentralized approach where intelligence is embedded in the sensing nodes, using a unique neuromorphic methodology to extract relevant information in robotic skins. Here we specifically address pain perception and the association of nociception with tactile perception to trigger the escape reflex in a sensorized robotic arm. The proposed system comprises self-healable materials and memtransistors as enabling technologies for the implementation of neuromorphic nociceptors, spiking local associative learning and communication. Configuring memtransistors as gated-threshold and -memristive switches, the demonstrated system features in-memory edge computing with minimal hardware circuitry and wiring, and enhanced fault tolerance and robustness.

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John, R. A., Tiwari, N., Patdillah, M. I. B., Kulkarni, M. R., Tiwari, N., Basu, J., … Mathews, N. (2020). Self healable neuromorphic memtransistor elements for decentralized sensory signal processing in robotics. Nature Communications, 11(1). https://doi.org/10.1038/s41467-020-17870-6

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