Growing Perovskite Quantum Dots on Carbon Nanotubes for Neuromorphic Optoelectronic Computing
Brain-inspired (neuromorphic) computing that offers lower energy consumption and parallelism (simultaneous processing and memorizing) compared to von Neumann computing provides excellent opportunities in many computational tasks ranging from image recognition to speech processing. To accomplish neuromorphic computing, highly efficient optoelectronic synapses, which can be the building blocks of optoelectronic neuromorphic computers, are necessary. Currently, carbon nanotubes (CNTs), an attractive candidate to develop circuit-level photonic synapses, provide weak light responses. The inferior photoresponse of CNTs increases the energy consumption of neuromorphic optoelectronic devices. Herein, a method to grow organic–inorganic halide perovskite quantum dots (PQDs) directly on multiwall CNTs (MWCNTs) to increase the photosensitivity of optoelectronic synapses is demonstrated. The new hybrid material synchronizes the high photoresponse of PQDs and the excellent electrical properties of MWCNTs to provide photonic memory under very low light intensity (125 µW cm−2). However, neat MWCNTs do not show any detectable light response at the tested light intensity, as high as 25 mW cm−2. Since the PQDs are grown directly on and in the MWCNTs, the hybrid PQD-MWCNT provides a new direction for the future MWCNT-based optoelectronic devices for neuromorphic computing with a potential to break the von Neumann bottleneck.
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- 4016 Materials engineering
- 3403 Macromolecular and materials chemistry
- 0912 Materials Engineering
- 0906 Electrical and Electronic Engineering
Citation
Published In
DOI
EISSN
Publication Date
Volume
Issue
Related Subject Headings
- 4016 Materials engineering
- 3403 Macromolecular and materials chemistry
- 0912 Materials Engineering
- 0906 Electrical and Electronic Engineering