| Literature DB >> 33646747 |
Bhaswar Chakrabarti1, Henry Chan2,3, Khan Alam1, Aditya Koneru3, Thomas E Gage2, Leonidas E Ocola2, Ralu Divan2, Daniel Rosenmann2, Abhishek Khanna4, Benjamin Grisafe4, Toby Sanders5, Suman Datta4, Ilke Arslan2, Subramanian K R S Sankaranarayan2,3, Supratik Guha1,2.
Abstract
Resistance switching in metal-insulator-metal structures has been extensively studied in recent years for use as synaptic elements for neuromorphic computing and as nonvolatile memory elements. However, high switching power requirements, device variabilities, and considerable trade-offs between low operating voltages, high on/off ratios, and low leakage have limited their utility. In this work, we have addressed these issues by demonstrating the use of ultraporous dielectrics as a pathway for high-performance resistive memory devices. Using a modified atomic layer deposition based technique known as sequential infiltration synthesis, which was developed originally for improving polymer properties such as enhanced etch resistance of electron-beam resists and for the creation of films for filtration and oleophilic applications, we are able to create ∼15 nm thick ultraporous (pore size ∼5 nm) oxide dielectrics with up to 73% porosity as the medium for filament formation. We show, using the Ag/Al2O3 system, that the ultraporous films result in ultrahigh on/off ratio (>109) at ultralow switching voltages (∼±600 mV) that are 10× smaller than those for the bulk case. In addition, the devices demonstrate fast switching, pulsed endurance up to 1 million cycles. and high temperature (125 °C) retention up to 104 s, making this approach highly promising for large-scale neuromorphic and memory applications. Additionally, this synthesis methodology provides a compatible, inexpensive route that is scalable and compatible with existing semiconductor nanofabrication methods and materials.Entities:
Keywords: conductive bridge memory; nanoporous alumina; resistive memory; sequential infiltration synthesis; ultralow power switching
Year: 2021 PMID: 33646747 DOI: 10.1021/acsnano.0c03201
Source DB: PubMed Journal: ACS Nano ISSN: 1936-0851 Impact factor: 15.881