Publications by authors named "Anthony Kenyon"

Previous research on transistor gate oxides reveals a clear link between hydrogen content and oxide breakdown. This has implications for redox-based resistive random access memory (ReRAM) devices, which exploit soft, reversible, dielectric breakdown, as hydrogen is often not considered in modeling or measured experimentally. Here quantitative measurements, corroborated across multiple techniques are reported, that reveal ReRAM devices, whether manufactured in a university setting or research foundry, contain concentrations of hydrogen at levels likely to impact resistance switching behavior.

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  • Artificial Intelligence (AI) is getting much better thanks to deep learning, which uses lots of simple computer units working together.
  • Traditional computers have trouble moving data quickly, so new methods like using memristors as memory devices can help solve this problem by being more efficient and powerful.
  • This work explains how memristive neural networks work, their design options, and offers guidance for those interested in studying or improving these new technologies.
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Recent years have seen a rapid rise of artificial neural networks being employed in a number of cognitive tasks. The ever-increasing computing requirements of these structures have contributed to a desire for novel technologies and paradigms, including memristor-based hardware accelerators. Solutions based on memristive crossbars and analog data processing promise to improve the overall energy efficiency.

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Resistive switching (RS) devices are emerging electronic components that could have applications in multiple types of integrated circuits, including electronic memories, true random number generators, radiofrequency switches, neuromorphic vision sensors, and artificial neural networks. The main factor hindering the massive employment of RS devices in commercial circuits is related to variability and reliability issues, which are usually evaluated through switching endurance tests. However, we note that most studies that claimed high endurances >10 cycles were based on resistance cycle plots that contain very few data points (in many cases even <20), and which are collected in only one device.

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  • Memristors are versatile components used in machine learning and neuromorphic hardware, functioning as memory elements and mimicking synaptic behaviors.
  • An analog operation mode in silicon oxide memristors is demonstrated to tackle edge detection problems.
  • The proposed solution shows competitive performance with existing memristor research, achieving a benchmark score of 0.465 on the BSDS500 dataset while using fewer components.
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Resistive Random Access Memory (RRAM) is a promising technology for power efficient hardware in applications of artificial intelligence (AI) and machine learning (ML) implemented in non-von Neumann architectures. However, there is an unanswered question if the device non-idealities preclude the use of RRAM devices in this potentially disruptive technology. Here we investigate the question for the case of inference.

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  • Metal-organic frameworks (MOFs) are being developed to improve the detection of hazardous chemicals, particularly explosives, despite facing challenges in analyzing larger or similar substances.
  • A new large-pore MOF has been synthesized, showing excellent sensitivity to explosive compounds like trinitrotoluene and pentaerythritol tetranitrate.
  • An advanced methodology has been created to minimize errors in sensing, and when combined with two other MOFs, this trio can accurately identify multiple explosives at low concentrations without relying on their concentration levels.
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We report a study of the relationship between oxide microstructure at the scale of tens of nanometres and resistance switching behaviour in silicon oxide. In the case of sputtered amorphous oxides, the presence of columnar structure enables efficient resistance switching by providing an initial structured distribution of defects that can act as precursors for the formation of chains of conductive oxygen vacancies under the application of appropriate electrical bias. Increasing electrode interface roughness decreases electroforming voltages and reduces the distribution of switching voltages.

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Interest in resistance switching is currently growing apace. The promise of novel high-density, low-power, high-speed nonvolatile memory devices is appealing enough, but beyond that there are exciting future possibilities for applications in hardware acceleration for machine learning and artificial intelligence, and for neuromorphic computing. A very wide range of material systems exhibit resistance switching, a number of which-primarily transition metal oxides-are currently being investigated as complementary metal-oxide-semiconductor (CMOS)-compatible technologies.

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  • Inorganic semiconductors like III-V materials are crucial for optoelectronic and microelectronic components used in various applications such as energy harvesting and telecommunications.
  • A new technique employing fast electron beam lithography has been used to create indium phosphide-based multilayer materials with enhanced waterproofing properties, allowing for better performance in harsh environments.
  • The research focuses on predicting and controlling the wettability of these materials, enabling the fabrication of waterproof components without coatings that could impair device functionality.
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Resistance switching, or Resistive RAM (RRAM) devices show considerable potential for application in hardware spiking neural networks (neuro-inspired computing) by mimicking some of the behavior of biological synapses, and hence enabling non-von Neumann computer architectures. Spike-timing dependent plasticity (STDP) is one such behavior, and one example of several classes of plasticity that are being examined with the aim of finding suitable algorithms for application in many computing tasks such as coincidence detection, classification and image recognition. In previous work we have demonstrated that the neuromorphic capabilities of silicon-rich silicon oxide (SiO) resistance switching devices extend beyond plasticity to include thresholding, spiking, and integration.

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We employ an advanced three-dimensional (3D) electro-thermal simulator to explore the physics and potential of oxide-based resistive random-access memory (RRAM) cells. The physical simulation model has been developed recently, and couples a kinetic Monte Carlo study of electron and ionic transport to the self-heating phenomenon while accounting carefully for the physics of vacancy generation and recombination, and trapping mechanisms. The simulation framework successfully captures resistance switching, including the electroforming, set and reset processes, by modeling the dynamics of conductive filaments in the 3D space.

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Electrically biasing thin films of amorphous, substoichiometric silicon oxide drives surprisingly large structural changes, apparent as density variations, oxygen movement, and ultimately, emission of superoxide ions. Results from this fundamental study are directly relevant to materials that are increasingly used in a range of technologies, and demonstrate a surprising level of field-driven local reordering of a random oxide network.

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In recent years, formidable effort has been devoted to exploring the potential of Resistive RAM (RRAM) devices to model key features of biological synapses. This is done to strengthen the link between neuro-computing architectures and neuroscience, bearing in mind the extremely low power consumption and immense parallelism of biological systems. Here we demonstrate the feasibility of using the RRAM cell to go further and to model aspects of the electrical activity of the neuron.

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  • A new method to create flexible luminescent solar concentrators (LSCs) using polydimethylsiloxane (PDMS) is introduced, allowing for customization in shape and low production costs.
  • The study highlights the use of Pyrromethene 567 laser dye as a fluorophore, which boasts a high quantum yield of 93%, ensuring effective energy conversion.
  • The research confirms that these flexible LSCs maintain high optical efficiency even when bent, making them suitable for applications in solar energy technology.
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Microsphere-based controlled release technologies have been utilized for the long-term delivery of proteins, peptides and antibiotics, although their synthesis poses substantial challenges owing to formulation complexities, lack of scalability, and cost. To address these shortcomings, we used the electrospray process as a reproducible, synthesis technique to manufacture highly porous (>94%) microspheres while maintaining control over particle structure and size. Here we report a successful formulation recipe used to generate spherical poly(lactic-co-glycolic) acid (PLGA) microspheres using the electrospray (ES) coupled with a novel thermally induced phase separation (TIPS) process with a tailored Liquid Nitrogen (LN2) collection scheme.

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We present results from an imaging study of filamentary conduction in silicon suboxide resistive RAM devices. We used a conductive atomic force microscope to etch through devices while measuring current, allowing us to produce tomograms of conductive filaments. To our knowledge this is the first report of such measurements in an intrinsic resistance switching material.

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  • The research uses a combined nanoscale/macroscale model to study how silver nanoparticles improve the performance of luminescent solar concentrators (LSCs).
  • By incorporating silver spheres into a thin dye layer, the LSC's optical efficiency jumps from 10.4% to 32.6%.
  • The boost in efficiency is mainly attributed to the scattering effects of the silver particles rather than their ability to absorb and re-emit light from the dye.
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  • Resistive switching in a metal-free silicon-based material presents a promising alternative to traditional metal oxide-based resistive RAM, offering advantages in fabrication and performance.
  • The study focuses on non-stoichiometric silicon-rich silicon dioxide films, showcasing multi-level and analog resistance modulation, along with standard two-level switching.
  • The devices demonstrate features like nonlinearity and self-rectification, enabling better integration in crossbar arrays while minimizing leakage currents, with further insights into conduction mechanisms provided by scanning tunneling microscopy.
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We present an analysis of factors influencing carrier transport and electroluminescence (EL) at 1.5 µm from erbium-doped silicon-rich silica (SiOx) layers. The effects of both the active layer thickness and the Si-excess content on the electrical excitation of erbium are studied.

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We report simulations of electrically pumped waveguide emitters in which the emissive layer contains silicon nanoclusters and erbium ions. Plasmonic coupling to metallic or semi-metallic overlayers provides enhancement of the radiative rate of erbium ions, enabling high quantum efficiency emission. Using 2D and 3D finite difference time domain (FDTD) simulations we show that up to 75% of the light emitted from the active layer can be coupled into a nanowire silicon rib waveguide.

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