371 research outputs found

    Neuro-memristive Circuits for Edge Computing: A review

    Full text link
    The volume, veracity, variability, and velocity of data produced from the ever-increasing network of sensors connected to Internet pose challenges for power management, scalability, and sustainability of cloud computing infrastructure. Increasing the data processing capability of edge computing devices at lower power requirements can reduce several overheads for cloud computing solutions. This paper provides the review of neuromorphic CMOS-memristive architectures that can be integrated into edge computing devices. We discuss why the neuromorphic architectures are useful for edge devices and show the advantages, drawbacks and open problems in the field of neuro-memristive circuits for edge computing

    Device Modeling and Circuit Design of Neuromorphic Memory Structures

    Get PDF
    The downscaling of CMOS technology and the benefits gleaned thereof have made it the cornerstone of the semiconductor industry for many years. As the technology reaches its fundamental physical limits, however, CMOS is expected to run out of steam instigating the exploration of new nanoelectronic devices. Memristors have emerged as promising candidates for future computing paradigms, specifically, memory arrays and neuromorphic circuits. Towards this end, this dissertation will explore the use of two memristive devices, namely, Transition Metal Oxide (TMO) devices and Insulator Metal Transition (IMT) devices in constructing neuromorphic circuits. A compact model for TMO devices is first proposed and verified against experimental data. The proposed model, unlike most of the other models present in the literature, leverages the instantaneous resistance of the device as the state variable which facilitates parameter extraction. In addition, a model for the forming voltage of TMO devices is developed and verified against experimental data and Monte Carlo simulations. Impact of the device geometry and material characteristics of the TMO device on the forming voltage is investigated and techniques for reducing the forming voltage are proposed. The use of TMOs in syanptic arrays is then explored and a multi-driver write scheme is proposed that improves their performance. The proposed technique enhances voltage delivery across the selected cells via suppressing the effective line resistance and leakage current paths, thus, improving the performance of the crossbar array. An IMT compact model is also developed and verified against experiemntal data and electro-thermal device simulations. The proposed model describes the device as a memristive system with the temperature being the state variable, thus, capturing the temperature dependent resistive switching of the IMT device in a compact form suitable for SPICE implementation. An IMT based Integrate-And-Fire neuron is then proposed. The IMT neuron leverages the temperature dynamics of the device to deliver the functionality of the neuron. The proposed IMT neuron is more compact than its CMOS counterparts as it alleviates the need for complex CMOS circuitry. Impact of the IMT device parameters on the neuron\u27s performance is then studied and design considerations are provided

    Hybrid analysis of nonlinear circuits: DAE models with indices zero and one

    Get PDF
    We extend in this paper some previous results concerning the differential-algebraic index of hybrid models of electrical and electronic circuits. Specifically, we present a comprehensive index characterization which holds without passivity requirements, in contrast to previous approaches, and which applies to nonlinear circuits composed of uncoupled, one-port devices. The index conditions, which are stated in terms of the forest structure of certain digraph minors, do not depend on the specific tree chosen in the formulation of the hybrid equations. Additionally, we show how to include memristors in hybrid circuit models; in this direction, we extend the index analysis to circuits including active memristors, which have been recently used in the design of nonlinear oscillators and chaotic circuits. We also discuss the extension of these results to circuits with controlled sources, making our framework of interest in the analysis of circuits with transistors, amplifiers, and other multiterminal devices

    Bio-inspired Neuromorphic Computing Using Memristor Crossbar Networks

    Full text link
    Bio-inspired neuromorphic computing systems built with emerging devices such as memristors have become an active research field. Experimental demonstrations at the network-level have suggested memristor-based neuromorphic systems as a promising candidate to overcome the von-Neumann bottleneck in future computing applications. As a hardware system that offers co-location of memory and data processing, memristor-based networks represent an efficient computing platform with minimal data transfer and high parallelism. Furthermore, active utilization of the dynamic processes during resistive switching in memristors can help realize more faithful emulation of biological device and network behaviors, with the potential to process dynamic temporal inputs efficiently. In this thesis, I present experimental demonstrations of neuromorphic systems using fabricated memristor arrays as well as network-level simulation results. Models of resistive switching behavior in two types of memristor devices, conventional first-order and recently proposed second-order memristor devices, will be first introduced. Secondly, experimental demonstration of K-means clustering through unsupervised learning in a memristor network will be presented. The memristor based hardware systems achieved high classification accuracy (93.3%) on the standard IRIS data set, suggesting practical networks can be built with optimized memristor devices. Thirdly, implementation of a partial differential equation (PDE) solver in memristor arrays will be discussed. This work expands the capability of memristor-based computing hardware from ‘soft’ to ‘hard’ computing tasks, which require very high precision and accurate solutions. In general first-order memristors are suitable to perform tasks that are based on vector-matrix multiplications, ranging from K-means clustering to PDE solvers. On the other hand, utilizing internal device dynamics in second-order memristors can allow natural emulation of biological behaviors and enable network functions such as temporal data processing. An effort to explore second-order memristor devices and their network behaviors will be discussed. Finally, we propose ideas to build large-size passive memristor crossbar arrays, including fabrication approaches, guidelines of device structure, and analysis of the parasitic effects in larger arrays.PHDElectrical EngineeringUniversity of Michigan, Horace H. Rackham School of Graduate Studieshttps://deepblue.lib.umich.edu/bitstream/2027.42/147610/1/yjjeong_1.pd

    Neuromorphic on-chip recognition of saliva samples of COPD and healthy controls using memristive devices

    Get PDF
    Chronic Obstructive Pulmonary Disease (COPD) is a life-threatening lung disease, affecting millions of people worldwide. Implementation of Machine Learning (ML) techniques is crucial for the effective management of COPD in home-care environments. However, shortcomings of cloud-based ML tools in terms of data safety and energy efficiency limit their integration with low-power medical devices. To address this, energy efficient neuromorphic platforms can be used for the hardware-based implementation of ML methods. Therefore, a memristive neuromorphic platform is presented in this paper for the on-chip recognition of saliva samples of COPD patients and healthy controls. Results of its performance evaluations showed that the digital neuromorphic chip is capable of recognizing unseen COPD samples with accuracy and sensitivity values of 89% and 86%, respectively. Integration of this technology into personalized healthcare devices will enable the better management of chronic diseases such as COPD. © 2020, The Author(s)

    Memristors

    Get PDF
    This Edited Volume Memristors - Circuits and Applications of Memristor Devices is a collection of reviewed and relevant research chapters, offering a comprehensive overview of recent developments in the field of Engineering. The book comprises single chapters authored by various researchers and edited by an expert active in the physical sciences, engineering, and technology research areas. All chapters are complete in itself but united under a common research study topic. This publication aims at providing a thorough overview of the latest research efforts by international authors on physical sciences, engineering, and technology,and open new possible research paths for further novel developments
    corecore