1,720,999 research outputs found

    Theoretical Foundations of Memristor Cellular Nonlinear Networks: Memcomputing With Bistable-Like Memristors

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    This paper presents the theory of a novel memcomputing paradigm based upon a memristive version of standard Cellular Nonlinear Networks. The insertion of a nonvolatile memristor in the circuit of each cell endows the dynamic array with the capability to store and retrieve data into and from the resistance switching memories, obviating the current need for extra memory blocks. Choosing the parameters of each cell circuit so that the memristors may undergo solely sharp transitions between two states, each processing element may be approximately described at any time as one of two first-order systems. Under this assumption, the classical Dynamic Route Map may be employed to synthesise and analyse the data storage and retrieval genes. A new system-theoretic methodology, called Second-Order Dynamic Route Map, is also introduced for the first time in this paper. This technique allows to study the operating principles of arrays with second-order processing elements, as is the case, in the proposed network, if the set up of cell circuit parameters induces analogue memristive dynamics. This paper shows how the novel tool may be adopted to investigate the operating mechanisms of a cellular array with second-order cells, which compute the element-wise logical OR between two binary images

    Analytical Study of the Fading Memory Phenomenon in a TaOx Memristor Model

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    This paper presents a theoretical study of the fading memory phenomenon in a TaOx-based memristor, manufactured and modeled at Hewlett-Packard Labs. Specifically, we derive a set of equations that can be used to characterize its steady-state response to a high-frequency zero-mean periodic square-wave voltage stimulus. Our results reveal a hidden property of the Dynamic Route Map (DRM) system-theoretic analysis tool, i.e. its capability to predict accurately the mean value of the state variable oscillation in first-order non-volatile memristors, at steady-state, as a function of the input amplitude alone. This DRM property may be useful in real-world memristor-based applications, where voltage pulses are most often employed to modulate the states of practical memristor devices

    High Frequency Response of Non-Volatile Memristors

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    This paper presents an analytical investigation of the transient and steady-state response of non-volatile memristors to high frequency periodic inputs, using as a case study a TaOx-based nano-scale memristor model derived at HP Labs. For the first time, we provide a mathematical proof for the fading memory phenomenon in memristors stimulated by periodic inputs in the high frequency limit. Specifically, we demonstrate that the steady-state response of a non-volatile memristor, exhibiting asymmetric switching kinetics with respect to the polarity of the input, depends only on the amplitude of the testing signal and not on the device initial conditions. Based on the results of our analyses, we provide an alternative method for tuning the memristor state by using high-frequency AC inputs, and introduce a new system-theoretic visualization tool, namely the input-referred High-Frequency Dynamic Route Map (HF-DRM), that allows the reproduction of the memristor time-response to any high-frequency periodic input from each admissible initial condition. The purely theoretical results introduced in this paper could inspire new approaches for modulating the memory states of practical non-volatile memristors

    Multi-tasking and Memcomputing with Memristor Cellular Nonlinear Networks

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    Memristor Cellular Nonlinear Networks (M-CNNs) have been recently introduced as a functional upgrade of standard CNNs, empowered by the potential of memristors to perform storage and computing functionalities in the same area. This paper exploits the diverse features of M-CNNs, which are equipped with threshold-based binary resistance switching devices, introducing two state-of-the-art image processing MCNNs: a) the multi-tasking CORNER-EDGE M-CNN, which performs corner or edge detection depending on the initial states of the memristors within the network; b) the memcomputing STORE-EDGE M-CNN, which outputs the edges of a binary input image, that is simultaneously stored in the memristors of the cellular array

    Image Processing by Cellular Memcomputing Structures

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    The introduction of memcomputing memristors into the design of Cellular Nonlinear Networks (CNNs) allows to reduce the integrated circuit area typically allocated to each processing element in hardware realizations. Furthermore, the highly nonlinear dynamics of memristors enriches the multivariate signal processing capabilities of these cellular memprocessing structures. This is demonstrated in this paper, where the standard and generalized Dynamic Route Map analysis tools are employed to elucidate the mechanisms by which a Memristor CNN with bistable-like and analog dynamic nonvolatile memristors executes fundamental image processing operations, respectively

    Theoretical Foundations of Memristor Cellular Nonlinear Networks: Stability Analysis With Dynamic Memristors

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    If the memristor, used in each cell of a memristive variant of the standard space-invariant Cellular Nonlinear Network (CNN), undergoes analogue memductance changes, the processing element operates as a second-order system. The Dynamic Route Map (DRM) technique, applicable to investigate first-order systems only, is no longer relevant. In this manuscript, a recently introduced methodology, generalizing the DRM technique to second-order systems, is applied to the models of Memristor CNN (M-CNN) cells, accomodating dynamic memristors. This allows to gain insights into the operating principles of these cellular structures, which make computations through the evolution of their states toward prescribed equilibria. Our analysis uncovers all possible local and global phenomena, which may emerge in the cell phase space under zero offset current for any self-feedback synaptic weight. Under these hypotheses, the dynamics of the M-CNN cell may significantly differ from those of a standard space-invariant CNN counterpart. The insertion of an offset current into each cell endows it with further properties, including monostability. The analysis method is used to demonstrate how a non-autonomous memristive array exploits the capability of its cells to feature monostability or bistability, depending upon the respective offset currents, to compute the element-wise logical AND between two binary images

    CNNs with bistable-like non-volatile memristors: a novel mem-computing paradigm for the IoT era

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    This work presents a novel mem-computing paradigm for the Internet-of-Things era. The paradigm revolves around the peculiar feature of memristors to process information and store data in the same physical location in order to enhance the performance of Cellular Nonlinear Networks, especially in view of a future hardware implementation and its integration with state-of-the-art high-resolution visual sensor arrays. A bistable-like non-volatile memristor is used in each dynamic processor of the cellular network in place for the linear resistor of a standard realization. The resulting cell is then endowed with a couple of possible Dynamic Route Maps, one for each of the two memristor states. This peculiar property endows the network with new functionalities as compared to a standard nonlinear dynamic array

    DC Characterization of Numerically Efficient and Stable Locally Active Device Models

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    In this work, we focus on two locally active device models and present, firstly, the simplification of a 3D modified Poole-Frenkel conduction based model on a mathematical basis, which leads to a compact and numerically efficient form of the conductance expression. Then, we present a transformation of the equations of a thermally induced phase transition based locally active device model such that the resulting set of equations is numerically stable and requires less simulation time. The new versions of both models share a similar form, though their state variables have different physical meanings. As an important aspect of their S-shaped DC I-V curves, we examine the DC characteristics of these equivalent models and derive analytical expressions for the peak and valley points in terms of the physically meaningful model parameters. Theoretical results are verified through numerical simulations while our findings may support device manufacturers to adopt a systematical approach to tailor the fundamental characteristics of locally active devices and help circuit designers to execute low cost and robust simulations of large scale systems utilizing them

    Analytical Derivation of Sharp-Edge-of-Chaos Domain in a One-Dimensional Memristor Array

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    In this work, we present analytical derivation of Sharp-Edge-of-Chaos (SEOC) domain for one dimensional (1D) reaction-diffusion arrays where we assume 1-port coupling with periodic boundary conditions. We consider a general form for the complexity function of the uncoupled cell and following an iterative approach, we derive the analytical formula of the destabilization condition for the 1D reaction-diffusion array with n elements. The destabilization condition further gives the critical value of the coupling resistor element for the emergence of pattern formation across the array. In order to demonstrate the functionality of the analytical derivations, we examine the normalized version of the complexity function of a practical memristive cell, and investigate the evolution of the critical value of the coupling resistor of the 1D array with respect to the parameter values of the complexity function and to the array size. In this way, we reveal a time-efficient simulation method for the determination of the destabilization condition in 1D memristive reaction-diffusion arrays which can be adopted for arrays of higher dimensions as well as for n-port couplings in the future

    Mem-computing CNNs with bistable-like memristors

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    In this paper we propose a new mem-computing image processing architecture, called Memristor Cellular Nonlinear Network, which leverages the unique capability of nonvolatile memristors to compute and store data in the same physical nano-scale locations. Adopting a bistable-like memristor in place for the linear resistor in the standard realization of a cell of the nonlinear dynamic array, the resulting network is capable to process information by exploiting the time evolution of the voltages across the memristors as well as to store/retrieve results into/ from the memristances. This attractive feature, absent in a standard Cellular Nonlinear Network, may pave the way towards the future development of a new generation of visual processors with unprecedented spatial resolution
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