186 research outputs found
A Compact CMOS Memristor Emulator Circuit and its Applications
Conceptual memristors have recently gathered wider interest due to their
diverse application in non-von Neumann computing, machine learning,
neuromorphic computing, and chaotic circuits. We introduce a compact CMOS
circuit that emulates idealized memristor characteristics and can bridge the
gap between concepts to chip-scale realization by transcending device
challenges. The CMOS memristor circuit embodies a two-terminal variable
resistor whose resistance is controlled by the voltage applied across its
terminals. The memristor 'state' is held in a capacitor that controls the
resistor value. This work presents the design and simulation of the memristor
emulation circuit, and applies it to a memcomputing application of maze solving
using analog parallelism. Furthermore, the memristor emulator circuit can be
designed and fabricated using standard commercial CMOS technologies and opens
doors to interesting applications in neuromorphic and machine learning
circuits.Comment: Submitted to International Symposium of Circuits and Systems (ISCAS)
201
Homogeneous Spiking Neuromorphic System for Real-World Pattern Recognition
A neuromorphic chip that combines CMOS analog spiking neurons and memristive
synapses offers a promising solution to brain-inspired computing, as it can
provide massive neural network parallelism and density. Previous hybrid analog
CMOS-memristor approaches required extensive CMOS circuitry for training, and
thus eliminated most of the density advantages gained by the adoption of
memristor synapses. Further, they used different waveforms for pre and
post-synaptic spikes that added undesirable circuit overhead. Here we describe
a hardware architecture that can feature a large number of memristor synapses
to learn real-world patterns. We present a versatile CMOS neuron that combines
integrate-and-fire behavior, drives passive memristors and implements
competitive learning in a compact circuit module, and enables in-situ
plasticity in the memristor synapses. We demonstrate handwritten-digits
recognition using the proposed architecture using transistor-level circuit
simulations. As the described neuromorphic architecture is homogeneous, it
realizes a fundamental building block for large-scale energy-efficient
brain-inspired silicon chips that could lead to next-generation cognitive
computing.Comment: This is a preprint of an article accepted for publication in IEEE
Journal on Emerging and Selected Topics in Circuits and Systems, vol 5, no.
2, June 201
A CMOS Spiking Neuron for Dense Memristor-Synapse Connectivity for Brain-Inspired Computing
Neuromorphic systems that densely integrate CMOS spiking neurons and
nano-scale memristor synapses open a new avenue of brain-inspired computing.
Existing silicon neurons have molded neural biophysical dynamics but are
incompatible with memristor synapses, or used extra training circuitry thus
eliminating much of the density advantages gained by using memristors, or were
energy inefficient. Here we describe a novel CMOS spiking leaky
integrate-and-fire neuron circuit. Building on a reconfigurable architecture
with a single opamp, the described neuron accommodates a large number of
memristor synapses, and enables online spike timing dependent plasticity (STDP)
learning with optimized power consumption. Simulation results of an 180nm CMOS
design showed 97% power efficiency metric when realizing STDP learning in
10,000 memristor synapses with a nominal 1M{\Omega} memristance, and only
13{\mu}A current consumption when integrating input spikes. Therefore, the
described CMOS neuron contributes a generalized building block for large-scale
brain-inspired neuromorphic systems.Comment: This is a preprint of an article accepted for publication in
International Joint Conference on Neural Networks (IJCNN) 201
A CMOS Spiking Neuron for Brain-Inspired Neural Networks with Resistive Synapses and In-Situ Learning
Nanoscale resistive memories are expected to fuel dense integration of
electronic synapses for large-scale neuromorphic system. To realize such a
brain-inspired computing chip, a compact CMOS spiking neuron that performs
in-situ learning and computing while driving a large number of resistive
synapses is desired. This work presents a novel leaky integrate-and-fire neuron
design which implements the dual-mode operation of current integration and
synaptic drive, with a single opamp and enables in-situ learning with crossbar
resistive synapses. The proposed design was implemented in a 0.18 m CMOS
technology. Measurements show neuron's ability to drive a thousand resistive
synapses, and demonstrate an in-situ associative learning. The neuron circuit
occupies a small area of 0.01 mm and has an energy-efficiency of 9.3
pJspikesynapse
A Low-Power Single-Bit Continuous-Time ΔΣ Converter with 92.5 dB Dynamic Range for Biomedical Applications
A third-order single-bit CT-ΔΣ modulator for generic biomedical applications is implemented in a 0.15 µm FDSOI CMOS process. The overall power efficiency is attained by employing a single-bit ΔΣ and a subthreshold FDSOI process. The loop-filter coefficients are determined using a systematic design centering approach by accounting for the integrator non-idealities. The single-bit CT-ΔΣ modulator consumes 110 µW power from a 1.5 V power supply when clocked at 6.144 MHz. The simulation results for the modulator exhibit a dynamic range of 94.4 dB and peak SNDR of 92.4 dB for 6 kHz signal bandwidth. The figure of merit (FoM) for the third-order, single-bit CT-ΔΣ modulator is 0.271 pJ/level
Development of Analytical Profile of Lamotrigine and its API Formulation
Objective: The objective of this review is to put a light on the development of lamotrigine and its active pharmaceutical ingredients formulation with proper demonstration.
Method: In the present work, one of the most imperative spectrophotometric method which is RP-HPLC method has been developed for the quantitative estimation of lamotrigine in bulk and pharmaceutical formulations.
UV spectrophotometric method which involves the determination of Lamotrigine in bulk and in bulk drug and pharmaceutical formulation has maximum absorption at 307.5nm in methanol. It obeys Beer’s and Lambert’s law in the concentration range of 5-45 µg/ml.
A rapid and sensitive RP- HPLC Method with UV detection (270 nm) for routine analysis of Lamotrigine formulation was developed. Chromatography was performed with mobile phase containing a mixture of methanol and Phosphate buffer (65:35v/v) with flow rate 1.0 ml/min. In the range of 20-100 µg/ml, the linearity of lamotrigine shows a correlation co-efficient of 0.9998. The proposed method was validated by determining sensitivity and system suitability parameters
Design of Wideband Continuous-Time ΔΣ ADCs Using Two-Step Quantizers
Continuous-time delta sigma (CT-ΔΣ) ADCs are established as the data conversion architecture of choice for the next-generation wireless applications. Several efforts have been made to simultaneously improve the bandwidth and dynamic range of ΔΣ ADCs. We proposed using two-step quantizer in a single-loop CT-ΔΣ modulator to achieve higher conversion bandwidth. This paper presents a tutorial for employing the design technique through a 130n CMOS implementation. The proposed 640 MS/s, 4th order continuous-time delta sigma modulator (CT-ΔΣM) incorporates a two-step 5-bit quantizer, consisting of only 13 comparators. The CT-ΔΣM achieves a dynamic range of 70 dB, peak SNDR of 65.3 dB with 32 MHz bandwidth (OSR = 10) while consuming only 30 mW from the 1.2 V supply. The relevant design trade offs have been discussed and presented with simulation results
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