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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
11

Test generation for fault isolation in analog and mixed-mode circuits

Chakrabarti, Sudip 05 1900 (has links)
No description available.
12

Introduction to data communication

January 1983 (has links)
Pierre A. Humblet. / "January, 1983." Caption title. / Bibliography: leaves 9-10. / NSF Grant ECS 79-19880
13

Investigation of Energy-Efficient Hybrid Analog/Digital Approximate Computation in Continuous Time

Guo, Ning January 2017 (has links)
This work investigates energy-efficient approximate computation for solving differential equations. It extends the analog computing techniques to a new paradigm: continuous-time hybrid computation, where both analog and digital circuits operate in continuous time. In this approach, the time intervals in the digital signals contain important information. Unlike conventional synchronous digital circuits, continuous-time digital signals offer the benefits of adaptive power dissipation and no quantization noise. Two prototype chips have been fabricated in 65 nm CMOS technology and tested successfully. The first chip is capable of solving nonlinear differential equations up to 4th order, and the second chip scales up to 16th order based on the first chip. Nonlinear functions are generated by a programmable, clockless, continuous-time 8-bit hybrid architecture (ADC+SRAM+DAC). Digitally-assisted calibration is used in all analog/mixed-signal blocks. Compared to the prior art, our chips makes possible arbitrary nonlinearities and achieves 16 times lower power dissipation, thanks to technology scaling and extensive use of class-AB analog blocks. Typically, the unit achieves a computational accuracy of about 0.5% to 5% RMS, solution times from a fraction of 1 micro second to several hundred micro seconds, and total computational energy from a fraction of 1 nJ to hundreds of nJ, depending on equation details. Very significant advantages are observed in computational speed and energy (over two orders of magnitude and over one order of magnitude, respectively) compared to those obtained with a modern MSP430 microcontroller for the same RMS error.
14

Exploiting device nonlinearity in analog circuit design

Odame, Kofi 08 July 2008 (has links)
This dissertation presents analog circuit analysis and design from a nonlinear dynamics perspective. An introduction to fundamental concepts of nonlinear dynamical systems theory is given. The procedure of nondimensionalization is used in order to derive the state space representation of circuits. Geometric tools are used to analyze nonlinear phenomena in circuits, and also to develop intuition about how to evoke certain desired behavior in the circuits. To predict and quantify non-ideal behavior, bifurcation analysis, stability analysis and perturbation methods are applied to the circuits. Experimental results from a reconfigurable analog integrated circuit chip are presented to illustrate the nonlinear dynamical systems theory concepts. Tools from nonlinear dynamical systems theory are used to develop a systematic method for designing a particular class of integrated circuit sinusoidal oscillators. This class of sinusoidal oscillators is power- and area-efficient, as it uses the inherent nonlinearity of circuit components to limit the oscillators' output signal amplitude. The novel design method that is presented is based on nonlinear systems analysis, which results in high-spectral purity oscillators. This design methodology is useful for applications that require integrated sinusoidal oscillators that have oscillation frequencies in the mid- to high- MHz range. A second circuit design example is presented, namely a bandpass filter for front end auditory processing. The bandpass filter mimics the nonlinear gain compression that the healthy cochlea performs on input sounds. The cochlea's gain compression is analyzed from a nonlinear dynamics perspective and the theoretical characteristics of the dynamical system that would yield such behavior are identified. The appropriate circuit for achieving the desired nonlinear characteristics are designed, and it is incorporated into a bandpass filter. The resulting nonlinear bandpass filter performs the gain compression as desired, while minimizing the amount of harmonic distortion. It is a practical component of an advanced auditory processor.
15

Programmable Analog Techniques For Precision Analog Circuits, Low-Power Signal Processing and On-Chip Learning

Srinivasan, Venkatesh 10 July 2006 (has links)
In this work, programmable analog techniques using floating-gate transistors have been developed to design precision analog circuits, low-power signal processing primitives and adaptive systems that learn on-chip. Traditional analog implementations lack programmability with the result that issues such as mismatch are corrected at the expense of area. Techniques have been proposed that use floating-gate transistors as an integral part of the circuit of interest to provide both programmability and the ability to correct for mismatch. Traditionally, signal processing has been performed in the digital domain with analog circuits handling the interface with the outside world. Such a partitioning of responsibilities is inefficient as signal processing involves repeated multiplication and addition operations that are both very power efficient in the analog domain. Using programmable analog techniques, fundamental signal processing primitives such as multipliers have been developed in a low-power fashion while preserving accuracy. This results in a paradigm shift in signal processing. A co-operative analog/digital signal processing framework is now possible such that the partitioning of tasks between the analog and digital domains is performed in a power efficient manner. Complex signal processing tasks such as adaptive filtering that learn the weight coefficients are implemented by exploiting the non-linearities inherent with floating-gate programming. The resulting floating-gate synapses are compact, low-power and offer the benefits of non-volatile weight storage. In summary, this research involves developing techniques for improving analog circuit performance and in developing power-efficient techniques for signal processing and on-chip learning.
16

High Performance Analog Circuit Design Using Floating-Gate Techniques

Serrano, Guillermo J. 30 July 2007 (has links)
The programmability property of floating-gate transistors is exploited in this work to compensate for mismatch and device parameter variations in various high performance analog circuits. A careful look is taken at the characteristics and behavior of floating-gate transistors; issues such as programming, precision, accuracy, and charge retention are addressed. An alternate approach to reduce the offset voltage of the amplifier is presented. The proposed approach uses floating-gate transistors as programmable current sources that provide offset compensation while being a part of the amplifier of interest during normal operation. This results in an offset voltage cancelation that is independent of other amplifier parameters and does not dissipate additional power. Two compact programmable architectures that implement a voltage reference based on the charge difference between two floating-gate transistors are introduced. The references exhibit a low temperature coefficient (TC) as all the transistors temperature dependencies are canceled. Programming the charge on the floating-gate transistors provides the flexibility of an arbitrary accurate voltage reference with a single design and allows for a high initial accuracy of the reference. Also, this work presents a novel programmable temperature compensated current reference. The proposed circuit achieves a first order temperature compensation by canceling the negative TC of an on-chip poly resistor with the positive TC of a MOS transistor operating in the ohmic region. Programmability of the ohmic resistor enables optimal temperature compensation while programmability of the reference voltage allows for an accurate current reference for a wide range of values. Finally, this work combines the already established DAC design techniques with floating-gate circuits to obtain a high precision converter. This approach enables higher accuracy along with a substantial decrease of the die size.
17

Charge-based analog circuits for reconfigurable smart sensory systems

Peng, Sheng-Yu 02 July 2008 (has links)
The notion of designing circuits based on charge sensing, charge adaptation, and charge programming is explored in this research. This design concept leads to a low-power capacitive sensing interface circuit that has been designed and tested with a MEMS microphone and a capacitive micromachined ultrasonic transducer. Moreover, by using the charge programming technique, a designed floating-gate based large-scale field-programmable analog array (FPAA) containing a universal sensor interface sets the stage for reconfigurable smart sensory systems. Based on the same charge programming technique, a compact programmable analog radial-basis-function (RBF) based classifier and a resultant analog vector quantizer have been developed and tested. Measurement results have shown that the analog RBF-based classifier is at least two orders of magnitude more power-efficient than an equivalent digital processor. Furthermore, an adaptive bump circuit that can facilitate unsupervised learning in the analog domain has also been proposed. A projection neural network for a support vector machine, a powerful and more complicated binary classification algorithm, has also been proposed. This neural network is suitable for analog VLSI implementation and has been simulated and verified on the transistor level. These analog classifiers can be integrated at the interface to build smart sensory systems.

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