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Testing planarity in linear timeHayer, Matthias 12 1900 (has links)
No description available.
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Quantification of parallel vibration transmission paths in discretized systemsInoue, Akira, January 2007 (has links)
Thesis (Ph. D.)--Ohio State University, 2007. / Title from first page of PDF file. Includes bibliographical references (p. 195-199).
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Suppression of the transient response in linear time-invariant systems /Landschoot, Timothy P. January 1994 (has links)
Thesis (M.S.)--Rochester Institute of Technology, 1994. / Typescript. Includes bibliographical references (leaf 123).
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Linear continuous-time system identification and state observer design by modal analysisEl-Shafey, Mohamed Hassan January 1987 (has links)
A new approach to the identification problem of linear continuous-time time-invariant systems from input-output measurements is presented. Both parametric and nonparametric system models are considered. The new approach is based on the use of continuous-time functions, the modal functions, defined in terms of the system output, the output derivatives and the state variables under the assumption that the order n of the observable system is known a priori. The modal functions are obtained by linear filtering operations of the system output, the output derivatives
and the state variables so that the modal functions are independent of the system instantaneous state. In this case, the modal functions are linear functions of the input exponential modes, and they contain none of the system exponential modes unlike the system general response which contains modes from both the system
and the input. The filters parameters, the modal parameters are estimated using linear regression techniques.
The modal functions and the modal parameters of the output and its derivatives
are used to identify parametric input-output and state models of the system. The coefficients of the system characteristic polynomial are obtained by solving n algebraic equations formed from the estimates of the modal parameters. Estimates
of the parameters associated with the system zeros are obtained by solving another set of linear algebraic equation. The system frequency response and step response are estimated using the output modal function. The impulse response is obtained by filtering the estimated step response using the output first derivative modal parameters.
A new method is presented to obtain the system poles as the eigenvalues of a data matrix formed from the system free response. The coefficients of the system characteristic polynomial are obtained from the data matrix through a simple recursive
equation. This method has some important advantages over the well known Prony's method.
The state modal functions are used to obtain a minimum-time observer that gives the continuous-time system state as a direct function of input-output samples in n sampling intervals. / Applied Science, Faculty of / Electrical and Computer Engineering, Department of / Graduate
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Time-invariant, Databased Modeling and Control of Batch ProcessesCorbett, Brandon January 2016 (has links)
Batch reactors are often used to produce high quality products because any batch that
does not meet quality speci cations can be easily discarded. However, for high-value
products, even a few wasted batches constitute substantial economic loss. Fortunately,
databases of historical data that can be exploited to improve operation are often
readily available. Motivated by these considerations, this thesis addresses the problem
of direct, data-based quality control for batch processes. Speci cally, two novel datadriven
modeling and control strategies are proposed.
The rst approach addresses the quality modeling problem in two steps. To begin,
a partial least squares (PLS) model is developed to relate complete batch trajectories
to resulting batch qualities. Next, the so called missing-data problem, encountered
when using PLS models partway through a batch, is addressed using a data-driven,
multiple-model dynamic modeling approach relating candidate input trajectories to
future output behavior. The resulting overall model provides a causal link between
inputs and quality and is used in a model predictive control scheme for direct quality
control. Simulation results for two di erent polymerization reactors are presented
that demonstrate the e cacy of the approach.
The second strategy presented in this thesis is a state-space motivated, timeinvariant
quality modeling and control approach. In this work, subspace identi cation
methods are adapted for use with transient batch data allowing state-space dynamic
models to be identifi ed from historical data. Next, the identifi ed states are related
through an additional model to batch quality. The result is a causal, time-independent
model that relates inputs to product quality. This model is applied in a shrinking
horizon model predictive control scheme. Signi cantly, inclusion of batch duration
as a control decision variable is permitted because of the time-invariant model. Simulation
results for a polymerization reactor demonstrate the superior capability and
performance of the proposed approach. / Thesis / Doctor of Philosophy (PhD) / High-end chemical products, ranging from pharmaceuticals to specialty plastics, are
key to improving quality of life. For these products, production quality is more
important than quantity. To produce high quality products, industries use a piece
of equipment called a batch reactor. These reactors are favorable over alternatives
because if any single batch fails to meet a quality specifi cation, it can be easily discarded.
However, given the high-value nature of these products, even a small number
of discarded batches is costly.
This motivates the current work which addresses the complex topic of batch quality
control. This task is achieved in two steps: first methods are developed to model
prior reactor behavior. These models can be applied to predict how the reactor
will behave under future operating policies. Next, these models are used to make
informed decisions that drive the reaction to the desired end product, eliminating
o -spec batches.
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Detection and diagnosis of parameters change in linear system using time-frequency transformationPark, Dae-hyun 16 September 1991 (has links)
A systematic optimization of the Cohen class time-frequency
transformation for detecting the parameters change is developed.
The local moments approach to change detection is proposed and a
general formula for the local moments is derived. The optimal
kernel functions of the time-frequency transformation are determined
based on the combined criteria of maximum sensitivity with respect to
parameters change and minimum distortion of physical interpretation
of the local moments. The sensitivity of the local moment with
respect to a certain kind of inputs is analyzed and a most "convenient"
and a "worst" input are identified. The results are presented in the
form of the case studies for detecting parameters change in simple
linear systems. / Graduation date: 1992
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Model reduction and simulation of complex dynamic systems /Gupta, Amit. January 1990 (has links)
Thesis (M.S.)--Rochester Institute of Technology, 1990. / Spine title: Model reduction of complex dynamic systems. Includes bibliographical references.
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Steady-state performance of discrete linear time-invariant systems /Haddleton, Steven W. January 1994 (has links)
Thesis (M.S.)--Rochester Institute of Technology, 1994. / Typescript. Includes bibliographical references (leaves 107-108).
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An algebraic approach to analysis and control of time-scalesJanuary 1983 (has links)
Xi-Cheng Lou ... [et al.]. / Bibliography: leaf 14. / "October, 1983." / Air Force Office of Scientific Research Contract AFOSR-82-0258 Natural Sciences and Engineering Research Council of Canada Grant A-1240
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Thermodynamics of electrical noise : a frequency-domain inequality for linear networksJanuary 1982 (has links)
by John L. Wyatt, Jr., William M. Siebert, Han-Ngee Tan. / "October, 1982." / Bibliography: p. 16-17. / National Science Foundation Grant No. ECS 800 6878
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