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Multi-Objective Input Signal Design for Plant Friendly Identification of Process Syste

Multi-objective input signal design for plant friendly identication of process systems Sridharakumar Narasimhan and Raghunathan Rengaswamy* ...

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Model selection and estimation in regression with grouped variables MingYuan Georgia Institute of Technology, Atlanta, USA andYi Lin ... diction in regression.Such a problem arises naturally in many practical situations with the multi-factor analysis-of-variance ...

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It shows two multi-period, multi-product models (Banker, Chang and Majumdar 1993; Banker and Johnston 1989) are specified, ... strategic variance/profitability analysisi, systems which decompose measures of budgeted versus actual net income into ii (SBU's ...

An Identification Method for Multiple-Input Single-Output Linear Systems with Estimation of Variance of Input-Output Nois

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Direct Closed-Loop Identification of Multi-Input Systems .

PDF | An analysis of the variance of the parameters of a multi-input plant estimated in closed-loop operation is performed. More specifically, the effect of the simultaneous excitation of an ...

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Identification of multi-input systems: variance analysis .

This paper examines the identification of multi-input systems. Motivated by an experiment design problem (should one excite the various inputs simultaneously or separately), we examine the effect of an additional input on the variance of the estimated coefficients of parametrized rational transfer function models, with special emphasis on the commonly used FIR, ARX, ARMAX, OE and BJ model ...

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Input/Output Behavior - Caltech Computing + Mathematical Sciences | Graduate Degree in Control + Dynamical Syste

Input/Output Behavior Research engineer Harold S. Black revolutionized telecommunications by in ... (In the case of a multi-input systems, Bbecomes a matrix of appropriate dimension.) Equation (4.4) is a system of linear, flrst order, difierential equations with ...

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Generalised minimum variance control of MIMO time-varying system with multiple dela

A multi-input and multi-output optimal controller for stochastic systems with time-varying dynamics is developed. ... Z. Li & C. Schmid, "Generalised minimum variance control of MIMO time-varying system with multiple delays," in International Conference on ...

Learning Stable Linear Dynamical Systems - CMU - Machine Learning Department - School of Computer Science - Carnegie Mellon Universi

Learning Stable Linear Dynamical Systems of future observations on these estimates. Once the forward recursion has completed and the nal values of the mean and variance x TjT and P TjT have been calculated, the backward pass proceeds in reverse by evaluating ...

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(PDF) Identification of multi-input systems: variance .

Identification of multi-input systems: variance analysis and input design issues a,1 b,2 M. Gevers L. Miˇskovi´c D. Bonvin b A. Karimi b a Center for Systems Engineering and Applied Mechanics (CESAME) Universit´e Catholique de Louvain B-1348 Louvain-la-Neuve, Belgium [email protected] b Laboratoire d’Automatique Ecole Polytechnique F ...