Data processing: structural design – modeling – simulation – and em – Modeling by mathematical expression
Reexamination Certificate
2007-11-13
2011-12-06
Rodriguez, Paul (Department: 2123)
Data processing: structural design, modeling, simulation, and em
Modeling by mathematical expression
Reexamination Certificate
active
08073659
ABSTRACT:
Multiple models for various stages of a non-linear process control are developed by clustering perturbation data obtained from the nonlinear process so as to permit multiple local data regions to be identified as a function of substantial similarity between the data, wherein the data of first data set represent the non-linear process. A discrete model corresponding to each of the local data regions is generated. The number of the discrete models may be reduced as a function of prediction error between actual outputs of the process and predicted outputs of the models and as a function of a gap metric based on closed loop similarity and frequency response similarity between the models.
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Gudi Ravindra D.
Gugaliya Jinendra K.
Mo Jinyi
Tan Guan Tien
Guill Russ
Honeywell International , Inc.
Rodriguez Paul
Schiff & Hardin LLP
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