Data processing: generic control systems or specific application – Generic control system – apparatus or process – Optimization or adaptive control
Reexamination Certificate
2006-05-23
2006-05-23
Knight, Anthony (Department: 2121)
Data processing: generic control systems or specific application
Generic control system, apparatus or process
Optimization or adaptive control
C700S044000, C700S028000, C700S019000, C700S031000, C700S045000, C700S053000
Reexamination Certificate
active
07050863
ABSTRACT:
A process control configuration system is provided for use in creating or viewing an integrated optimization and control block that implements an optimization routine and a multiple-input/multiple-output control routine. The configuration system may enable a user to display or configure the optimizer or the control routine. A storage routine may store information pertaining to a plurality of control and auxiliary variables and to a plurality of manipulated variables to be used by the optimization routine and/or the control routine. A display routine may present a display to a user regarding the information pertaining to the plurality of control and auxiliary variables and to the plurality of manipulated variables.
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Blevins Terrence L.
Mehta Ashish
Nixon Mark
Ottenbacher Ron
Thiele Dirk
Chang Sunray
Fisher-Rosemount Systems Inc.
Knight Anthony
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