Control of floor heating process Siri Hofstad Trapnes Supervisors: Sigurd Skogestad and Chriss Grimholt Direct heating in the floor and room Keep the temperature.

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Control of floor heating process Siri Hofstad Trapnes Supervisors: Sigurd Skogestad and Chriss Grimholt Direct heating in the floor and room Keep the temperature in the room within optimal bounds in order to save energy costs Simple and advanced model

Steps: 1) Creating the model - Matlab, Simulink 2) Implementation of the control structure - PI control - SIMC

3) Finding the optimal temperature - Quadratic programming 4) Finding a control variable that is independent of disturbances - Nullspace method