Apparatuses and methods for actualizing future process outputs using artificial intelligence
US-2024369979-A1 · Nov 7, 2024 · US
US9910413B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-9910413-B2 |
| Application number | US-201314022873-A |
| Country | US |
| Kind code | B2 |
| Filing date | Sep 10, 2013 |
| Priority date | Sep 10, 2013 |
| Publication date | Mar 6, 2018 |
| Grant date | Mar 6, 2018 |
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An automatic tuning control system and method for controlling air pollution control systems such as a dry flue gas desulfurization system is described. The automatic tuning control system includes one or more PID controls and one or more supervisory MPC controller layers. The supervisory MPC controller layers are operable for control of an air pollution control system and operable for automatic tuning of the air pollution control systems using particle swarm optimization through simulation using one or more dynamic models, and through control system tuning of each of the PID controls, MPC controller layers and an integrated MPC/PID control design.
Opening claim text (preview).
The invention claimed is: 1. An automatic tuning control system for an air pollution control system comprises: the air pollution control system; a temperature sensor arranged downstream of a reactor, an SO 2 sensor arranged in a filter duct, and a slurry level sensor arranged in a head tank above the reactor sensor in the air pollution control system, with each of the sensors operative to measure a system parameter to obtain a system parameter measurement; a proportional integral derivative (PID) control for each of the sensors operative to receive the parameter measurement, to compare the received parameter measurement to a system parameter set point, and to control an air pollution control system valve device to affect the system parameter of slurry flow to the reactor based on the temperature sensor measurement, to control an air pollution control system valve device to affect the system parameter of dilution water flow based on the SO 2 sensor measurement, and to control an air pollution control system valve device to affect the system parameter of slurry flow to the head tank based on the slurry level sensor measurement, with each proportional integral derivative (PID) control operable for simultaneous tuning; one or more supervisory multivariable predictive control (MPC) controller layers operable to control the proportional integral derivative (PID) control, with the one or more supervisory multivariable predictive control (MPC) controller layers operable for tuning following simultaneous tuning of each proportional integral derivative (PID) control; and an integrated MPC/PID control design comprising a multivariable predictive control (MPC) controller layer operative to generate the system parameter set point used by the proportional integral derivative (PID) control; wherein the automatic tuning control system is operable for automatically tuned control of the air pollution control system by tuning of the proportional integral derivative (PID) control, the one or more supervisory multivariable predictive control (MPC) controller layers and the integrated MPC/PID control design using particle swarm optimization through simulation using one or more dynamic models mathematically representing air pollution control system behavior. 2. The system according to claim 1 , wherein the PID control controls a flue gas temperature within a dry flue gas desulfurization system, a wet flue gas desulfurization system, a sea water flue gas desulfurization system, a selective catalytic reduction system, a selective non-catalytic reduction system or an electro-static precipitation system air pollution control system via one or more slurry flow control valve devices. 3. The system according to claim 1 , wherein the PID control controls an emission amount within a dry flue gas desulfurization system, a wet flue gas desulfurization system, a sea water flue gas desulfurization system, a selective catalytic reduction system, a selective non-catalytic reduction system or an electro-static precipitation system air pollution control system via one or more water flow control valve devices. 4. The system according to claim 1 , wherein the PID control controls slurry level within a dry flue gas desulfurization system, a wet flue gas desulfurization system, a sea water flue gas desulfurization system, a selective catalytic reduction system, a selective non-catalytic reduction system, or an electro-static precipitation system air pollution control system via one or more slurry flow control valve devices. 5. The system according to claim 1 , wherein the supervisory MPC controller layer is operative to calculate air pollution control system operating settings used to control each of the one or more PID controls. 6. The system according to claim 1 , wherein the integrated MPC/PID control design comprising the MPC controller layer is operative to generate the system parameter set point for a slurry flow rate, a water flow rate, and a temperature used by the proportional integral derivative (PID) control. 7. The system according to claim 1 , wherein the one or more dynamic models comprise ordinary and/or partial differential equations, and/or data driven regression, and/or neural networks operative to predict operational behavior of the air pollution control system. 8. The system according to claim 1 , wherein automatic tuning of the air pollution control system occurs with a frequency in the range of 1 second to 5 hours based on dynamic response time constants in the air pollution control system. 9. A method of using an automatic tuning control system for control of an air pollution control system comprising: providing the air pollution control system; providing a temperature sensor arranged downstream of a reactor, an SO 2 sensor arranged in a filter duct, and a slurry level sensor arranged in a head tank above the reactor in the air pollution control system, with each of the sensors operative to measure a system parameter to obtain a system parameter measurement; providing a proportional integral derivative (PID) control for each of the sensors operative to receive the parameter measurement, to compare the received parameter measurement to a system parameter set point, and to control an air pollution control system valve device to affect the system parameter of slurry flow to the reactor based on the temperature sensor measurement, to control an air pollution control system valve device to affect the system parameter of dilution water flow based on the SO 2 sensor measurement, and to control an air pollution control system valve device to affect the system parameter of slurry flow to the head tank based on the slurry level sensor measurement, with each proportional integral derivative (PID) control operable for simultaneous tuning, one or more supervisory multivariable predictive control (MPC) controller layers operable to control the proportional integral derivative (PID) control with the one or more supervisory multivariable predictive control (MPC) controller layers operable for tuning following simultaneous tuning of each proportional integral derivative (PID) control, and an integrated MPC/PID control design comprising a multivariable predictive control (MPC) controller layer operative to generate the system parameter set point used by the proportional integral derivative (PID) control; and operating the automatic tuning control system for automatic tuning of the air pollution control system by tuning of the proportional integral derivative (PID) control, the one or more supervisory multivariable predictive control (MPC) controller layers and the integrated MPC/PID control design using particle swarm optimization through simulation using one or more dynamic models mathematically representing air pollution control system behavior. 10. The method according to claim 9 , further comprising controlling with the PID control a flue gas temperature within a dry flue gas desulfurization system, a wet flue gas desulfurization system, a sea water flue gas desulfurization system, a selective catalytic reduction system, a selective non-catalytic reduction system or an electro-static precipitation system air pollution control system via one or more slurry flow control valve devices. 11. The method according to claim 9 , further comprising controlling with the PID control an emission amount within a dry flue gas desulfurization system, a wet flue gas desulfurization system, a sea water flue gas desulfurization system, a selective catalytic reduction system, a selective non-catalytic reduction system or an electro-static precipitation system air pollution control system via one or more water flow control valve devices. 1
Sorption with wet devices, e.g. scrubbers · CPC title
Sulfur oxides · CPC title
Nitrogen; Compounds thereof · CPC title
Catalytic reduction devices · CPC title
Sorption with dry devices, e.g. beds · CPC title
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