Identification and Control of NOx Emissions Using Neural Networks |
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Authors: | Jaques Reifman Earl E Feldman |
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Institution: | 1. Reactor Analysis Division , Argonne National Laboratory , Argonne , Illinois , USA jreifman@anl.gov;3. Reactor Analysis Division , Argonne National Laboratory , Argonne , Illinois , USA |
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Abstract: | ABSTRACT We investigate the application of two classes of artificial neural networks for the identification and control of discrete-time nonlinear dynamical systems. A fully connected recurrent network is used for process identification, and a multilayer feedforward network is used for process control. The two neural networks are arranged in series for closed-loop control of oxides of nitrogen (NOx) emissions of a simplified representation of a dynamical system. Plant data from one of Commonwealth Edison's coal-fired power plants are used for testing the approach, with initial results indicating that the method is feasible. However, further work is required to determine whether the method remains feasible as the number of state variables and control variables are increased. |
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