Abstract:In the process of thermal power generation, the operation condition of combustion system is complicated and the delay is large, which makes it difficult to accurately measure the inlet NOx mass concentration in the selective catalytic reduction (SCR) flue gas denitration system. To solve this problem, a prediction model based on feature optimization and radial basis (RBF) neural network is proposed. Firstly, the variable after feature optimization is taken as the final input variable of the model. Secondly, the beetle swarm optimization (BSO) is used to optimize the neural network hyperparameters. Finally, a prediction model of inlet NOx concentration is established. The results show that the predictive results of the optimized variables are better than those of the original variables. After feature optimization and timely delay, the SRMSE of the model decreased by 44.5%, and the R2 increased by 2.3%. The neural network hyperparameters determined by BSO also improved the accuracy of the model.
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