Abstract

Coal-fired power plants are the main electric power source across many countries and cause major air pollution problems such as acid rain, smog, ozone depletion, and global warming. According to the best of the authors' knowledge, this is by far the first study that proposed 1-dimensional Convolutional Neural Network (1d-CNN) in combination with teaching learning self-study optimization (TLSO) algorithm for NOx emissions reduction by optimizing process input variables in a pulverized coal-fired power plant. The proposed model reduced the NOx emissions by 50.9%. In addition, the reduction experiment resulted in the early convergence superiority of the TSLO (130 s, 30th iteration) compared to genetic algorithm and Bayesian optimization. Based on the result, it is evident that combination of computationally inexpensive 1d-CNN and relatively fast converging TLSO could help process engineers reduce NOx emissions, which could ultimately contribute towards the goal of a sustainable environment.

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