The co-firing technology of combustible solid waste (CSW) and coal in the supercritical CO 2 (S-CO 2 ) circulating fluidized bed (CFB) can effectively deal with domestic waste, promote social and environmental benefits, improve the coal conversion rate, and reduce pollutant emission. This study focuses on the co-firing characteristics of CSW and coal under S-CO 2 power cycle, and simulations are conducted by employing Multiphase Particle-in-cell (MP-PIC) method integrated with the comprehensive chemical reaction models in a 300 MW S-CO 2 CFB boiler. Effects of operating parameters including fuel mixture proportion and first stage stoichiometry on the gas emission characteristics are further analyzed. Based on training and testing database based on the simulation results, a novel Improved Whale Optimization Algorithm and Bi-dictionary Long Short-Term Memory (IWOA-BiLSTM) algorithm model is established to predict CFB temperature, NOx emission concentration, and SO 2 emission concentration, respectively. Results show that CO and SO 2 decrease with the coal mass ratio of the fuel mixture increasing, while NOx increases. With the increase of first stage stoichiometry, CO increases, NOx declines, and the change of SO 2 is not obvious. Compared with two other basic algorithm models, the prediction error of the proposed algorithm model for the three targets is minimal with the average relative error of 0.032 %, 0.231 %, and 0.157 %, respectively, which can meet the prediction requirements with acceptable accuracy.
Keyphrases
- machine learning
- heavy metals
- deep learning
- particulate matter
- artificial intelligence
- risk assessment
- big data
- sewage sludge
- neural network
- reactive oxygen species
- mental health
- life cycle
- healthcare
- virtual reality
- stem cells
- emergency department
- solid state
- molecular dynamics
- cell therapy
- working memory
- climate change
- mesenchymal stem cells
- room temperature