Application of a Multiobjective Artificial Neural Network (ANN) in Industrial Reverse Osmosis Concentrate Treatment with a Fluidized Bed Fenton Process: Performance Prediction and Process Optimization

@inproceedings{Cai2021ApplicationOA,
  title={Application of a Multiobjective Artificial Neural Network (ANN) in Industrial Reverse Osmosis Concentrate Treatment with a Fluidized Bed Fenton Process: Performance Prediction and Process Optimization},
  author={Qinqing Cai and Brandon Chuan Yee Lee and Say Leong Ong and Jiangyong Hu},
  year={2021}
}
Industrial reverse osmosis concentrate (ROC) treatment with the fluidized bed reactor Fenton (FBR-Fenton) process was modeled with artificial neural network (ANN) and multilinear regression (MLR) t... 
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