Fouling modeling and prediction approach for heat exchangers using deep learning
Abstract
In this article, we develop a generalized and scalable statistical model for accurate prediction of fouling resistance using commonly measured parameters of industrial heat exchangers. This prediction model is based on deep learning where a scalable algorithmic architecture learns non-linear functional relationships between a set of target and predictor variables from large number of training samples. The efficacy of this modeling approach is demonstrated for predicting fouling in an analytically modeled cross-flow heat exchanger, designed for waste heat recovery from flue-gas using room temperature water. The performance results of the trained models demonstrate that the mean absolute prediction errors are under
- Publication:
-
International Journal of Heat and Mass Transfer
- Pub Date:
- October 2020
- DOI:
- 10.1016/j.ijheatmasstransfer.2020.120112
- Bibcode:
- 2020IJHMT.15920112S
- Keywords:
-
- Heat exchanger fouling;
- Deep learning;
- Cross-flow heat exchanger;
- Waste heat recovery;
- Fouling modeling and prediction;
- Ensemble model;
- Neural networks;
- Bagging