Results in Engineering (Mar 2025)

An interpretable and stacking ensemble model for predicting heat and mass transfer of desiccant wheel

  • Mengyang Li,
  • Liu Chen

Journal volume & issue
Vol. 25
p. 104181

Abstract

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The Solid desiccant air conditioning system is popular due to their thorough dehumidification, low energy consumption, and independent temperature and humidity control. In order to design, simulate and optimize the solid desiccant air conditioning system, an accurate model of desiccant wheel must be established. A prediction model by stacking ensemble learning for desiccant wheel is presented. The model uses an integration approach, Light Gradient Boosting Machine, Random Forest and Back Propagation Neural Network models are used as the first-level base models to learn the data, and the Linear Regression model as a meta-model integrates the output of the base model to obtain the final prediction results. Each base model uses Bayesian optimization for hyperparameter tuning. In addition, the contribution of each input feature and the decision-making process of the model are analyzed using the Shapley additive explanations. To evaluate the model, 13,095 data sets of desiccant wheel operation data were collected. The focus was on predicting the outlet temperature and humidity ratio. Results indicate that the proposed stacking model has notably enhanced its forecasting ability for these parameters. Coefficient of Determination (R2), Root Mean Squared Error (RMSE), and Mean Absolute Error (MAE) were used to measure this stacking model: the process side outlet temperature (R2 = 0.9467, RMSE=1.5239, and MAE = 1.2721), the process side outlet humidity ratio (R2 = 0.9743, RMSE = 0.5728, MAE = 0.4531). In conclusion, the proposed stacking model can provide reliable theoretical guidance for the solid air conditioning system with desiccant wheel as the core.

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