Huanxin Chen
- Refrigerant charge fault diagnosis strategy for VRF systems based on stacking ensemble learning. In: Building and Environment, v. 234 (April 2023). (2023):
- A robust VRF fault diagnosis method based on ensemble BiLSTM with attention mechanism: Considering uncertainties and generalization. In: Energy and Buildings, v. 269 (August 2022). (2022):
- Research on diagnostic strategy for faults in VRF air conditioning system using hybrid data mining methods. In: Energy and Buildings, v. 247 (September 2021). (2021):
- A review on machine learning forecasting growth trends and their real-time applications in different energy systems. In: Sustainable Cities and Society, v. 54 (März 2020). (2020):
- Utility companies strategy for short-term energy demand forecasting using machine learning based models. In: Sustainable Cities and Society, v. 39 (Mai 2018). (2018):
- Parametrical analysis on characteristics of airflow generated by fabric air dispersion system in penetration mode. In: Energy and Buildings, v. 67 (Dezember 2013). (2013):
- Simulated Annealing Wrapped Generic Ensemble Fault Diagnostic Strategy for VRF System. In: Energy and Buildings, v. 224 (Oktober 2020). (2020):
- A statistical training data cleaning strategy for the PCA-based chiller sensor fault detection, diagnosis and data reconstruction method. In: Energy and Buildings, v. 112 (Januar 2016). (2016):
- A sensor fault detection and diagnosis strategy for screw chiller system using support vector data description-based D-statistic and DV-contribution plots. In: Energy and Buildings, v. 133 (Dezember 2016). (2016):
- Optimization of support vector regression model based on outlier detection methods for predicting electricity consumption of a public building WSHP system. In: Energy and Buildings, v. 151 (September 2017). (2017):
- Short and medium-term forecasting of cooling and heating load demand in building environment with data-mining based approaches. In: Energy and Buildings, v. 166 (Mai 2018). (2018):
- Study on deep reinforcement learning techniques for building energy consumption forecasting. In: Energy and Buildings, v. 208 (Februar 2020). (2020):