- Three-stage numerical simulation of tunnel blasting dust diffusion based on field monitoring and CFD. In: Tunnelling and Underground Space Technology, v. 150 (August 2024). (2024):
- Research on fault detection and diagnosis of carbon dioxide heat pump systems in buildings based on transfer learning. In: Journal of Building Engineering, v. 85 (May 2024). (2024):
- An advanced ensemble clustering approach for data partitioning and mining to optimize performance in variable refrigerant flow systems. In: Journal of Building Engineering, v. 78 (November 2023). (2023):
- 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 (December 2016). (2016):
- An enhanced PCA method with Savitzky-Golay method for VRF system sensor fault detection and diagnosis. In: Energy and Buildings, v. 142 (May 2017). (2017):
- Identification and isolation of outdoor fouling faults using only built-in sensors in variable refrigerant flow system: A data mining approach. In: Energy and Buildings, v. 146 (July 2017). (2017):
- 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):
- A machine learning bayesian network for refrigerant charge faults of variable refrigerant flow air conditioning system. In: Energy and Buildings, v. 158 (January 2018). (2018):
- A comprehensive overview on the data driven and large scale based approaches for forecasting of building energy demand: A review. In: Energy and Buildings, v. 165 (April 2018). (2018):
- New fault diagnostic strategies for refrigerant charge fault in a VRF system using hybrid machine learning method. In: Journal of Building Engineering, v. 33 (January 2021). (2021):
- Improving prediction performance for indoor temperature in public buildings based on a novel deep learning method. In: Building and Environment, v. 148 (January 2019). (2019):