Chengliang Xu
- Interpretability assessment of convolutional neural network-based fault diagnosis for air handling units working in three seasons. In: Energy and Buildings, v. 324 (December 2024). (2024):
- Effects of various information scenarios on layer-wise relevance propagation-based interpretable convolutional neural networks for air handling unit fault diagnosis. In: Building Simulation. :
- An interpretable graph convolutional neural network based fault diagnosis method for building energy systems. In: Building Simulation, v. 17, n. 7 (27 June 2024). (2024):
- A hybrid transfer learning to continual learning strategy for improving cross-building energy prediction in data increment scenario. In: Journal of Building Engineering, v. 95 (October 2024). (2024):
- Fault diagnosis for cross-building energy systems based on transfer learning and model interpretation. In: Journal of Building Engineering, v. 91 (August 2024). (2024):
- An improved transfer learning strategy for short_term cross-building energy prediction using data incremental. In: Building Simulation, v. 17, n. 1 (January 2024). (2024):
- Quantile regression based probabilistic forecasting of renewable energy generation and building electrical load: A state of the art review. In: Journal of Building Engineering, v. 79 (November 2023). (2023):
- Interpretation and explanation of convolutional neural network-based fault diagnosis model at the feature-level for building energy systems. In: Energy and Buildings, v. 295 (September 2023). (2023):
- Interpretation of convolutional neural network-based building HVAC fault diagnosis model using improved layer-wise relevance propagation. In: Energy and Buildings, v. 286 (May 2023). (2023):
- A spatial-temporal layer-wise relevance propagation method for improving interpretability and prediction accuracy of LSTM building energy prediction. In: Energy and Buildings, v. 271 (September 2022). (2022):
- An improved stacking ensemble learning-based sensor fault detection method for building energy systems using fault-discrimination information. In: Journal of Building Engineering, v. 43 (November 2021). (2021):
- A hybrid data mining approach for anomaly detection and evaluation in residential buildings energy data. In: Energy and Buildings, v. 215 (May 2020). (2020):
- Study on deep reinforcement learning techniques for building energy consumption forecasting. In: Energy and Buildings, v. 208 (February 2020). (2020):
- Modal decomposition based ensemble learning for ground source heat pump systems load forecasting. In: Energy and Buildings, v. 194 (July 2019). (2019):
- An analytical model for deformation and damage of rectangular laminated glass under low-velocity impact. In: Composite Structures, v. 176 (September 2017). (2017):
- 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):