A review of machine learning in building load prediction

L Zhang, J Wen, Y Li, J Chen, Y Ye, Y Fu, W Livingood - Applied Energy, 2021 - Elsevier
The surge of machine learning and increasing data accessibility in buildings provide great
opportunities for applying machine learning to building energy system modeling and …

Machine learning applications in urban building energy performance forecasting: A systematic review

S Fathi, R Srinivasan, A Fenner, S Fathi - Renewable and Sustainable …, 2020 - Elsevier
In developed countries, buildings are involved in almost 50% of total energy use and 30% of
global green-house gas emissions. Buildings' operational energy is highly dependent on …

A novel CNN-GRU-based hybrid approach for short-term residential load forecasting

M Sajjad, ZA Khan, A Ullah, T Hussain, W Ullah… - Ieee …, 2020 - ieeexplore.ieee.org
Electric energy forecasting domain attracts researchers due to its key role in saving energy
resources, where mainstream existing models are based on Gradient Boosting Regression …

[HTML][HTML] A building energy consumption prediction model based on rough set theory and deep learning algorithms

L Lei, W Chen, B Wu, C Chen, W Liu - Energy and Buildings, 2021 - Elsevier
The efficient and accurate prediction of building energy consumption can improve the
management of power systems. In this paper, the rough set theory was used to reduce the …

Predictions of electricity consumption in a campus building using occupant rates and weather elements with sensitivity analysis: Artificial neural network vs. linear …

MK Kim, YS Kim, J Srebric - Sustainable Cities and Society, 2020 - Elsevier
This study compares building electric energy prediction approaches that use a traditional
statistical method (linear regression) and artificial neural network (ANN) algorithms. We …

A comparative study of different machine learning algorithms in predicting EPB shield behaviour: a case study at the Xi'an metro, China

XD Bai, WC Cheng, G Li - Acta geotechnica, 2021 - Springer
Complex geological conditions and/or inappropriate shield tunnel boring machine (TBM)
operation can significantly degrade both the excavation and safety of tunnel construction. In …

[HTML][HTML] Towards efficient electricity forecasting in residential and commercial buildings: A novel hybrid CNN with a LSTM-AE based framework

ZA Khan, T Hussain, A Ullah, S Rho, M Lee, SW Baik - Sensors, 2020 - mdpi.com
Due to industrialization and the rising demand for energy, global energy consumption has
been rapidly increasing. Recent studies show that the biggest portion of energy is consumed …

[HTML][HTML] Building energy consumption prediction: An extreme deep learning approach

C Li, Z Ding, D Zhao, J Yi, G Zhang - Energies, 2017 - mdpi.com
Building energy consumption prediction plays an important role in improving the energy
utilization rate through helping building managers to make better decisions. However, as a …

[HTML][HTML] A comprehensive review on modelling the adsorption process for heavy metal removal from waste water using artificial neural network technique

SS Fiyadh, SM Alardhi, M Al Omar, MM Aljumaily… - Heliyon, 2023 - cell.com
Water is the most necessary and significant element for all life on earth. Unfortunately, the
quality of the water resources is constantly declining as a result of population development …

An integrated power load point-interval forecasting system based on information entropy and multi-objective optimization

K Wang, J Wang, B Zeng, H Lu - Applied Energy, 2022 - Elsevier
During an era of rapid growth in electricity demand throughout society, accurate forecasting
of electricity loads has become increasingly important to guarantee a stable power supply …