Otwarty dostęp

Accurate Building Energy Management Based on Artificial Intelligence


Zacytuj

Arroyo, J., Manna, C., Spiessens, F., & Helsen, L. (2022). Reinforced model predictive control (rl-mpc) for building energy management. Applied energy(Mar.1), 309. Search in Google Scholar

Agostinelli, S., Cumo, F., Guidi, G., & Tomazzoli, C. (2021). Cyber-physical systems improving building energy management: digital twin and artificial intelligence. Energies, 14(8), 2338. Search in Google Scholar

Yu, L., Qin, S., Zhang, M., Shen, C., & Guan, X. (2021). A review of deep reinforcement learning for smart building energy management. IEEE Internet of Things Journal, PP(99). Search in Google Scholar

Gong, X., Michel, P., & Cantin, R. (2019). Multiple-criteria decision analysis of bim influences in building energy management. Building Simulation, 12(004), 641-652. Search in Google Scholar

Kim, N. K., Shim, M. H., & Won, D. (2018). Building energy management strategy using an hvac system and energy storage system. Energies, 11(10). Search in Google Scholar

Wahid, F., Ghazali, R., & Ismail, L. H. (2018). An enhanced approach of artificial bee colony for energy management in energy efficient residential building. Wireless Personal Communications. Search in Google Scholar

Kofinas, P., Vouros, G., & Dounis, A. I. (2018). Energy management in solar microgrid via reinforcement learning using fuzzy reward. Advances in Building Energy Research, 12(1), 97-115. Search in Google Scholar

Qiao, G. (2022). Intelligent building with multi-energy system planning method considering energy supply reliability. Journal of Interconnection Networks. Search in Google Scholar

Kumar, N., Rodrigues, J. J. P. C., & Jindal, A. (2018). A heuristic-based smart hvac energy management scheme for university buildings. IEEE Transactions on Industrial Informatics. Search in Google Scholar

Fan, C., Chen, M., Tang, R., & Wang, J. (2021). A novel deep generative modeling-based data augmentation strategy for improving short-term building energy predictions. Building Simulation, 15, 197 - 211. Search in Google Scholar

Ore, J., Farha, A., Hagedorn, D., Ziviani, D., & Groll, E. A. (2022). Optimization of building energy management through the implementation of an economical hyperlocal weather station in an integrated dc picogrid. ASHRAE Transactions. Search in Google Scholar

Ferahtia, S., Rezk, H., Abdelkareem, M. A., & Olabi, A. G. (2022). Optimal techno-economic energy management strategy for building’s microgrids based bald eagle search optimization algorithm. Applied Energy, 306, 118069-. Search in Google Scholar

Mehrjerdi, H., Saad, M., & Lefebvre, S. (2020). Efficiency-resilience nexus in building energy management under disruptions and events. IEEE Systems Journal, PP(99), 1-10. Search in Google Scholar

Shakeri, M., Pasupuleti, J., Amin, N., Rokonuzzaman, M., Low, F. W., & Yaw, C. T., et al. (2020). An overview of the building energy management system considering the demand response programs, smart strategies and smart grid. Energies, 13. Search in Google Scholar

Ding, Z., Liu, R., Li, Z., & Fan, C. (2020). A thematic network-based methodology for the research trend identification in building energy management. Energies, 13. Search in Google Scholar

Naji, N., Abid, M. R., Benhaddou, D., & Krami, N. (2020). Context-aware wireless sensor networks for smart building energy management system. Information (Switzerland), 11(Data Processing in the Internet of Things), 530. Search in Google Scholar

Lork, C., Choudhary, V., Hassan, N. U., Tushar, W., & Liu, X. (2019). An ontology-based framework for building energy management with iot. Electronics, 8(5), 485. Search in Google Scholar

Sharma, S., Verma, A., Xu, Y., & Panigrahi, B. K. (2019). Robustly coordinated bi-level energy management of a multi-energy building under multiple uncertainties. IEEE Transactions on Sustainable Energy, PP (99), 1-1. Search in Google Scholar

Paul, S., & Padhy, N. P. (2019). Real time bi-level energy management of smart residential apartment building. IEEE Transactions on Industrial Informatics, PP (99). Search in Google Scholar

Ma, K., Yu, Y., Yang, B., & Yang, J. (2019). Demand-side energy management considering price oscillations for residential building heating and ventilation systems. IEEE Transactions on Industrial Informatics, 1-1. Search in Google Scholar

Rostampour, V., & Keviczky, T. (2019). Probabilistic energy management for building climate comfort in smart thermal grids with seasonal storage systems. IEEE Transactions on Smart Grid, 10(4), 3687-3697. Search in Google Scholar

Santos, G., Pinto, T., Vale, Z., Carvalho, R., Brígida Teixeira, & Ramos, C. (2021). Upgrading bricks— the context-aware semantic rule-based system for intelligent building energy and security management. Energies, 14. Search in Google Scholar

Fotopoulou, M. C., Drosatos, P., Petridis, S., Rakopoulos, D., Stergiopoulos, F., & Nikolopoulos, N. (2021). Model predictive control for the energy management in a district of buildings equipped with building integrated photovoltaic systems and batteries. Energies, 14. Search in Google Scholar

Abbas, A. K., Obed, A. A., & Abid, A. J. (2020). Comprehensive modelling of an optimized energy management system for photovoltaic standalone building. Technology Reports of Kansai University. Search in Google Scholar

Kampelis, N., Tsekeri, E., Kolokotsa, D., Kalaitzakis, K., Isidori, D., & Cristalli, C. (2018). Development of demand response energy management optimization at building and district levels using genetic algorithm and artificial neural network modelling power predictions. Energies, 11. Search in Google Scholar

eISSN:
2444-8656
Język:
Angielski
Częstotliwość wydawania:
Volume Open
Dziedziny czasopisma:
Life Sciences, other, Mathematics, Applied Mathematics, General Mathematics, Physics