This work is licensed under the Creative Commons Attribution 4.0 International License.
Karunathilake, H., Hewage, K., Mérida, W., & Sadiq, R. (2019). Renewable energy selection for net-zero energy communities: Life cycle based decision making under uncertainty. Renewable energy, 130, 558-573.Search in Google Scholar
Moosavian, S. F., Noorollahi, Y., & Shoaei, M. (2024). Renewable energy resources utilization planning for sustainable energy system development on a stand-alone island. Journal of Cleaner Production, 140892.Search in Google Scholar
Longo, S., d’Antoni, B. M., Bongards, M., Chaparro, A., Cronrath, A., Fatone, F., ... & Hospido, A. (2016). Monitoring and diagnosis of energy consumption in wastewater treatment plants. A state of the art and proposals for improvement. Applied energy, 179, 1251-1268.Search in Google Scholar
Marques, G., & Pitarma, R. (2017). Monitoring energy consumption system to improve energy efficiency. In Recent Advances in Information Systems and Technologies: Volume 2 5 (pp. 3-11). Springer International Publishing.Search in Google Scholar
Fernando, Y., & Hor, W. L. (2017). Impacts of energy management practices on energy efficiency and carbon emissions reduction: a survey of Malaysian manufacturing firms. Resources, Conservation and Recycling, 126, 62-73.Search in Google Scholar
Zhang, L., Mu, R., Zhan, Y., Yu, J., Liu, L., Yu, Y., & Zhang, J. (2022). Digital economy, energy efficiency, and carbon emissions: Evidence from provincial panel data in China. Science of the Total Environment, 852, 158403.Search in Google Scholar
Christensen, B., & Himme, A. (2017). Improving environmental management accounting: How to use statistics to better determine energy consumption. Journal of Management Control, 28(2), 227-243.Search in Google Scholar
Wang, Y., Wu, T., Li, H., Skitmore, M., & Su, B. (2020). A statistics-based method to quantify residential energy consumption and stock at the city level in China: The case of the Guangdong-Hong Kong-Macao Greater Bay Area cities. Journal of Cleaner Production, 251, 119637.Search in Google Scholar
Xu, G., & Wang, W. (2020). China’s energy consumption in construction and building sectors: An outlook to 2100. Energy, 195, 117045.Search in Google Scholar
Bandarra, P., Valdez, M. T., & Pereira, A. (2016, September). Solutions for monitoring and analysing for energy consumption—Energy management systems. In 2016 51st International Universities Power Engineering Conference (UPEC) (pp. 1-5). IEEE.Search in Google Scholar
Purwania, I. B. G., Kumara, I. N. S., & Sudarma, M. (2020). Application of IoT-Based System for Monitoring Energy Consumption. International Journal of Engineering and Emerging Technology, 5(2), 81-93.Search in Google Scholar
Soh, Z. H. C., Hamzah, I. H., Abdullah, S. A. C., Shafie, M. A., Sulaiman, S. N., & Daud, K. (2019, August). Energy consumption monitoring and alert system via IoT. In 2019 7th International Conference on Future Internet of Things and Cloud (FiCloud) (pp. 265-269). IEEE.Search in Google Scholar
Mataloto, B., Calé, D., Carimo, K., Ferreira, J. C., & Resende, R. (2021). 3d iot system for environmental and energy consumption monitoring system. Sustainability, 13(3), 1495.Search in Google Scholar
Chui, K. T., Lytras, M. D., & Visvizi, A. (2018). Energy sustainability in smart cities: Artificial intelligence, smart monitoring, and optimization of energy consumption. Energies, 11(11), 2869.Search in Google Scholar
Yin, S., Yang, H., Xu, K., Zhu, C., Zhang, S., & Liu, G. (2022). Dynamic real–time abnormal energy consumption detection and energy efficiency optimization analysis considering uncertainty. Applied Energy, 307, 118314.Search in Google Scholar
Lei, L., Wu, B., Fang, X., Chen, L., Wu, H., & Liu, W. (2023). A dynamic anomaly detection method of building energy consumption based on data mining technology. Energy, 263, 125575.Search in Google Scholar
Qian, G., Tang, C., Meng, Y., Qi, X., Wang, J., & Zhou, J. (2022, April). Real Time Monitoring Method of Comprehensive Energy Consumption Based on Data Mining Algorithm. In International Conference on Multi-modal Information Analytics (pp. 217-224). Cham: Springer International Publishing.Search in Google Scholar
Amasyali, K., & El-Gohary, N. M. (2018). A review of data-driven building energy consumption prediction studies. Renewable and Sustainable Energy Reviews, 81, 1192-1205.Search in Google Scholar
Lee, S. H., Lee, T., Kim, S., & Park, S. (2019, May). Energy consumption prediction system based on deep learning with edge computing. In 2019 IEEE 2nd International Conference on Electronics Technology (ICET) (pp. 473-477). IEEE.Search in Google Scholar
Cheng, Y. L., Lim, M. H., & Hui, K. H. (2022). Impact of internet of things paradigm towards energy consumption prediction: A systematic literature review. Sustainable Cities and Society, 78, 103624.Search in Google Scholar
Xin Ju,Ruixin Gou,Yanli Xiao,Zheng Wang & Shangke Liu. (2022). The use of edge computing-based internet of things big data in the design of power intelligent management and control platform. International Journal of Grid and Utility Computing(1),76-86.Search in Google Scholar
Changwei Xu,Wen Nie,Fei Liu,Huaitong Li,Huitian Peng,Yanyan Liu & Felicie Ilele Mwabaima. (2024). Improvement and optimization of coal dust concentration detection technology: Based on the 3σ criterion and the kalman filtering composite algorithm. Flow Measurement and Instrumentation102598-.Search in Google Scholar
Qingchen Li,Bingzhu Zheng,Tianyu Wu,Yajun Li & Pingting Hao. (2024). A Method for Evaluating User Interface Satisfaction Using Facial Recognition Technology and a PSO-BP Neural Network. Applied Sciences(13),5649-5649.Search in Google Scholar
Zhao Fuqing,Ji Fei,Xu Tianpeng,Zhu Ningning & Jonrinaldi. (2024). Hierarchical parallel search with automatic parameter configuration for particle swarm optimization. Applied Soft Computing111126-.Search in Google Scholar
O.L.V. Costa,F. Dufour & A. Genadot. (2024). Adaptive average control for piecewise deterministic Markov processes. Systems & Control Letters105894-105894.Search in Google Scholar