Accesso libero

Design of Dynamic Monitoring and Prediction System for Energy Consumption in Public Organizations Based on Energy Efficiency Diagnosis

, , , ,  e   
14 nov 2024
INFORMAZIONI SU QUESTO ARTICOLO

Cita
Scarica la copertina

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

Lingua:
Inglese
Frequenza di pubblicazione:
1 volte all'anno
Argomenti della rivista:
Scienze biologiche, Scienze della vita, altro, Matematica, Matematica applicata, Matematica generale, Fisica, Fisica, altro