Accès libre

Exploration of Monte Carlo Method for Optimization of Energy Consumption in Industrial Enterprises in Energy Efficiency Diagnosis

, , , ,  et   
14 nov. 2024
À propos de cet article

Citez
Télécharger la couverture

Zhou, K., Yang, S., Shen, C., Ding, S., & Sun, C. (2015). Energy conservation and emission reduction of China’s electric power industry. Renewable and Sustainable Energy Reviews, 45, 10-19. Search in Google Scholar

Hu, Y., Ren, S., Wang, Y., & Chen, X. (2020). Can carbon emission trading scheme achieve energy conservation and emission reduction? Evidence from the industrial sector in China. Energy Economics, 85, 104590. Search in Google Scholar

Huang, H., Wang, H., Hu, Y. J., Li, C., & Wang, X. (2022). The development trends of existing building energy conservation and emission reduction—A comprehensive review. Energy Reports, 8, 13170-13188. Search in Google Scholar

Li, X., & Xu, H. (2020). The energy-conservation and emission-reduction paths of industrial sectors: evidence from Chinas 35 industrial sectors. Energy Economics, 86, 104628. Search in Google Scholar

Li, X. (2020). Design of energy-conservation and emission-reduction plans of China’s industry: Evidence from three typical industries. Energy, 209, 118358. Search in Google Scholar

Wen, S., & Liu, H. (2022). Research on energy conservation and carbon emission reduction effects and mechanism: Quasi-experimental evidence from China. Energy Policy, 169, 113180. Search in Google Scholar

Bányai, Á. (2021). Energy consumption-based maintenance policy optimization. Energies, 14(18), 5674. Search in Google Scholar

El Koujok, M., Ghezzaz, H., & Amazouz, M. (2021). Energy inefficiency diagnosis in industrial process through one-class machine learning techniques. Journal of Intelligent Manufacturing, 32(7), 2043-2060. Search in Google Scholar

Sorrentino, M., Bruno, M., Trifirò, A., & Rizzo, G. (2019). An innovative energy efficiency metric for data analytics and diagnostics in telecommunication applications. Applied Energy, 242, 1539-1548. Search in Google Scholar

Gong, S., Shao, C., & Zhu, L. (2019). Multi-level and multi-granularity energy efficiency diagnosis scheme for ethylene production process. Energy, 170, 1151-1169. Search in Google Scholar

Gong, S. (2023). Multi-scale energy efficiency recognition and diagnosis scheme for ethylene production based on a hierarchical multi-indicator system. Energy, 267, 126478. Search in Google Scholar

Lv, Z., & Shang, W. (2023). Impacts of intelligent transportation systems on energy conservation and emission reduction of transport systems: A comprehensive review. Green Technologies and Sustainability, 1(1), 100002. Search in Google Scholar

Luo, S., & Yuan, Y. (2023). The path to low carbon: The impact of network infrastructure construction on energy conservation and emission reduction. Sustainability, 15(4), 3683. Search in Google Scholar

Zhu, H., Zhang, D., Goh, H. H., Wang, S., Ahmad, T., Mao, D., ... & Wu, T. (2023). Future data center energy-conservation and emission-reduction technologies in the context of smart and low-carbon city construction. Sustainable Cities and Society, 89, 104322. Search in Google Scholar

Gu, G., Zheng, H., Tong, L., & Dai, Y. (2022). Does carbon financial market as an environmental regulation policy tool promote regional energy conservation and emission reduction? Empirical evidence from China. Energy Policy, 163, 112826. Search in Google Scholar

Wang, W., Yang, H., Zhang, Y., & Xu, J. (2018). IoT-enabled real-time energy efficiency optimisation method for energy-intensive manufacturing enterprises. International Journal of Computer Integrated Manufacturing, 31(4-5), 362-379. Search in Google Scholar

Zhu, X., & Fuli, W. (2023). Energy savings bottleneck diagnosis and optimization decision method for industrial auxiliary system based on energy efficiency gap analysis. Energy, 263, 126119. Search in Google Scholar

Zhu, X., Wang, F., Niu, D., Guo, Y., & Jia, M. (2019). An energy-saving bottleneck diagnosis method for industrial system applied to circulating cooling water system. Journal of Cleaner Production, 232, 224-234. Search in Google Scholar

Narciso, D. A., & Martins, F. G. (2020). Application of machine learning tools for energy efficiency in industry: A review. Energy Reports, 6, 1181-1199. Search in Google Scholar

Dzhedzhula, V., & Yepifanova, I. (2021, September). Optimization of energy saving potential of industrial enterprises. In 2021 11th International Conference on Advanced Computer Information Technologies (ACIT) (pp. 433-436). IEEE. Search in Google Scholar

Song, Y., Cheng, X., & Zhang, Y. (2019, November). Energy management optimization strategy for industrial enterprises based on demand response. In 2019 Chinese Automation Congress (CAC) (pp. 1267-1272). IEEE. Search in Google Scholar

Qarshibaev, A. I., Narzullaev, B. S., & Murodov, H. S. (2020, November). Models and methods of optimization of electricity consumption control in industrial enterprises. In Journal of Physics: Conference Series (Vol. 1679, No. 2, p. 022074). IOP Publishing. Search in Google Scholar

Chaya Bagrecha,Kuldeep Singh,Geeti Sharma & P. B. Saranya. (2024). Forecasting silver prices: a univariate ARIMA approach and a proposed model for future direction. Mineral Economics(prepublish), 1-11. Search in Google Scholar

Xiaojie Wen,Philipp Mennig,Hua Li & Johannes Sauer. (2024). Geographic networks matter for pro-environmental waste disposal behavior in rural China: Bayesian estimation of a spatial probit model. Resources, Conservation & Recycling107854-107854. Search in Google Scholar

Zheng Hu,Hongqiao Wang & Qingping Zhou. (2024). A MCMC method based on surrogate model and Gaussian process parameterization for infinite Bayesian PDE inversion. Journal of Computational Physics112970-. Search in Google Scholar

Siying Zhu,Elijah Borodin & Andrey P. Jivkov. (2024). Discrete modelling of continuous dynamic recrystallisation by modified Metropolis algorithm. Computational Materials Science112804-. Search in Google Scholar

Guhl Mélanie,Bertrand Julie,Fayette Lucie,Mercier François & Comets Emmanuelle. (2024). Correction: Uncertainty Computation at Finite Distance in Nonlinear Mixed Effects Models—a New Method Based on Metropolis–Hastings Algorithm. The AAPS Journal(4),64-64. Search in Google Scholar

Tryfonas Pantas & George Besseris. (2024). Lean-and-Green Fractional Factorial Screening of 3D-Printed ABS Mechanical Properties Using a Gibbs Sampler and a Neutrosophic Profiler. Sustainability(14), 5998-5998. Search in Google Scholar