References
Benblidia, M. A., Brik, B., Esseghir, M., Merghem-Boulahia, L. (2022). Power Allocation and Energy Cost Minimization in Cloud Data Centers Microgrids: A Two-Stage Optimization Approach.
IEEE Access, 10, 66213-66226.
https://doi.org/:10.1109/ACCESS.2022.3184721
Bharany, S., Sharma, S., Khalaf, O. I.,, and Abdulsahib, G. M., Al Humaimeedy, A. S., Aldhyani, T. H. H., Maashi, M.. Alkahtani, H. (2022). A Systematic Survey on Energy-Efficient Techniques in Sustainable Cloud Computing.
Sustainability, 14 (10).
https://doi.org/:10.3390/su14106256
da Silva, M. D. M., Gamatié, A., Sassatelli, G., Poss, M., Robert. M. (2023). Optimization of Data and Energy Migrations in Mini Data Centers for Carbon-Neutral Computing.
IEEE Transactions on Sustainable Computing, 8 (1), 68-81.
https://doi.org/:10.1109/TSUSC.2022.3197090
Heydari, A., Eslami, B., Radmard, V., Rebarber, F., Buell, T., Gray, K., Sather, S., & Rodriguez, J. (2022). Power Usage Effectiveness Analysis of a High-Density Air-Liquid Hybrid Cooled Data Center.
ASME 2022 International Technical Conference and Exhibition on Packaging and Integration of Electronic and Photonic Microsystems.
https://doi.org/:10.1115/IPACK2022-97447
Höb, M., & Kranzlmüller, D. (2023). Enable Energy Efficient Data Centers.
Proceedings of the HPC Asia 2023 Workshops, Singapore.
https://doi.org/:10.1145/3581576.3581601
Huang, X., Yan, J., Zhou, X., Wu, Y., & Hu, S. (2023). Cooling Technologies for Internet Data Center in China: Principle, Energy Efficiency, and Applications.
Energies, 16 (20).
https://doi.org/:10.3390/en16207158
Jawad, A. M., Al-Aameri, M. G., & Qasim, N. H. (2023). Emerging Technologies and Applications of Wireless Power Transfer.
Transport Development, 4 (19).
https://doi.org/:10.33082/td.2023.4-19.12
Kaur, K., Garg, S., Aujla, G. S., Kumar, N., and Zomaya, A. Y. (2022). A Multi-Objective Optimization Scheme for Job Scheduling in Sustainable Cloud Data Centers.
IEEE Transactions on Cloud Computing, 10 (1), 172-186.
https://doi.org/:10.1109/TCC.2019.2950002
Lin, W. T., Chen, G., and Li, H. (2023). Carbon-Aware Load Balance Control of Data Centers With Renewable Generations.
IEEE Transactions on Cloud Computing, 11 (2), 1111-1121.
https://doi.org/:10.1109/TCC.2022.3150391
Liu, J., Xu, Z., Wu, J., Liu, K., Sun, X., and Guan, X. (2023). Optimal Planning of Internet Data Centers Decarbonized by Hydrogen-Water-Based Energy Systems.
IEEE Transactions on Automation Science and Engineering, 20 (3), 1577-1590.
https://doi.org/:10.1109/TASE.2022.3213672
McMullen, M., and Wemhoff, A. P. (2023). Data Center Environmental Burden Reduction Through On-Site Renewable Power Generation.
ASME 2023 17th International Conference on Energy Sustainability, 5 (2), 021001
https://doi.org/:10.1115/1.4065053
Mondal, S., Faruk, F. B., Rajbongshi, D., Efaz, M. M., and Islam, M. M. (2023). GEECO: Green Data Centers for Energy Optimization and Carbon Footprint Reduction.
Sustainability, 15 (21).
https://doi.org/:10.3390/su152115249
Murino, T., Monaco, R., Nielsen, Per S., Liu, X., Esposito, G.,Scognamiglio, C. (2023). Sustainable Energy Data Centres: A Holistic Conceptual Framework for Design and Operations.
Energies, 16 (15).
https://doi.org/:10.3390/en16155764
Osibo, B., and Adamo, S. (2023). Data Centers and Green Energy: Paving the Way for a Sustainable Digital Future.
International Journal of Latest Technology in Engineering, Management & Applied Science, 12 (11), 15-30.
https://doi.org/:10.51583/IJLTEMAS.2023.121103
Qasim, N., and Pyliavskyi, V. (2020). Color temperature line: forward and inverse transformation.
Semiconductor physics, quantum electronics and optoelectronics, 23, 75-80.
https://doi.org/:10.15407/spqeo23.01.075
Qasim, N., Shevchenko, Y.P., and Pyliavskyi, V. (2019). Analysis of methods to improve energy efficiency of digital broadcasting.
Telecommunications and Radio Engineering, 78 (16), 1457-1469.
https://doi.org/:10.1615/TelecomRadEng.v78.i16.40
Qasim, N. H., Salman, A. J., Salman, H. M., AbdelRahman, A. A., and Kondakova, A. (2024). Evaluating NB-IoT within LTE Networks for Enhanced IoT Connectivity.
35th Conference of Open Innovations Association (FRUCT), 552-559.
https://doi.org/:10.23919/FRUCT61870.2024.10516400
Ran, Y., Hu, H., Wen, Y., and Zhou, X. (2023). Optimizing Energy Efficiency for Data Center via Parameterized Deep Reinforcement Learning.
IEEE Transactions on Services Computing, 16 (2), 1310-1323.
https://doi.org/:10.1109/TSC.2022.3184835
Sviridov, A. N., and Demkin, V. I. (2022). ANALYSIS OF INCREASING THE DATA CENTERS ENERGY EFFICIENCY METHODS.
Modern High Technologies, 2, 110-115.
https://doi.org/:10.17513/snt.39044
Wan, J., Duan, Y., Gui, X., Liu, C., Li, L., and Ma, Z. (2023). SafeCool: Safe and Energy-Efficient Cooling Management in Data Centers With Model-Based Reinforcement Learning.
IEEE Transactions on Emerging Topics in Computational Intelligence, 7 (6), 1621-1635.
https://doi.org/:10.1109/TETCI.2023.3234545
Xu, S., Zhang, H., and Wang, Z. (2023). Thermal Management and Energy Consumption in Air, Liquid, and Free Cooling Systems for Data Centers: A Review.
Energies, 16 (3).
https://doi.org/:10.3390/en16031279
Yousif, O., Dawood, M., Jassem, F. T., and Qasim, N. H. (2024). Curbing crypto deception: evaluating risks, mitigating practices and regulatory measures for preventing fraudulent transactions in the middle east.
Encuentros: Revista de Ciencias Humanas, Teoría Social y Pensamiento Crítico, (22), 311-334.
https://doi.org/:10.5281/zenodo.13732337
Zhang, Y., and Liu, J. (2022). Prediction of Overall Energy Consumption of Data Centers in Different Locations.
Sensors, 22 (10).
https://doi.org/:10.3390/s22103704