Green Computing for Energy Transition: A Survey
Keywords:
Green Algorithms, Sustainable, Green Computing, Carbon Footprint, Energy TransitionAbstract
The global information technology (IT) industry accounts for approximately 2% of the world's greenhouse gas emissions, equivalent to the aviation industry's emissions. Moreover, IT energy consumption is projected to increase by 5% annually, and the industry is expected to consume 21% of the world's electricity by 2030. Therefore, there is a growing urgency to develop and implement sustainable computing practices that reduce energy consumption and mitigate the environmental impact of the computing industry. Green computing has emerged as a vital area of research due to the increasing demand for environmentally sustainable practices in the computing industry. To contribute to this dialogue, this paper presents a comprehensive survey of 74 articles related to green computing and its various subtopics, including sustainable practices, energy-efficient hardware design, software optimization, and the use of renewable energy sources. Additionally, the survey analyses the role of green algorithms in reducing energy consumption and carbon footprint in computing systems. The findings highlight the significance of adopting green computing practices to mitigate the adverse impact of computing on the environment, including greenhouse gas emissions, energy consumption, and waste generation. Our survey underscores the growing interest in green computing, as evidenced by the increasing number of articles and research studies dedicated to this topic. Furthermore, our analysis of the existing literature highlights the need for further research in this area to develop more effective and sustainable solutions. In conclusion, the survey serves as a valuable resource for researchers, practitioners, and policymakers to understand the current state of research in green computing and to identify areas for future research. By promoting sustainable practices in the computing industry, we can contribute to a more environmentally sustainable future for our planet.
Downloads
References
J. Cronin, G. Anandarajah, and O. Dessens, “Climate change impacts on the energy system: a review of trends and gaps,” Climatic Change 151, pp. 79–93, 2018.
P. Ekins, “Step changes for decarbonising the energy system: research needs for renewables, energy efficiency and nuclear power,” Energy Policy, vol. 32, no. 17, pp. 1891–1904, 2004. Energy Policy for a Sustainable Energy Future.
A. Grübler, N. Nakicenovi ´ c, and D. G. Victor, “Dynamics of energy ´technologies and global change,” Energy Policy, vol. 27, no. 5, pp. 247–280, 1999.
C. Groves, K. Henwood, N. Pidgeon, C. Cherry, E. Roberts, F. Shirani,and G. Thomas, “The future is flexible? exploring expert visions of
energy system decarbonisation,” Futures, vol. 130, p. 102753, 2021.
S. P. Nathaniel and N. Adeleye, “Environmental preservation amidst carbon emissions, energy consumption, and urbanization in selected african countries: Implication for sustainability,” Journal of Cleaner Production, vol. 285, p. 125409, 2021.
R. Mastini, G. Kallis, and J. Hickel, “A green new deal without growth?,” Ecological Economics, vol. 179, p. 106832, 2021.
J. H. Williams, A. DeBenedictis, R. Ghanadan, A. Mahone, J. Moore,
W. R. Morrow, S. Price, and M. S. Torn, “The technology path to deep
greenhouse gas emissions cuts by 2050: The pivotal role of electricity,”
Science, vol. 335, no. 6064, pp. 53–59, 2012.
P. Mancarella, “Mes (multi-energy systems): An overview of concepts
and evaluation models,” Energy, vol. 65, pp. 1–17, 2014.
S. J. Davis, N. S. Lewis, M. Shaner, S. Aggarwal, D. Arent, I. L.
Azevedo, S. M. Benson, T. Bradley, J. Brouwer, Y.-M. Chiang, C. T. M.
Clack, A. Cohen, S. Doig, J. Edmonds, P. Fennell, C. B. Field,
B. Hannegan, B.-M. Hodge, M. I. Hoffert, E. Ingersoll, P. Jaramillo,
K. S. Lackner, K. J. Mach, M. Mastrandrea, J. Ogden, P. F. Peterson,
D. L. Sanchez, D. Sperling, J. Stagner, J. E. Trancik, C.-J. Yang, and
K. Caldeira, “Net-zero emissions energy systems,” Science, vol. 360,
no. 6396, p. eaas9793, 2018.
A. Grübler and N. Nakicenovi ´ c, “Decarbonizing the global energy ´
system,” Technological Forecasting and Social Change, vol. 53, no. 1,
pp. 97–110, 1996. Technology and the Environment.
A. Harbla, P. Dimri, D. Negi, and Y. S. Chauhan, “Green computing
research challenges: A review,” 2013.
S. B. Othman, F. A. Almalki, C. Chakraborty, and H. Sakli, “Privacypreserving aware data aggregation for iot-based healthcare with
green computing technologies,” Computers and Electrical Engineering,
vol. 101, p. 108025, 2022.
S. Cai and Z. Gou, “A comprehensive analysis of green building rating
systems for data centers,” Energy and Buildings, vol. 284, 2023. Cited
by: 0.
H. A. Alharbi, T. E. H. Elgorashi, and J. M. H. Elmirghani, “Energy
efficient virtual machines placement over cloud-fog network architecture,” IEEE Access, vol. 8, p. 94697 – 94718, 2020. Cited by: 24; All
Open Access, Gold Open Access, Green Open Access.
A. S. Oliver, B. Ravi, R. Manikandan, A. Sharma, and B.-G. Kim,
“Heuristic green computing based energy management with security
enhancement using hybrid greedy secure optimal routing protocol,”
Energy Reports, vol. 9, p. 2494 – 2505, 2023. Cited by: 0.
E. Khodayarseresht and A. Shameli-Sendi, “A multi-objective cloud
energy optimizer algorithm for federated environments,” Journal of
Parallel and Distributed Computing, vol. 174, p. 81 – 99, 2023. Cited
by: 0.
A. Tarafdar, S. Sarkar, R. K. Das, and S. Khatua, “Power modeling for
energy-efficient resource management in a cloud data center,” Journal
of Grid Computing, vol. 21, no. 1, 2023. Cited by: 0.
T. Yang, Y. Hou, Y. C. Lee, H. Ji, and A. Y. Zomaya, “Power
control framework for green data centers,” IEEE Transactions on Cloud
Computing, vol. 10, no. 4, p. 2876 – 2886, 2022. Cited by: 3.
X. Deng, D. Wu, J. Shen, and J. He, “Eco-aware online power
management and load scheduling for green cloud datacenters,” IEEE
Systems Journal, vol. 10, no. 1, pp. 78–87, 2016.
J. Song, P. Zhu, Y. Zhang, and G. Yu, “Versatility or validity: A comprehensive review on simulation of datacenters powered by renewable
energy mix,” Future Generation Computer Systems, vol. 136, p. 326 –
, 2022. Cited by: 0.
F. Shakeel and S. Sharma, “Green cloud computing: A review on
efficiency of data centres and virtualization of servers,” in 2017 International Conference on Computing, Communication and Automation
(ICCCA), pp. 1264–1267, 2017.
D. Saxena, A. K. Singh, C.-N. Lee, and R. Buyya, “A sustainable and
secure load management model for green cloud data centres,” Scientific
Reports, vol. 13, no. 1, 2023. Cited by: 0; All Open Access, Gold Open
Access, Green Open Access.
H. Zhu, D. Zhang, H. H. Goh, S. Wang, T. Ahmad, D. Mao, T. Liu,
H. Zhao, and T. Wu, “Future data center energy-conservation an emission-reduction technologies in the context of smart and low-carbon
city construction,” Sustainable Cities and Society, vol. 89, 2023. Cited by: 1.
M. Kashefi and A. M. Rahmani, “Energy-efficient virtual machine
placement algorithms in cloud computing,” IEEE Transactions on
Sustainable Computing, vol. 6, pp. 20–32, Jan 2021.
P. D. D. Dominic, N. K. Kadirvelu, V. Nagarajan, M. N. S. Kumar,
and B. Rayappan, “Eco-cooling techniques for data centers: A review
of recent advances,” IEEE Access, vol. 9, pp. 12434–12453, Jan 2021.
J. Li, B. Li, T. Wo, C. Hu, J. Huai, L. Liu, and K. Lam, “Cyberguarder:
A virtualization security assurance architecture for green cloud computing,” Future Generation Computer Systems, vol. 28, no. 2, pp. 379–390,
L. R. Darwish, M. T. El-Wakad, and M. M. Farag, “Towards sustainable
industry 4.0: A green real-time iiot multitask scheduling architecture
for distributed 3d printing services,” Journal of Manufacturing Systems,
vol. 61, pp. 196–209, 2021.
A. Agrawal, M. Khichar, and S. Jain, “Transient simulation of wet
cooling strategies for a data center in worldwide climate zones,” Energy
and Buildings, vol. 127, pp. 352–359, 2016.
P. Liu, R. Kandasamy, J. Y. Ho, T. N. Wong, and K. C. Toh, “Dynamic
performance analysis and thermal modelling of a novel two-phase spray
cooled rack system for data center cooling,” Energy, vol. 269, 2023.
Cited by: 0.
L. Lannelongue, J. Grealey, and M. Inouye, “Green Algorithms:
Quantifying the Carbon Footprint of Computation,” Advanced Science,
vol. 8, no. 12, pp. 1–10, 2021.
A. Al-Fuqaha, M. Guizani, M. Mohammadi, M. Aledhari, and
M. Ayyash, “Internet of things: A survey on enabling technologies,
protocols, and applications,” IEEE Communications Surveys & Tutorials, vol. 17, no. 4, pp. 2347–2376, 2015.
B. Guillaume, D. Benjamin, and C. Vincent, “Review of the impact of
it on the environment and solution with a detailed assessment of the
associated gray literature,” Sustainability, vol. 14, no. 4, 2022.
H. Ba, W. Heinzelman, C. A. Janssen, and J. Shi, “Mobile computing
-A green computing resource,” IEEE Wireless Communications and
Networking Conference, WCNC, pp. 4451–4456, 2013.
A. K. Sangaiah, A. Javadpour, F. Ja’fari, H. Zavieh, and S. M.
Khaniabadi, “Sala-iot: self-reduced internet of things with learning
automaton sleep scheduling algorithm,” IEEE Sensors Journal, 2023.
X. Wang, H. Chen, and S. Li, “A reinforcement learning-based sleep
scheduling algorithm for compressive data gathering in wireless sensor
networks,” Journal of Wireless Communications and Networks, vol. 28,
pp. 1–10, 2023.
R. Byali, M. Jyothi, and M. C. Shekadar, “A review of green environment cloud computing,” International Journal of Research Publication
and Reviews, 2022.
L. Lannelongue, J. Grealey, A. Bateman, and M. Inouye, “Ten simple
rules to make your computing more environmentally sustainable,” PLoS
Computational Biology, vol. 17, no. 9, pp. 6–13, 2021.
S. P. Raja, “Green Computing and Carbon Footprint Management in
the IT Sectors,” IEEE Transactions on Computational Social Systems,
vol. 8, no. 5, pp. 1172–1177, 2021.
J. Grealey, L. Lannelongue, W. Y. Saw, J. Marten, G. McRossed D
Sign©ric, S. Ruiz-Carmona, and M. Inouye, “The Carbon Footprint
of Bioinformatics,” Molecular Biology and Evolution, vol. 39, no. 3,
pp. 1–15, 2022.
A. Abugabah and A. Abubaker, “Green computing: Awareness and
practices,” 2018 4th International Conference on Computer and Technology Applications, ICCTA 2018, pp. 6–10, 2018.
S. Butt, M. Ahmadi, and M. Razavi, “Green computing: Sustainable
design and technologies,” CITISIA 2020 - IEEE Conference on Innovative Technologies in Intelligent Systems and Industrial Applications,
Proceedings, 2020.
O. L. Goaer, “Enforcing Green Code with Android Lint,” Proceedings -
35th IEEE/ACM International Conference on Automated Software
Engineering Workshops, ASEW 2020, pp. 85–90, 2020.
D. Wang, “Meeting green computing challenges,” 10th Electronics
Packaging Technology Conference, EPTC 2008, pp. 121–126, 2008.
K. W. Cameron, “Energy oddities, Part 2: Why green computing is
odd,” Computer, vol. 46, no. 3, pp. 90–93, 2013.
B. Sharma, P. Mittal, and M. S. Obaidat, “Power-saving policies for
annual energy cost savings in green computing,” International Journal
of Communication Systems, vol. 33, no. 4, pp. 1–11, 2020.
P. Ranbhise, “Green computing a way towards environmentally sustainable future,” Proceedings of 2014 International Conference on
Contemporary Computing and Informatics, IC3I 2014, pp. 1094–1100,
K. Saleem, N. Rasheed, M. Zonain, S. Muneer, A. R. Bhatti, and
M. Amjad, Green Computing: A Contribution Towards Better Future,
vol. 1198. Springer Singapore, 2020.
S. Agrawal, R. Biswas, and A. Nath, “Virtual desktop infrastructure
in higher education institution: Energy efficiency as an application of
green computing,” Proceedings - 2014 4th International Conference
on Communication Systems and Network Technologies, CSNT 2014,
pp. 601–605, 2014.
S. Hanief, L. G. S. Kartika, N. L. P. Srinadi, and K. R. Y. Negara, “A
Proposed Model of Green Computing Adoption in Indonesian Higher
Education,” 2018 6th International Conference on Cyber and IT Service
Management, CITSM 2018, pp. 5–10, 2019.
S. K. Podder, M. Karuppiah, B. Thomas, and D. Samanta, “Research
Initiative on Sustainable Education System: Model of Balancing Green
Computing and ICT in Quality Education,” 2022 International Conference on Interdisciplinary Research in Technology and Management,
IRTM 2022 - Proceedings, 2022.
A. Q. Mohabuth, “A framework for the implementation of green
computing in Universities,” 2022 5th International Conference on
Energy Conservation and Efficiency, ICECE 2022 - Proceedings, 2022.
T. Arthi and H. Shahul Hamead, “Energy aware cloud service provisioning approach for green computing environment,” 2013 International Conference on Energy Efficient Technologies for Sustainability,
ICEETS 2013, pp. 139–144, 2013.
S. Bhattacherjee, R. Das, S. Khatua, and S. Roy, “Energy-efficient
migration techniques for cloud environment: a step toward green
computing,” Journal of Supercomputing, vol. 76, no. 7, pp. 5192–5220,
L. Hu, J. Zhao, G. Xu, Y. Ding, and J. Chu, “A survey on green
computing based on cloud environment,” International Journal of
Online Engineering, vol. 9, no. 3, pp. 27–33, 2013.
J. M. Jayalath, E. J. Chathumali, K. R. Kothalawala, and N. Kuruwitaarachchi, “Green Cloud Computing: A Review on Adoption
of Green-Computing attributes and Vendor Specific Implementations,”
Proceedings - IEEE International Research Conference on Smart
Computing and Systems Engineering, SCSE 2019, pp. 158–164, 2019.
X. Liu, P. Liu, H. Li, Z. Li, C. Zou, H. Zhou, X. Yan, and R. Xia,
“Energy-aware task scheduling strategies with QoS constraint for green
computing in cloud data centers,” Proceedings of the 2018 Research
in Adaptive and Convergent Systems, RACS 2018, pp. 260–267, 2018.
M. J. Usman, A. S. Ismail, H. Chizari, G. Abdul-Salaam, A. M. Usman,
A. Y. Gital, O. Kaiwartya, and A. Aliyu, “Energy-efficient Virtual
Machine Allocation Technique Using Flower Pollination Algorithm in
Cloud Datacenter: A Panacea to Green Computing,” Journal of Bionic
Engineering, vol. 16, no. 2, pp. 354–366, 2019.
J. K. Verma, S. Kumar, O. Kaiwartya, Y. Cao, J. Lloret, C. P. Katti, and
R. Kharel, “Enabling green computing in cloud environments: Network
virtualization approach toward 5G support,” Transactions on Emerging
Telecommunications Technologies, vol. 29, no. 11, pp. 1–25, 2018.
M. J. Yang, “Energy-efficient cloud data center with fair service level
agreement for green computing,” Cluster Computing, vol. 24, no. 4,
pp. 3337–3349, 2021.
G. Han, W. Que, G. Jia, and W. Zhang, “Resource-utilization-aware
energy efficient server consolidation algorithm for green computing
in IIOT,” Journal of Network and Computer Applications, vol. 103,
no. January 2017, pp. 205–214, 2018.
L. Farhan, R. Kharel, O. Kaiwartya, M. Hammoudeh, and B. Adebisi,
“Towards green computing for Internet of things: Energy oriented path
and message scheduling approach,” Sustainable Cities and Society,
vol. 38, no. November 2017, pp. 195–204, 2018.
A. Jaiswal, S. Kumar, O. Kaiwartya, M. Prasad, N. Kumar, and
H. Song, “Green computing in IoT: Time slotted simultaneous wireless
information and power transfer,” Computer Communications, vol. 168,
no. October 2020, pp. 155–169, 2021.
R. Rani, S. Kumar, O. Kaiwartya, A. M. Khasawneh, J. Lloret, M. A.
Al-Khasawneh, M. Mahmoud, and A. A. Alarood, “Towards green
computing oriented security: A lightweight postquantum signature for
IoE,” Sensors, vol. 21, no. 5, pp. 1–21, 2021.
A. Jaiswal, S. Kumar, and U. Dohare, “Green Computing in Heterogeneous Internet of Things: Optimizing Energy Allocation Using
SARSA-based Reinforcement Learning,” 2020 IEEE 17th India Council International Conference, INDICON 2020, pp. 11–16, 2020.
S. Kallam, R. B. Madda, C. Y. Chen, R. Patan, and D. Cheelu, “Low
energy aware communication process in IoT using the green computing
approach,” IET Networks, vol. 7, no. 4, pp. 258–264, 2018.
C. Germain-Renaud, F. Fürst, M. Jouvin, G. Kassel, J. Nauroy, and
G. Philippon, “The Green Computing Observatory: A data curation
approach for green IT,” Proceedings - IEEE 9th International Conference on Dependable, Autonomic and Secure Computing, DASC 2011,
pp. 798–799, 2011.
A. M. Khasawneh, O. Kaiwartya, A. Khalifeh, L. M. Abualigah, and
J. Lloret, “Green Computing in Underwater Wireless Sensor Networks
Pressure Centric Energy Modeling,” IEEE Systems Journal, vol. 14,
no. 4, pp. 4735–4745, 2020.
Y. E. Fernandas and M. S. Vasanthi, “Energy efficient mechanism for
Green computing in wireless storage area networks,” 2015 International Conference on Communication and Signal Processing, ICCSP
, pp. 1311–1314, 2015.
P. M. Vijay, P. Richariya, and A. Motwani, “Energy Efficient computing
in wireless sensor network: Application of green computing approach,”
International Conference on Advances in Engineering and Technology Research, ICAETR 2014, pp. 12–16, 2014.
A. Shrivastava, A. Rizwan, N. S. Kumar, R. Saravanakumar, I. S.
Dhanoa, P. Bhambri, and B. K. Singh, “VLSI Implementation of Green
Computing Control Unit on Zynq FPGA for Green Communication,”
Wireless Communications and Mobile Computing, vol. 2021, 2021.
J. Suhonen, T. D. Hamalainen, and M. Hännikäinen, “Availability
and end-to-end reliability in low duty cycle multihop wireless sensor
networks,” Sensors, vol. 9, no. 3, pp. 2088–2116, 2009.
A. N. Sakib, M. Drieberg, S. Sarang, A. A. Aziz, N. T. T. Hang,
and G. M. Stojanovic, “Energy-aware qos mac protocol based on ´
prioritized-data and multi-hop routing for wireless sensor networks,”
Sensors, vol. 22, p. 2598, 2022.
W. Lee, Y. Lee, S. Lee, and D. Kim, “Comparison of s-mac and t-mac
protocols for energy efficiency in wireless sensor networks,” vol. 5,
pp. 1392–1399, 08 2006.
P. Stolf and T. Monteil, “Track report of collaborative and autonomic
green computing (CAGing 2014),” Proceedings of the Workshop on
Enabling Technologies: Infrastructure for Collaborative Enterprises,
WETICE, pp. 113–114, 2014.
P. Stolf and T. Monteil, “Collaborative and autonomic green computing
track: Summary report,” Proceedings of the Workshop on Enabling
Technologies: Infrastructure for Collaborative Enterprises, WETICE,
no. CAGing, pp. 117–118, 2013.
S. Tiwari, S. Shah, V. Kulkarni, and P. H. Patil, “A Review on Green
Computing Implementation Using Efficient Techniques,” Proceedings
- 2021 3rd International Conference on Advances in Computing,
Communication Control and Networking, ICAC3N 2021, vol. 2030,
pp. 1496–1501, 2021.
H. T. Liao and K. S. Chen, “Mapping the Landscape of Green Communications and Green Computing: A Review Based on Bibliometric
Analysis,” International Conference on Communication Technology
Proceedings, ICCT, vol. 2021-Octob, pp. 565–569, 2021.
E. Brunvand, D. Kline, and A. K. Jones, “Dark Silicon Considered
Harmful: A Case for Truly Green Computing,” 2018 9th International
Green and Sustainable Computing Conference, IGSC 2018, 2018.
P. R. Hatwar and U. Shrawankar, “Approach towards VM management
for green computing,” 2014 IEEE International Conference on Computational Intelligence and Computing Research, IEEE ICCIC 2014,
U. U. Tariq, H. Ali, L. Liu, and X. Zhai, “A novel metaheuristic for green computing on VFI-NoC-HMPSoCs,” Proceedings
- 2019 IEEE SmartWorld, Ubiquitous Intelligence and Computing,
Advanced and Trusted Computing, Scalable Computing and Communications, Internet of People and Smart City Innovation, SmartWorld/UIC/ATC/SCALCOM/IOP/SCI 2019, pp. 1545–1552, 2019.
G. Nagy, Á. A. Mészáros, I. Bozó, and M. Tóth, “Tools supporting
green computing in Erlang,” Erlang 2019 - Proceedings of the 18th
ACM SIGPLAN International Workshop on Erlang, co-located with
ICFP 2019, pp. 30–35, 2019.
A. Al-Zamil and A. K. J. Saudagar, “Drivers and challenges of
applying green computing for sustainable agriculture: A case study,”
Sustainable Computing: Informatics and Systems, vol. 28, no. January
, p. 100264, 2020.
B. Krithika and N. Keerthana, “Comparison of intel processor with
AMD processor with green computing,” Proceedings of the 2013
International Conference on Green Computing, Communication and
Conservation of Energy, ICGCE 2013, pp. 737–742, 2013.
S. Khare and S. Jain, “Prospects of Near-Threshold Voltage design for
green computing,” Proceedings of the IEEE International Conference
on VLSI Design, pp. 120–124, 2013.
P. Nayak and T. Bhat, “Low Power Architecture Strategies for Green
Computing,” ECS Transactions, vol. 107, no. 1, pp. 16679–16687,
H. Sukarman and N. K. S. Putri, “Green Information Technology
Policy in Indonesia,” Proceedings of 2018 International Conference
on Information Management and Technology, ICIMTech 2018, no. 7,
pp. 309–314, 2018.
H. Mogale, M. Esiefarienrhe, N. Gasela, and L. Letlonkane, “Introducing DOMINO: An Eco-Friendly Asynchronous Hybrid Multicore
Architecture for Green Computing,” 2018 International Conference on
Advances in Big Data, Computing and Data Communication Systems,
icABCD 2018, 2018.
A. Joshi, C. Chen, Z. Takhirov, and B. Nazer, “A multi-layer approach
to green computing: Designing energy-efficient digital circuits and
manycore architectures,” 2012 International Green Computing Conference, IGCC 2012, pp. 13–15, 2012.
H. Lee, J. Han, Y. K. Jeong, and I. W. Lee, “Profile-based building
energy saving service in green computing environment,” 2011 International Conference on ICT Convergence, ICTC 2011, pp. 768–769,
L. Guo, B. Jin, R. Yu, C. Yao, C. Sun, and D. Huang, “Multi-label
classification methods for green computing and application for mobile
medical recommendations,” IEEE Access, vol. 4, pp. 3201–3209, 2016.
S. N. Khan, M. A. Aljaberi, and S. Muammar, “Success factors
model for green computing implementations,” International Journal of
Technology Management and Sustainable Development, vol. 18, no. 1,
pp. 37–54, 2019.
S. Kumar, “Embracing Green Computing in Molecular Phylogenetics,”
Molecular Biology and Evolution, vol. 39, no. 3, pp. 1–4, 2022.
S. Asnani, M. G. Canu, and B. Montrucchio, “Producing green computing images to optimize power consumption in OLED-based displays,”
Proceedings - International Computer Software and Applications Conference, vol. 1, pp. 529–534, 2019.
M. Rodrigues, D. F. Pigatto, and K. R. Branco, “Navigation Phases
Platform: Towards Green Computing for UAVs,” Proceedings - IEEE
Symposium on Computers and Communications, vol. 2018-June,
pp. 1171–1176, 2018.
M. Kshirsagar, R. Lahoti, T. More, and C. Ryan, “GREECOPE: Green
Computing with Piezoelectric Effect,” International Conference on
Smart Cities and Green ICT Systems, SMARTGREENS - Proceedings,
vol. 2021-April, no. Smartgreens, pp. 164–171, 2021.
D. Niyato, S. Chaisiri, and L. B. Sung, “Optimal power management
for server farm to support green computing,” 2009 9th IEEE/ACM
International Symposium on Cluster Computing and the Grid, CCGRID
, pp. 84–91, 2009.
X. Cai, H. Wang, H. Song, Y. Zhang, KeHan, and Z. Cao, “An energyefficiency-aware resource allocation strategy in multi-granularity provision for green computing,” 2019 International Conference on Computing, Networking and Communications, ICNC 2019, pp. 782–786,
S. P. Raja, “Green Computing: A Future Perspective and the Operational Analysis of a Data Center,” IEEE Transactions on Computational
Social Systems, vol. 9, no. 2, pp. 650–656, 2022.
S. M. Alismail and H. A. Kurdi, “Green algorithm to reduce the energy
consumption in cloud computing data centres,” Proceedings of 2016
SAI Computing Conference, SAI 2016, pp. 557–561, 2016.
R. Yamini, “Power management in cloud computing using green algorithm,” IEEE-International Conference on Advances in Engineering,
Science and Management, ICAESM-2012, pp. 128–133, 2012.
P. R. Theja and S. K. Khadar Babu, “An adaptive genetic algorithm
based robust QoS oriented green computing scheme for VM consolidation in large scale cloud infrastructures,” Indian Journal of Science
and Technology, vol. 8, no. 27, 2015.
P. A. Shelar, P. N. Mahalle, G. R. Shinde, H. R. Bhapkar, and
M. A. Tefera, “Performance-Aware Green Algorithm for Clustering
of Underwater Wireless Sensor Network Based on Optical Signal-toNoise Ratio,” Mathematical Problems in Engineering, vol. 2022, 2022.
B. Prakash, S. Jayashri, and G. Prabaharan, “Hybrid evolutionary
algorithm (NNACOR) for energy minimization in a wireless mesh
topology towards green computing,” Soft Computing, vol. 24, no. 14,
pp. 10893–10902, 2020.
A. K. C. Ahamed, A. Desmaison, and F. Magoulès, “Fast and green
computing with graphics processing units for solving sparse linear
systems,” Proceedings - 16th IEEE International Conference on High
Performance Computing and Communications, HPCC 2014, 11th IEEE
International Conference on Embedded Software and Systems, ICESS 2014 and 6th International Symposium on Cyberspace Safety and
Security, pp. 129–136, 2014
H. B. Barua, K. C. Mondal, and S. Khatua, “Green Computing for
Big Data and Machine Learning,” ACM International Conference
Proceeding Series, pp. 348–351, 2022.
Y. H. Hsieh and M. S. Chen, “Toward Green Computing: Striking
the Trade-Off between Memory Usage and Energy Consumption of
Sequential Pattern Mining on GPU,” Proceedings - 2018 1st IEEE
International Conference on Artificial Intelligence and Knowledge
Engineering, AIKE 2018, pp. 152–155, 2018.
P. Gandotra and R. K. Jha, “Zonal-based GrEEn algorithm for augmenting the battery life in spectrum shared networks via D2D communication,” IEEE Transactions on Vehicular Technology, vol. 68, no. 1,
pp. 405–419, 2019.
S. Y. Ihm, A. Nasridinov, J. H. Lee, and Y. H. Park, “Efficient dualitybased subsequent matching on time-series data in green computing,”
Journal of Supercomputing, vol. 69, no. 3, pp. 1039–1053, 2014.
J.-L. G.-S. Javier Corral-García, César Gómez-Martín, “Green Code,”
pp. 2–7, 2020.
N. S. More and R. B. Ingle, “Challenges in green computing for energy
saving techniques,” 2017 International Conference on Emerging Trends
and Innovation in ICT, ICEI 2017, pp. 73–76, 2017.
E. Kern, “Green Computing, Green Software, and Its Characteristics:
Awareness, Rating, Challenges,” pp. 263–273, 2018.
M.-S. Abdelouahab, R. Lozi, and L. Chua, “Memfractance: A mathematical paradigm for circuit elements with memory,” International
Journal of Bifurcation and Chaos, vol. 24, no. 09, p. 1430023, 2014.
G. DOU, K. ZHAO, M. GUO, and J. MOU, “Memristor-based lstm
network for text classification,” Fractals, vol. 0, no. 0, p. 2340040,
H. H.-C. Iu and A. L. Fitch, Development of Memristor Based Circuits.
WORLD SCIENTIFIC, 2013.