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2021 | OriginalPaper | Chapter

Machine Learning-Based Green and Energy Efficient Traffic Grooming Architecture for Next Generation Cellular Networks

Authors : Deepa Naik, Pothumudi Sireesha, Tanmay De

Published in: Evolutionary Computing and Mobile Sustainable Networks

Publisher: Springer Singapore

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Abstract

In the year 2015, the United Nation has adopted 17 Sustainable Development Goals (SDG) to ending poverty, saving the planet and bringing prosperity for all by the year 2030. Universal broadband connectivity is considered as one significant contributing factor to achieving these goals. There is a close correlation between the national Gross Domestic Product (GDP) and broadband availability. Broadband access has great potential in opening up work opportunities and boosting income for poverty-stricken people in the remote and underdeveloped countries. It is estimated that there are still about 1.2 billion people who are still not connected to the Internet. Broadband requirements from this segment along with rising broadband demand from urban consumerism have put pressure on the available frequency spectrum. The optical fiber communication has an abundance bandwidth. The Internet Service Provider (ISP) cannot provide the optical network in remote areas, due to cost constraints, climate, weather, and high investment costs. Hence its wireless counterpart WiMAX has short set up time and low deployment cost. Hence universal broadband connectivity can be achieved by Hybrid Optical WiMAX networks. Further, the abovementioned remote areas suffer from low infrastructure and unreliable power supply. In this paper, we have used alternative sources of energy to mitigate the problem of unreliable electricity supply, particularly in the areas. The proposed machine learning-based renewable energy prediction depends on the geographical location of the network node. The predicted renewable energy can be used as a source for serving traffic demands. The traffic aggregation methods were used to minimize network resource consumption. The unpredictability in harnessing renewable energy is mitigated by using backup nonrenewable energy. The simulation results show that the proposed algorithm reduces nonrenewable energy consumption.

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Literature
1.
go back to reference Zhou H, Mao S, Agrawal P (2015) Optical power allocation for adaptive transmissions in wavelength-division multiplexing free space optical networks. Digit Commun Netw 1(3):171–180CrossRef Zhou H, Mao S, Agrawal P (2015) Optical power allocation for adaptive transmissions in wavelength-division multiplexing free space optical networks. Digit Commun Netw 1(3):171–180CrossRef
2.
go back to reference Peng M, Li Y, Jiang J, Li J, Wang C (2014) Heterogeneous cloud radio access networks: a new perspective for enhancing spectral and energy efficiencies. arXiv:1410.3028 Peng M, Li Y, Jiang J, Li J, Wang C (2014) Heterogeneous cloud radio access networks: a new perspective for enhancing spectral and energy efficiencies. arXiv:​1410.​3028
3.
go back to reference Luo C, Guo S, Guo S, Yang LT, Min G, Xie X (2014) Green communication in energy renewable wireless mesh networks: routing, rate control, and power allocation. IEEE Trans Parallel Distrib Syst 25(12):3211–3220CrossRef Luo C, Guo S, Guo S, Yang LT, Min G, Xie X (2014) Green communication in energy renewable wireless mesh networks: routing, rate control, and power allocation. IEEE Trans Parallel Distrib Syst 25(12):3211–3220CrossRef
4.
go back to reference Panwar N, Kaushik S, Kothari S (2011) Role of renewable energy sources in environmental protection: a review. Renew Sustain Energy Rev 15(3):1513–1524CrossRef Panwar N, Kaushik S, Kothari S (2011) Role of renewable energy sources in environmental protection: a review. Renew Sustain Energy Rev 15(3):1513–1524CrossRef
5.
go back to reference Voyant C, Notton G, Kalogirou S, Nivet ML, Paoli C, Motte F, Fouilloy A (2017) Machine learning methods for solar radiation forecasting: a review. Renew Energy 105:569–582CrossRef Voyant C, Notton G, Kalogirou S, Nivet ML, Paoli C, Motte F, Fouilloy A (2017) Machine learning methods for solar radiation forecasting: a review. Renew Energy 105:569–582CrossRef
6.
go back to reference Pelekanou A, Anastasopoulos M, Tzanakaki A, Simeonidou D (2018) Provisioning of 5g services employing machine learning techniques. In: 2018 international conference on optical network design and modeling (ONDM). IEEE, pp 200–205 Pelekanou A, Anastasopoulos M, Tzanakaki A, Simeonidou D (2018) Provisioning of 5g services employing machine learning techniques. In: 2018 international conference on optical network design and modeling (ONDM). IEEE, pp 200–205
7.
go back to reference Zeng J, Qiao W (2013) Short-term solar power prediction using a support vector machine. Renew Energy 52:118–127CrossRef Zeng J, Qiao W (2013) Short-term solar power prediction using a support vector machine. Renew Energy 52:118–127CrossRef
8.
go back to reference Nikoukar A, Hwang IS, Liem AT, Wang CJ (2015) Qos-aware energy-efficient mechanism for sleeping mode onus in enhanced EPON. Photonic Netw Commun 30(1):59–70 Nikoukar A, Hwang IS, Liem AT, Wang CJ (2015) Qos-aware energy-efficient mechanism for sleeping mode onus in enhanced EPON. Photonic Netw Commun 30(1):59–70
9.
go back to reference Vacca JR (2007) Optical networking best practices handbook. Wiley, Hoboken Vacca JR (2007) Optical networking best practices handbook. Wiley, Hoboken
10.
go back to reference Hiremath R, Kumar B, Balachandra P, Ravindranath N (2011) Implications of decentralised energy planning for rural india. J Sustain Energy Environ 2:31–40 Hiremath R, Kumar B, Balachandra P, Ravindranath N (2011) Implications of decentralised energy planning for rural india. J Sustain Energy Environ 2:31–40
11.
go back to reference Hiremath R, Shikha S, Ravindranath N (2007) Decentralized energy planning; modeling and applicationa review. Renew Sustain Energy Rev 11(5):729–752CrossRef Hiremath R, Shikha S, Ravindranath N (2007) Decentralized energy planning; modeling and applicationa review. Renew Sustain Energy Rev 11(5):729–752CrossRef
12.
go back to reference Deshmukh M, Deshmukh S (2008) Modeling of hybrid renewable energy systems. Renew Sustain Energy Rev 12(1):235–249CrossRef Deshmukh M, Deshmukh S (2008) Modeling of hybrid renewable energy systems. Renew Sustain Energy Rev 12(1):235–249CrossRef
13.
go back to reference Mukherjee B, Ou CS, Zhu H, Zhu K, Singhal N, Yao S (2004) Traffic grooming in mesh optical networks. In: Optical fiber communication conference, Optical Society of America, ThG1 Mukherjee B, Ou CS, Zhu H, Zhu K, Singhal N, Yao S (2004) Traffic grooming in mesh optical networks. In: Optical fiber communication conference, Optical Society of America, ThG1
14.
go back to reference Huang S, Dutta R (2007) Dynamic traffic grooming: the changing role of traffic grooming. IEEE Commun Surv Tutor 9(1):32–50CrossRef Huang S, Dutta R (2007) Dynamic traffic grooming: the changing role of traffic grooming. IEEE Commun Surv Tutor 9(1):32–50CrossRef
15.
go back to reference Chowdhury P, Tornatore M, Sarkar S, Mukherjee B (2009) Towards green broadband access networks. In: GLOBECOM 2009-2009 IEEE global telecommunications conference. IEEE, pp 1–6 Chowdhury P, Tornatore M, Sarkar S, Mukherjee B (2009) Towards green broadband access networks. In: GLOBECOM 2009-2009 IEEE global telecommunications conference. IEEE, pp 1–6
16.
go back to reference Sharma N, Gummeson J, Irwin D, Shenoy P (2010) Cloudy computing: leveraging weather forecasts in energy harvesting sensor systems. In: 2010 7th annual IEEE communications society conference on sensor, mesh and ad hoc communications and networks (SECON). IEEE, pp 1–9 Sharma N, Gummeson J, Irwin D, Shenoy P (2010) Cloudy computing: leveraging weather forecasts in energy harvesting sensor systems. In: 2010 7th annual IEEE communications society conference on sensor, mesh and ad hoc communications and networks (SECON). IEEE, pp 1–9
17.
go back to reference Feng C, Cui M, Hodge BM, Zhang J (2017) A data-driven multi-model methodology with deep feature selection for short-term wind forecasting. Appl Energy 190:1245–1257CrossRef Feng C, Cui M, Hodge BM, Zhang J (2017) A data-driven multi-model methodology with deep feature selection for short-term wind forecasting. Appl Energy 190:1245–1257CrossRef
18.
go back to reference Baliga J, Ayre R, Hinton K, Tucker RS (2011) Energy consumption in wired and wireless access networks. IEEE Commun Mag 49(6):70–77CrossRef Baliga J, Ayre R, Hinton K, Tucker RS (2011) Energy consumption in wired and wireless access networks. IEEE Commun Mag 49(6):70–77CrossRef
19.
go back to reference Maimó LF, Gómez ÁLP, Clemente FJG, Pérez MG, Pérez GM (2018) A self-adaptive deep learning-based system for anomaly detection in 5g networks. IEEE Access 6:7700–7712CrossRef Maimó LF, Gómez ÁLP, Clemente FJG, Pérez MG, Pérez GM (2018) A self-adaptive deep learning-based system for anomaly detection in 5g networks. IEEE Access 6:7700–7712CrossRef
20.
go back to reference Bankole AA, Ajila SA (2013) Cloud client prediction models for cloud resource provisioning in a multitier web application environment. In 2013 IEEE Seventh International Symposium on Service-Oriented System Engineering. IEEE, pp 156–161 Bankole AA, Ajila SA (2013) Cloud client prediction models for cloud resource provisioning in a multitier web application environment. In 2013 IEEE Seventh International Symposium on Service-Oriented System Engineering. IEEE, pp 156–161
Metadata
Title
Machine Learning-Based Green and Energy Efficient Traffic Grooming Architecture for Next Generation Cellular Networks
Authors
Deepa Naik
Pothumudi Sireesha
Tanmay De
Copyright Year
2021
Publisher
Springer Singapore
DOI
https://doi.org/10.1007/978-981-15-5258-8_26