Methodology and Software Tool for Energy Consumption Evaluation and Optimization in Multilayer Transport Optical Networks
Abstract
:1. Introduction
2. Related Work
3. Methodology for Calculating the Energy Consumption of Multilayer Telecommunications Network
4. Development of a Simulation Tool for Studying Energy Consumption in Multilayer Communication Networks
- Build necessary amount of nodes
- Setup links between these nodes
- -
- allows us to use equipment from different manufacturers (technical features of each of the equipment for both electric and optical domains are taken into account).
- -
- to simulate two modes of data transmission (with and without intermediate optoelectronic conversion—O/E/V and without it—O/O/O);
- -
- change the speed of data transmission (the speed can be changed in the range from 1 to 100 Gbit/s);
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- reproduce power consumption of network elements (limit and intermediate nodes, regeneration equipment and in the processing of service data).
- -
- change any parameters dynamically during the simulation process;
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- determine the power consumption of electrical and acousto-optical devices at different values of their technical parameters, especially at different values of electro-optical coefficient rij and acousto-optical quality parameter M2;
- -
- combine the use of acousto-optic and electro-optic devices like switches and modulators;
- -
- it allows us to show the impact of changes in both network parameters and technical characteristics of the same devices on the power consumption of the network as a whole.
5. Results
6. Discussion
7. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Symbol | Meaning | Symbol | Meaning |
---|---|---|---|
Pp.c | general energy consumption of the network | Pwave(v) | the energy consumed by the wave conversion |
PO | energy consumption of intermediate nodes without O-E | Pcool(v) | the energy consumed by the cooling of the switch and is determined |
PE | energy consumption of intermediate nodes with E-O | ke | the share of electricity accounted for by cooling |
N | number of nodes without O-E | Umanag | the control voltage applied to the switch |
K | number of nodes with E-O | Uacous | the maximum allowable control voltage |
M | number of data blocks | the acoustic resistance of the sound material | |
Ptransp | power consumption for open through channels | the resonant frequency of the piezoelectric transducer | |
PROE | power consumption for regeneration equipment | piezo-module of the material | |
Pd_time | power consumed in equipment idle time | the piezoelectric material of the piezoelectric transducer | |
the total electricity consumption of the network layer devices | the length of the acousto-optic interaction | ||
the electricity consumption of the data link layer | the AO coefficient | ||
the total electricity consumption of the physical layer | the width p converter | ||
Lblock | the length of the data block | the energy consumption is determined at the input nodes | |
Pmax | the power consumption of the network device at its maximum load | the energy consumption is determined at the output nodes | |
Nb | the number of data blocks that the device can process | the electricity consumption of the electro-optical modulator | |
PChas(v) | determines the energy consumption of the chassis | the energy consumption of the photodetector | |
Uproc | the number of controllers used | the power consumption of amplifiers, isolators used in the network | |
Pproc(vu) | the energy consumption of a particular type of controller | Nsignal | certain number of service data blocks |
NLC | the number of linear cards used | the energy consumed by equipment | |
PLC(vi) | the energy consumption of linear cards | Psw | the energy consumed by an optical switch |
PPLIM(vj) | power consumption of interface modules and port adapters PLIM | Ps | the power consumption of the optical switch |
PSW(vm) | power consumption of switching factories SW | Pwc | the power consumption of the optical wave converter |
PMSC(vk) | power consumption of control modules MSC | POA | the power consumption of the optical amplifier |
Pequip.op(t) | the power consumption of the device level link per unit time | Q | the number of optical amplifiers used from point A to point B |
V | the speed of transmission of the optical signal in the network | T | the number of 3R regenerators used from point A to point B |
References | Description | Differences with Our Work |
---|---|---|
[21] | This article describes methodologies how to measure power consumption for different network, not only optical transport network even data center. However, there are several mathematical models for calculating power consumption for different equipment. In general, this article describes the general approaches for measuring power consumption in different telecommunication networks. | This article does not include influence electro-optic and acousto-optic effect as key technology of all-optical switches for measurement power consumption. This article does not have mathematical models and simulation model. This article is similar to the review article. |
[22] | This work describes the algorithm of optimization power consumption in telecommunication network of the Internet of Things. Article proposes methodologies for calculation power consumption for a lot of equipment internet of things. | This article does not include the influence of electro-optic and acousto-optic effect on measurement power consumption. This article does not include the schema of simulation model which should demonstrate how to calculate the parameter of energy efficiency. |
[23] | Authors take into account different networks (access, edge, core) for calculation power consumption. One of the features is methodology for calculation power consumption in different access networks. | This article does not include the influence of electro-optic and acousto-optic effect as key technology of all-optical switches for measurement power consumption. This article has a description of measurement power consumption in IoT networks but not in optical transport networks. |
[24] | This work describes methodology of calculation power consumption for different telecommunication networks. One of the features is simplified methodology for calculating the power consumption of networks | This article does not include the influence of electro-optic and acousto-optic effect as key technology of all-optical switches for measurement power consumption. |
[25] | This work describes power consumption for different devices and technologies of telecommunication networks. One of the features is the calculation power consumption of telecommunication networks in combination with cloud computing systems. | This article does not include the influence of electro-optic and acousto-optic effect as key technology of all-optical switches for measurement power consumption. |
[26] | This paper describes various energy-efficient solutions that are considered, usually consisting of a two-layer network architecture by providing a fully optical transport layer, since the corresponding energy savings can be achieved through optical technologies. The optical switching is particularly suited to significantly reduce the number of optical/electronic/optical transformations and electronic processing operations requiring high power. | The author does not show how the power consumption of the network as a whole should be determined, and the set values of power consumption are approximate and do not take into account equipment from different manufacturers. This research paper does not address the effect of electro-optical and acousto-optical effects as a key technology for all-optical switches to measure power consumption. |
Equipment | Consumption, Wt/h | Brand Model, Manufacturer |
---|---|---|
Equipment of DWDM level | 24Wt (per wavelength) | Fujitsu Flashwave |
Optical switch | 0.094 | EOspace Electro |
Optical EDFA amplifier | 2.5 | FINISAR single Channel Micro EDFA |
3R regeneration | 24 | 3R Regeneration technology XFP Module Optics |
Acousto-Optical Device | |
---|---|
Crystal | LiNbO3 |
The thickness of the crystal, d, mm | 13.4 |
The length of the crystal L, mm | 18.5 |
Electro-optical coefficient, rij, ×10−12 m/V | 3.4; 39.7 |
Electro-Optical Device | |
Piezoelectric transducer resonant frequency f, MHz | 18.5 |
Piezomodule of the piezoelectric transducer d, ×10−12 m2/V | 17.1 |
Mechanical quality factor, Q | 200 |
Transmission ratio (efficiency parameter) η, % | 85 |
Height of the piezoelectric transducer, H, mm | 6 |
Length of acoustic interaction, L, mm | 6 |
Width of an acoustic column, b, mm | 11 |
Height of an acoustic column, l, mm | 6 |
Acoustic resistance of the material, Zzv, ×103 s3/kg | 29.1 |
Parameter | Value |
---|---|
Number of intermediate nodes | 3 |
Architecture of node | Three-level |
Kind of transport technology | OTN |
Length of data block, in bits Lblock | 122,368 (OTN); 8000 (IP) |
The speed of transmission of the optical signal in the network, V | 10 |
Number of data block, M | 1000 |
Type of equipment used | Cisco, Huawei, Mikrotik, EOspace, Fujitsu Flashwave, HiLink |
Number of intermediate optoelectronic conversion, K | 0 |
Type of switching | optical |
Using wave converters | 0 |
Number of optical amplifiers, Q | 6 |
Number of 3R regenerators, T | 2 |
Equipment | Consumption, Wt/h | The Number of Data Block which Can Process the Device, Nmax | Brand Model, Manufacturer |
---|---|---|---|
Core router | 60 | 8mln IP packets | Mikrotik Cloud Core Router 1036-12G-4S |
Equipment of transport level (transponder) | 50 | 163440blocks (OTU) | Cisco ONS 15,454 10-Gbps Multirate Enhanced Transponder |
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Przystupa, K.; Beshley, M.; Kaidan, M.; Andrushchak, V.; Demydov, I.; Kochan, O.; Pieniak, D. Methodology and Software Tool for Energy Consumption Evaluation and Optimization in Multilayer Transport Optical Networks. Energies 2020, 13, 6370. https://doi.org/10.3390/en13236370
Przystupa K, Beshley M, Kaidan M, Andrushchak V, Demydov I, Kochan O, Pieniak D. Methodology and Software Tool for Energy Consumption Evaluation and Optimization in Multilayer Transport Optical Networks. Energies. 2020; 13(23):6370. https://doi.org/10.3390/en13236370
Chicago/Turabian StylePrzystupa, Krzysztof, Mykola Beshley, Mykola Kaidan, Volodymyr Andrushchak, Ivan Demydov, Orest Kochan, and Daniel Pieniak. 2020. "Methodology and Software Tool for Energy Consumption Evaluation and Optimization in Multilayer Transport Optical Networks" Energies 13, no. 23: 6370. https://doi.org/10.3390/en13236370
APA StylePrzystupa, K., Beshley, M., Kaidan, M., Andrushchak, V., Demydov, I., Kochan, O., & Pieniak, D. (2020). Methodology and Software Tool for Energy Consumption Evaluation and Optimization in Multilayer Transport Optical Networks. Energies, 13(23), 6370. https://doi.org/10.3390/en13236370