A Comprehensive Overview of Network Slicing for Improving the Energy Efficiency of Fifth-Generation Networks
Abstract
:1. Introduction
1.1. Introduction to 5G Network Slicing
1.2. Overview of Main Contributions
2. Related Work
3. Network Slicing in 5G Networks
3.1. 5G Network Slicing Architecture from the Perspective of Energy Efficiency
- Throughput: for the services specific to the NS, each slice should have a designated portion of throughput reserved for itself.
- Topology: every NS is expected to possess a unique perspective on the network elements and the interconnections that bind these elements together.
- Resources: every NS needs to have a guaranteed share of computational resources (processors, storage, communication links, physical networking elements, etc.) that can be used for NS service offerings.
- Memory: since different NSs have different storage needs, memory resources need to be allocated according to the requirements of each NS.
- Traffic forwarding: an NS needs to enable the extension of its service area, utilizing forwarding routing tables and other networking resources at the control layer.
- Traffic type: specific traffic of the same type can be grouped and assigned to a single NS, which needs to ensure its complete isolation from the rest of the network and better overall resource utilization.
3.2. Energy Demand of Network Slicing Service Types
3.3. Energy Efficiency in NS Lifecycle Management
3.4. Energy Demand of NSs Provided as Services of Mobile Virtual Network Operators
4. Standardization of 5G Network Slicing Energy Efficiency KPIs
KPI Name | Description of KPI Calculation | Performance Indicator | Unit (Remark) |
---|---|---|---|
Energy efficiency of eMBB network slice (SST type 1): EEeMBB,DV | This KPI is obtained by dividing the total amount of uplink (UL) and downlink (DL) data that pass through the N3 interface (Figure 6) of the NS by the consumed energy of the NS. | UL and DL data volume | bit/J |
(If there are redundant transmission paths across the N3 interface, it is anticipated that the data volume will be accounted only once.) | |||
Energy efficiency of eMBB network slice—RAN-based (SST type 1): EERANonlyeMBB,DV | A KPI indicating the energy efficiency of eMBB-type NS is derived from measurements of traffic. The Pns for an eMBB-type NS is calculated by dividing the aggregated uplink (UL) and downlink (DL) data volumes at the F1-U, Xn-U, and X2-U interface(s) of gNBs (Figure 6) on a per-S-NSSAI basis with the total consumed energy of the NS. | UL and DL data volume | bit/J |
Energy efficiency of URLLC network slice (SST type 2): EEURLLC,Latency | This KPI quantifies the energy efficiency of the URLLC-type NS. Pns for URLLC represents the reciprocal value of the average end-to-end user plane latency for the slice. The primary focus of this KPI is latency, which serves as the sole criterion for assessing the NS’ performance. | Latency | (0.1 ms·J)−1 |
(KPI is derived by taking the reciprocal of the average end-to-end user plane (UP) latency for the NS and dividing it by the energy consumption of the NS.) | |||
Energy efficiency of URLLC network slice (SST type 2): EEURLLC,DV,Latency | Pns for this type of network slice is obtained by dividing the sum of UL and DL traffic volume on the N3 or N9 interfaces (Figure 6) by the value of the end-to-end user plane latency for that specific NS. This parameter is crucial for network operators when they want to assess EE in different time periods during which these two parameters vary. | Latency and data volume (DV) | bit/(0.1 ms·J) |
(If redundant transmission paths are implemented to enhance communication reliability, it is anticipated that the data volume will be accounted for only once.) | |||
Energy efficiency of MIoT network slice (SST type 3): EEMIoT,RegSubs | Pns is determined by the maximum number of users who have registered in the NS. The calculation of this KPI is straightforward and represents the quotient of the maximum number of registered users to the total consumed energy of the NS. | Enrolled registered subscribers within the NS | user/J |
Energy efficiency of MIoT network slice (SST type 3): EEMIoT,ActiveUEs | Pns is determined by the average number of users who are active in terms of utilizing the NS. The calculation of this KPI is realized by dividing the average number of active users (active UE) by the consumed energy of the NS. | Number of active users within the NS | User equipment per Joule (UE/J). |
5. Possibilities of Improving Energy Efficiency with Network Slicing
5.1. Operational States of NSs and Corresponding Resources
5.2. Approaches to Improving Energy Efficiency of NSs in 5G Networks
5.2.1. Resource Allocation in 5G Network Slicing
5.2.2. Network Slices Realized as Network Subnets
5.3. Limiting Network Slice Energy Consumption
5.4. Improving Energy Efficiency in the RAN Part of 5G Network Slices
5.4.1. Possibilities for Energy Savings in Sliced 5G RAN in the Time Domain
5.4.2. Possibilities for Energy Savings of Sliced 5G RAN in the Spatial Domain
5.4.3. Possibilities for Energy Savings of Sliced 5G RAN in the Frequency Domain
5.5. General Artificial Intelligence-Based Process for Optimizing the Energy Efficiency of 5G Sliced RAN
Resource Provisioning in Network Slicing Based on Artificial Intelligence
5.6. Spatial Arrangement of Network Elements for Enabling Energy-Efficient Network Slicing in 5G RAN
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
Abbreviations
Abbreviation | Definitions |
2G | Second Generation |
3G | Third Generation |
3GPP | Third-Generation Partnership Project |
4G | Fourth Generation |
5G | Fifth Generation |
6G | Sixth Generation |
AF | Application Function |
AI | Artificial Intelligence |
AAE | Active Antenna Elemant |
AMF | Access and Mobility Function |
AUSF | Authentication Server Function |
BBU | Base Band Unit |
BS | Base Station |
BSS | Business System Support |
CAPEX | Capital Expenses |
CN | Core Network |
CO2 | Carbon Dioxide |
CU | Central Unit |
DC | Dana Center |
DL | Down Link |
DU | Distributed Unit |
DV | Data Volume |
E2E | End to End |
EC | Energy Consumption |
EE | Energy Efficiency |
EEMNDV | Mobile Network Data Energy Efficiency |
eMBB | enhanced Mobile Broadband Connectivity |
ES | Energy Saving |
gNB | Next-Generation Node B |
HDLLC | High-Data-rate and Low-Latency Communications |
HMTC | High-performance Machine-Type Communications |
ICT | Information and Communication Technology |
ILP | Integer Linear Programming |
IoT | Internet of Things |
IMSI | International Mobile Subscriber Identity |
KPI | Key Performance Indicator |
LTE | Long-Term Evolution |
MANO | Management and Orchestration |
MIMO | Multiple-Input–Multiple-Output |
MIoT | Massive Internet of Things |
mMIMO | Massive MIMO |
MU-MIMO | Multi-User MIMO |
MTC | Machine-Type Communications |
mMTC | massive Machine-Type Communications |
MNO | Mobile Network Operator |
MVNO | Mobile Virtual Network Operators |
NE | Network Element |
NEF | Network Exposure Function |
NFV | Network Function Virtualization |
NG-RAN | Next-Generation Radio Access Network |
NR | New Radio |
NRF | NR Repository Function |
NF | Network Function |
NS | Network Slice |
NSA | NonStand Alone |
NSSF | Network Slicing Selection Function |
OPEX | Operational Expenses |
OFDM | Orthogonal Frequency Division Multiplexing |
OSS | Operations System Support |
PA | Power Amplifier |
PCF | Policy Control Function |
QoS | Quality of Service |
RAN | Radio Access Network |
RRH | Remote Radio Head |
RRH/U | Remote Radio Head/Unit |
RRU | Remote Radio Unit |
SA | StandAlone |
SD | Slice Differentiator |
SDN | Software Define Network |
SIM | Subscriber Identity Modul |
SMF | Session Management Function |
S-NSSAI | Single-Network Slice Selection Assistance Information |
SST ID | Slice/Service Type Identifier |
TCAM | Ternary Content Addressable Memory |
TN | Transport Network |
UDM | Unified Data Management |
UDR | Unified Data Repository |
UE | User Equipment |
UL | Up Link |
UPF | User Plane Function |
URLLC | Ultra-Reliable Low-Latency Communication |
V2X | Vehicle-to-Everything |
VNF | Virtual Network Function |
XRM | Extended Reality and Multi-modality |
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Reference | Technology/Approach Enabling Network Slicing | Research Possibilities for EE Improvement |
---|---|---|
[11] | SDN-based network slicing | Traffic-aware, end-host-aware, and rule-placement approaches using SDN scheduling |
[12] | VNF-based network slicing | Virtual network functions’ scheduling |
[1,3] | RAN-based network slicing | RAN resource scheduling |
[4] | Network slicing based on the traffic’s adaptation to energy consumption patterns | Time-shift service execution of NS with possible QoS degradation and the power supply of NS derived from renewable energy sources |
[13,14] | Ent-to-end (E2E) network slicing with stringent security requirements | NS scheduling through transport, the core, and the radio part of the network with guaranteed security requirements |
SST ID Type | SST ID Value | Characteristic | Use Case | NS Energy Demand/Capacity/ | ||
---|---|---|---|---|---|---|
eMBB | 1 | Enhanced Mobile Broadband Connectivity (eMBB) slice optimized for managing 5G enhanced mobile broadband services | Entertainment, gaming, virtual and augmented reality, video streaming, fixed wireless access | High | ||
URLLC | 2 | Slice designed for ensuring ultra-reliable low-latency communication (URLLC) (e.g., 1 ms) | Public safety, remote medicine, emergency response, smart grid | High | ||
MIoT | 3 | Slice tailored for managing extensive (Massive) Internet of Things (MIoT) applications | Sensor networks, smart telemetry, smart homes, Internet of Everything (IoE) | Low | ||
V2X | 4 | Slice crafted for handling Vehicle-to-Everything (V2X) services | Autonomous driving, driver and pedestrian safety management, traffic management, road infrastructure management | Very high | ||
HMTC | 5 | Slice suitable for facilitating high-performance machine-type communications (HMTC) | Industrial IoT, smart factories, smart cities | Low | ||
HDLLC | 6 | Slice engineered for managing high-data-rate and low-latency communications (HDLLC) | Extended reality and multi-modality services (video, audio, ambient-sensor and haptic data) | Very high | ||
SST ID Type | Area Traffic Capacity | Peak/ Experienced Data Rate | Spectrum Efficiency | Mobility | Latency | Connection Density |
eMBB | High | High | High | High | Medium | Medium |
URLLC | Low | Low | Low | High | High | Low |
MIoT | Low | Low | Low | Low | Low | High |
V2X | High | Medium | Medium | High | Low | High |
HMTC | High | High | Medium | Medium | Medium | High |
HDLLC | High | High | Medium | Low | Low | Medium |
Macro-Sleep Mode | Micro-Sleep Mode |
---|---|
Remote radio head/unit (RRH/U) | Frequency blocks |
Active antenna element (AAE) | Subcarriers |
Power amplifier (PA) | Wireless channels |
Baseband unit (BBU) | OFDM symbols |
Complete BS |
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Lorincz, J.; Kukuruzović, A.; Blažević, Z. A Comprehensive Overview of Network Slicing for Improving the Energy Efficiency of Fifth-Generation Networks. Sensors 2024, 24, 3242. https://doi.org/10.3390/s24103242
Lorincz J, Kukuruzović A, Blažević Z. A Comprehensive Overview of Network Slicing for Improving the Energy Efficiency of Fifth-Generation Networks. Sensors. 2024; 24(10):3242. https://doi.org/10.3390/s24103242
Chicago/Turabian StyleLorincz, Josip, Amar Kukuruzović, and Zoran Blažević. 2024. "A Comprehensive Overview of Network Slicing for Improving the Energy Efficiency of Fifth-Generation Networks" Sensors 24, no. 10: 3242. https://doi.org/10.3390/s24103242
APA StyleLorincz, J., Kukuruzović, A., & Blažević, Z. (2024). A Comprehensive Overview of Network Slicing for Improving the Energy Efficiency of Fifth-Generation Networks. Sensors, 24(10), 3242. https://doi.org/10.3390/s24103242