A Survey on Green Enablers: A Study on the Energy Efficiency of AI-Based 5G Networks
Abstract
:1. Introduction
- Detailed discussion of AI technologies and green enablers: This paper provides a comprehensive analysis of AI technologies and green enablers across various network layers. It explores their roles and capabilities in enhancing energy efficiency, offering a detailed roadmap for future researchers in the field.
- Impact on energy consumption: It discusses the profound impact of these technologies on reducing energy consumption in network operations. By highlighting their importance, this paper underscores their potential to revolutionize energy efficiency practices.
- Summary of implemented methods: This paper summarizes various methods implemented to achieve energy efficiency in networks. It evaluates their effectiveness and contribution to reducing energy consumption, providing valuable insights into best practices.
- Future directions: Finally, this paper outlines future research directions in the domain of AI technologies and green enablers. It identifies potential areas for improvement and innovation, guiding researchers towards new opportunities and challenges.
2. Paper Outline
3. Fifth-Generation Network Layers and Green Enabler Technologies
3.1. Radio Access Network (RAN)
- Energy-efficient hardware: Energy-efficient base station (BS) equipment, such as power amplifiers and antennas, can be deployed to reduce power consumption.
- Dynamic power management: Intelligent power control algorithms can be implemented to adjust the transmission power levels of BSs and small cells based on real-time network conditions and user demands. In [9], optimizing WLAN energy consumption was addressed through the dynamic control of access stations, including switching them on/off and adjusting their power based on realistic traffic patterns. The study proposes several Integer Linear Programming (ILP) optimization models and heuristic algorithms for selecting optimal network configurations to minimize energy usage. While ILP models yield better instantaneous power consumption and monthly energy savings, heuristic algorithms significantly reduce computational time and provide feasible solutions quickly, making them suitable for real-world network management [9]. Both approaches ensure sufficient coverage and capacity for active users. Numerical results indicate that the heuristic approach is slightly less effective in energy savings but offers a practical alternative due to its faster computational time [10].
- Virtualization and cloud computing: Network function virtualization (NFV) and Software-defined networking (SDN) can be utilized to virtualize and centralize certain network functions, optimizing resource utilization and reducing energy consumption.
- AI Optimization: AI techniques can be employed to optimize radio resource management, including intelligent scheduling and power allocation algorithms that minimize energy consumption while ensuring QoS.
- Usage of renewable energy sources: A wireless sensor network for the remote monitoring of green Base Station Systems (BSSs) powered by renewable energy source (RES) systems was proposed in [11]. This system provides real-time and historical data, enabling detailed performance analyses and highlighting the need for careful capacity planning to prevent power outages. Linear models show significant CO2 reductions from switching to RES-powered BSSs. Additionally, a novel approach for reducing fuel consumption through regulated generator activity and a free-cooling system is proposed, demonstrating further cost and emissions savings [11].
3.1.1. Massive MIMO
- Resource optimization: By accurately predicting channel conditions, traffic patterns, and interference levels, LSTM models can enable more efficient allocation of radio resources in the MIMO system. This optimized resource allocation reduces unnecessary transmissions, leading to lower energy consumption.
- Power control: LSTM-based predictions of traffic demands can be made, and user behavior can inform dynamic power control strategies. By adjusting transmit power levels based on predicted traffic loads and channel conditions, unnecessary power consumption can be avoided. This adaptive power control helps in achieving energy savings without compromising the QoS.
3.1.2. Non-Orthogonal Multiple Access (NOMA)
3.1.3. Power Domain NOMA
3.1.4. Open Radio Access Network (O-RAN)
- Energy-aware resource allocation: ML algorithms can be utilized to optimize the allocation of network resources, such as power and bandwidth, based on the traffic load, user demand, and energy efficiency objectives. By learning from historical data and network conditions, ML models can dynamically allocate resources to minimize energy consumption while maintaining the desired QoS levels.
- Deep learning: Deep learning refers to the use of deep neural networks (DNNs) with multiple layers to learn complex representations from data. In O-RAN, deep learning techniques, such as convolutional neural networks (CNNs) or recurrent neural networks (RNNs), can be applied for tasks like signal processing, channel prediction, beamforming optimization, and network optimization.
3.2. Core Network
3.2.1. Software-Defined Networking (SDN)
3.2.2. Network Function Virtualization (NFV)
3.3. Cloud and Edge Computing
3.3.1. Cloud Radio Access Network (CRAN)
3.3.2. Multi-Access Edge Computing (MEC)
3.4. Energy Harvesting
3.4.1. Millimeter Waves
3.4.2. Heterogeneous Network (HetNet)
3.5. KPIs for Different ML Techniques
4. Future Directions
- Energy-efficient network design: Further research can focus on developing energy-efficient network architectures and protocols specifically designed for 5G networks. Investigating the trade-offs between energy consumption and network performance metrics, such as latency, throughput, and reliability, can help optimize network design. By leveraging CGP algorithms, network architectures can be optimized to reduce energy consumption while maintaining satisfactory performance levels.
- Power management techniques: Exploring advanced power management techniques can significantly contribute to reducing energy consumption in 5G networks. CGP can be used to develop intelligent algorithms that dynamically adjust the power levels or optimize the operational parameters of network elements. This can include adaptive power control, dynamic sleep modes, or efficient resource allocation, ensuring energy is utilized optimally without compromising network performance.
- Energy harvesting integration: Integrating energy harvesting techniques in 5G networks can contribute to reducing energy consumption and promoting sustainability. CGP algorithms can be used to optimize the integration of energy harvesting sources, such as solar panels or RF energy harvesting, into network components. This allows for the efficient utilization of harvested energy to power network elements and reduces reliance on conventional energy sources.
- Energy-aware self-organizing algorithms: SONs can benefit from CGP by developing energy-aware self-organizing algorithms. These algorithms can analyze real time energy consumption data and network conditions to dynamically optimize network parameters, such as coverage, handover algorithms, or resource allocation, while considering energy efficiency as a key objective. CGP-based algorithms can adaptively adjust network configurations to minimize energy consumption while maintaining the desired network performance.
- Dynamic network optimization: CGP algorithms can be utilized to enable dynamic network optimization in SON environments. By continuously analyzing network data and performance metrics, CGP-based algorithms can dynamically adjust network parameters to achieve optimal energy efficiency. This adaptive optimization approach ensures that the network operates efficiently under varying conditions and traffic patterns.
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
5G | Fifth generation |
AI | Artificial intelligence |
AR | Augmented reality |
BBUs | Baseband Processing Units |
BN | Backscatter Node |
BSSs | Base Station Systems |
CDMA | Code Division Multiple Access |
CGP | Complementary Geometric Programming |
CNN | Convolutional neural network |
CU | Centralized unit |
C-RAN | Centralized RAN |
DL | Deep learning |
DNN | Deep neural network |
D-RAN | Distributed RAN |
DRL | Deep reinforcement learning |
DU | Distributed unit |
DSC | Deadline Scheduling with Commitment |
EDF | Earliest Deadline First |
eMBB | Enhanced Mobile Broadband |
FDMA | Frequency Division Multiple Access |
GPU | Graphics Processing Unit |
HDF | Highest Demand First |
H-CRAN | Heterogeneous CRAN |
HETNET | Heterogeneous network |
HPA | Higher-Power Amplifiers |
ICT | Information and Communication Technology |
ILP | Integer Linear Programming |
IoT | Internet of Things |
JSPA | Joint subcarrier and power allocation |
KPIs | Key Performance Indicators |
LTE | Long-Term Evolution |
LSTM | Long Short-Term Memory |
MAC | Medium Access Control |
MEC | Multi-access edge computing |
MCPC | Multiple Channels Per Carrier |
MIMO | Multiple Input Multiple Output |
MNO | Mobile Network Operator |
ML | Machine learning |
MMWAVES | Millimeter Waves |
NFV | Network function virtualization |
NOMA | Non-Orthogonal Multiple Access |
NNs | Neural networks |
NS | Network slicing |
NSP | Next Shortest Path |
NMU | Next Maximum Utility |
O-FDMA | Orthogonal FDMA |
OMA | Orthogonal Multiple Access |
O-RAN | Open radio access network |
OFDM | Orthogonal Frequency Division Multiplexing |
PD-NOMA | Power Domain Non-Orthogonal Multiple Access |
PCE | Power conversion efficiency |
QoS | Quality of service |
RAN | Radio access network |
RATs | Radio Access Technologies |
RB | Resource block |
RES | Renewable energy sources |
RLDFS | Reinforcement learning dynamic function splitting |
RF | Radio frequency |
RNN | Recurrent neural networks |
SFC | Service Function Chaining |
SCUS | System Communication Units |
SDN | Software-defined networking |
SIC | Successive Interference Cancelation |
SMF | Session Management Function |
SPF | Shortest Path First |
SDF | Smallest Demand First |
TDMA | Time Division Multiple Access |
UE | User Equipment |
UPF | User Plane Function |
URLLC | Ultra-Reliable Low Latency Communication |
VMs | Virtual Machines |
VNF | Virtualized Network Function |
VR | Virtual reality |
VRAN | Virtual radio access network |
VWN | Virtualized Wireless Networks |
WSNs | Wireless sensor networks |
WSR | Weak State Routing |
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Network Level | 5G Enabler | ML Technique |
---|---|---|
RAN | Massive MIMO | Max–min and maximum production approaches shows incompetence, which is then addressed through a different neural network using the LSTM layer. DL techniques max–min and max-prod power allocation are used in the downlink of massive MIMO networks to learn the map between the positions of UEs, the optimal power allocation, and the forecast power allocation profiles for new UE placements. This technique improves power allocation compared to traditional optimization methods. In addition, the spectrum efficiency of hybrid precoding reduces the RF chains’ huge energy consumption in the massive MIMO system |
NOMA | An iterative algorithm based on CGP was implemented. BS uses NOMA for downlink transmission to UEs. The resource allocation issue, which seeks to reduce total transmit power while considering isolation limitations, is non-convex and has a high computing cost. The suggested method surpasses O-FDMA in terms of necessary transmit power, especially when most users are situated in the same area. As a result, it is worth looking into the power efficiency of NOMA in a multi-cell situation. | |
PD-NOMA |
| |
TDMA | Adopting the Lagrange dual method of joint time and power allocation in RAN showed that TDMA beat NOMA, demonstrating that TDMA is more spectral and energy-efficient. NOMA requires longer (or equal) downlink time than TDMA, consumes more, or equal, energy, and has lower spectral efficiency. | |
O-RAN | An RLDFS technique that decides on the function splits in an O-RAN is implemented to make the best use of renewable energy supply and minimize operator costs by using Q-Learning and SARSA algorithms. RLDFS is applied to an actual data set of solar irradiation and traffic rate fluctuations to evaluate the performance of the suggested technique. MNO should choose the right size of solar panels and battery capacity to save renewable energy. | |
Core network | SDN |
|
NFV | Energy efficiency is accomplished with resource allocation using a combination of NFV and LSTM compared to simple LSTM. This model was created to achieve great accuracy in the forecasting of VNF resources. Instead of using simulations, an OpenStack-based test environment was used to demonstrate that this approach outperforms the standard model. Optimizing the resource allocation of the related VNFs is one of the most critical concerns when evaluating the service quality of such an SFC, which is necessary to avoid service interruptions owing to a shortage of resources during highly fluctuating traffic situations and to lower network operation costs. | |
Edge computing | CRAN | The cell sleeping concept is used to minimize power consumption along with DNN, incorporating sleep mode with associated transmission links and optimizing beamforming weights. Implementing this architectural shift presents new technical challenges as well. Allocating wireless resources efficiently is another challenge that must be met to achieve higher power efficiency. |
MEC | A computational offloading solution was employed to make the recurrent offloading decision. To make the final decision on recurrent offloading, a computational offloading solution was implemented on the CPU. In MEC, other factors, such as radio resources, predominate over computational requirements. | |
Energy harvesting | mmWaves | A beamforming scheme using DL for precoding enhances energy efficiency. It is implemented in BSs using mmWave with massive arrays of antennas. |
HetNets | DRL, used in macro-, pico-, and femto-BSs, can solve decision-making and resource allocation problems efficiently in real time. Energy consumption is solved in uplink HetNet along with user association optimization using DRL. Its disadvantage is that small and microcells interfere with each other due to spectrum reuse. The small cells can provide the network with the data to connect several devices and massive data traffic for communication with high data rates. However, they consume excessive amounts of energy. |
5G Enablers | ML Technique | Throughput | Latency | Energy Efficiency | Peak Data Rate | Spectral Data Efficiency | QoS | Area Traffic Capacity | System BW | Battery Life | Coverage |
---|---|---|---|---|---|---|---|---|---|---|---|
Massive MIMO | Max–min approach + Neural network in LSTM layer | NA | NA | NA | NA | NA | NA | NA | Yes | NA | Yes |
O-RAN | A reinforcement learning + Q-learning and SARSA algorithm | NA | Yes | Yes | NA | NA | Yes | NA | NA | Yes | NA |
NOMA | Iterative algorithm based on CGP | NA | NA | Yes | NA | Yes | NA | NA | NA | NA | Yes |
TDMA | Lagrange dual method | Yes | NA | Yes | NA | Yes | NA | NA | NA | NA | Yes |
PD-NOMA | A sensor field of K IoT sensors, BNs, and reader | Yes | NA | Yes | Yes | Yes | NA | Yes | NA | Yes | Yes |
PD-NOMA | Heuristic joint subcarrier and power allocation scheme | NA | Yes | NA | NA | NA | Yes | NA | Yes | NA | Yes |
SDN | Hybrid machine learning | Yes | Yes | Yes | NA | NA | Yes | NA | Yes | NA | NA |
SDN | APC-III with K-means | NA | NA | NA | NA | NA | NA | Yes | Yes | NA | Yes |
NFV | Combination of NFV and Long Short-Term Memory | NA | NA | NA | NA | NA | NA | NA | NA | NA | NA |
NFV | Deep learning | NA | Yes | Yes | NA | NA | Yes | NA | NA | NA | Yes |
CRAN | Deep neural network | NA | Yes | Yes | NA | NA | Yes | NA | NA | NA | Yes |
MEC | Computational offloading solution for recurrent decision | NA | Yes | Yes | NA | NA | NA | NA | Yes | NA | Yes |
HetNets | Deep reinforcement learning | NA | NA | NA | NA | Yes | Yes | Yes | Yes | NA | Yes |
MmWave | Deep learning for precoding enhanced energy efficiency | NA | NA | Yes | NA | Yes | NA | NA | NA | NA | NA |
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Ezzeddine, Z.; Khalil, A.; Zeddini, B.; Ouslimani, H.H. A Survey on Green Enablers: A Study on the Energy Efficiency of AI-Based 5G Networks. Sensors 2024, 24, 4609. https://doi.org/10.3390/s24144609
Ezzeddine Z, Khalil A, Zeddini B, Ouslimani HH. A Survey on Green Enablers: A Study on the Energy Efficiency of AI-Based 5G Networks. Sensors. 2024; 24(14):4609. https://doi.org/10.3390/s24144609
Chicago/Turabian StyleEzzeddine, Zeinab, Ayman Khalil, Besma Zeddini, and Habiba Hafdallah Ouslimani. 2024. "A Survey on Green Enablers: A Study on the Energy Efficiency of AI-Based 5G Networks" Sensors 24, no. 14: 4609. https://doi.org/10.3390/s24144609