Emerging MIMO Technologies for 6G Networks
Abstract
:1. Introduction
Contributions
- 1.
- Some future use cases are described with their main stringent requirements that 6G Networks must address.
- 2.
- The main features, advantages, and related challenges of some emerging MIMO technologies for 6G Networks are presented.
- 3.
- Some open research topics related to mMIMO, XL-MIMO, IRS, and CF-mMIMO are discussed, giving directions for future works in 6G Networks.
2. Massive MIMO and XL-MIMO
- Hardware impairments: mMIMO takes advantage of the law of large numbers to mitigate fading, and, to some extent, interference. However, one significant challenge of mMIMO is the implementation and deployment of massive RF chains and performance degradation due to hardware impairments since low-cost RF chains are adopted to reduce energy consumption and deployment costs [28]. This requires solutions capable of overcoming hardware imperfections such as I/Q imbalance and phase noise.
- Mutual coupling and front-back ambiguity: When modeling antenna arrays, an assumption often made is that the separation between array elements is large enough to keep mutual coupling at negligible levels. However, this is not entirely realistic, especially in the case of many elements deployed as an array of constrained size and aperture elements. Therefore, under such practical conditions, the mutual coupling impacts the system capacity [29,30] and becomes a critical challenge for the mMIMO implementation.
- Precoding: Interference from multiple users can be mitigated on the transmission side by using beamforming techniques to support multiple data streams. Zero Forcing (ZF) or Minimum Mean Square Error (MMSE) based precoding is simple for a moderate number of antennas. However, the reliance on channel inversions, that is, matrices, can take their complexity and energy consumption to a point difficult to accommodate in massive arrays [25,35,36,37,38].
- Detection: When it comes to data stream separation in conventional systems, maximum likelihood detection is the ideal solution, but its complexity increases exponentially with the number of streams (this makes it challenging to implement in networks supporting mMTC where hundreds to thousands of devices are provided) since estimation and detection are critical issues in mMIMO systems [27].
XL-MIMO
3. Cell-Free mMIMO
- Synchronization: The CF-mMIMO network requires precise synchronization and coordination between APs, which can represent a considerable computational effort, and may require overhead signaling and significant instantaneous/statistical CSI exchanges [11];
- Practical Approach: The classical CF-mMIMO network is modeled as a single unlimited large mMIMO cell. A practical and scalable implementation must consider that the CPU and fronthaul links constitute the architectural bottleneck. Therefore, data sharing and resource allocation tasks must be performed within some APs to limit computational complexity on the CPU and signaling overhead. Moreover, fully centralized precoding and matching schemes should be avoided to overcome the need for instantaneous CSI at the CPU [11].
- Hardware impairment: The high number of multi-antenna APs in CF-mMIMO leads to significant energy consumption and hardware cost. In addition, as in mMIMO systems, a significant challenge of the CF-mMIMO is the performance degradation due to hardware deficiencies since non-ideal hardware components can add distortion noise and noise amplification at the transmitter and receiver and, consequently, distort the signal which will significantly harm the system performance [47].
- Channel knowledge: As in mMIMO systems with large antenna arrays, the perfect CSI estimation in CF-mMIMO can be impractical as the pilot transmission time may exceed the channel coherence time. However, a prerequisite to reaching all the advantages of CF-mMIMO is to have the perfect knowledge of the CSI as imperfect CSI knowledge can deteriorate the performance of the system significantly [11].
4. Intelligent Reflecting Surfaces
- CSI Acquisition: Estimating the CSI between the IRS and BS or between the IRS and UE is a challenge as the training overhead scales up with the number of elements at the IRS elements and can become impractical. In addition, to estimate the CSI, some IRS elements need to be equipped with RF chains which increases energy consumption which is one of the stringent requirements of the 6G Networks.
- Mutual coupling: When modeling the IRS, most works consider that the separation between the reflecting elements is large enough to keep mutual coupling at negligible levels. However, this is not entirely realistic, as the improvement in the system performance usually is obtained by increasing the number of reflecting elements at the IRS and, consequently, the distance between the elements considerably decreases, and the mutual coupling effect cannot be negligible [12].
- Propagation and Channel modeling: Under experimental conditions, the influence of the incident angle on the phase shift of the IRS elements needs to be considered, which is extremely challenging in a multi-path propagation environment [17]. In addition, it is well known that the typical time-division duplex (TDD) based wireless systems is no longer valid, which implies that we cannot consider the reciprocity between uplink and downlink during the channel estimation process [12,55]. Thus, further studies on these issues are needed.
- Coupled amplitude and phase: A practical reflection model for IRS reveals that the amplitude and phase are coupled and, consequently, cannot be adjusted independently [56]. This adds a challenge to the beamforming design, as finding an optimal balance between the signal amplitude and phase reflected by each IRS element is necessary. Then, further study on this effect and new beamforming design techniques are worth pursuing.
5. Use Cases and Key Performance Indicators (KPIs) of 6G Networks
5.1. Use Cases of 6G Networks
5.1.1. Large Scale Digital Twins
5.1.2. Advanced Remote Interactions
5.1.3. Advanced Agribusiness
5.1.4. Invisible Security Zones
5.2. KPIs of 6G Networks
- Rate/User: Typical achievable rate demanded by users.
- Peak Rate: Minimum cell peak rate.
- Latency: Maximum tolerable end-to-end delay.
- Reliability: Probability of the link being in operation and meeting the QoS requirements.
- Energy Efficiency: Energy efficiency compared to the 5G Networks, taking into account the eMBB or mMTC operating modes.
- Spectral Efficiency: Spectral efficiency compared to the 5G New Radio (5G NR) standard.
- Spatial Accuracy: Spatial accuracy of the positioning of the mobile devices.
- Security: The demand for security and protection of the transmitted data. The term “Nominal” refers to the level of security observed in 5G Networks, while “Critical” refers to a higher level of security, and may even include the physical layer security.
- Privacy: Sensitivity of the application regarding the privacy of data transmitted over the network. “Nominal” denotes the level of privacy obtained in 5G Networks while “Critical” refers to a higher level of privacy.
- User Density: Maximum number of devices per area.
6. The Road Ahead
7. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
List of Acronyms
5G NR | 5G New Radio |
ADC | Analog-to-Digital Converter |
AP | Access Point |
AI | Artificial Intelligence |
BS | Base Station |
CF-mMIMO | Cell-Free massive MIMO |
CPU | Central Processing Unit |
CSI | Channel State Information |
eMBB | enhanced Mobile BroadBand |
IMT | International Mobile Telecommunications |
IoT | Internet of Things |
IP | Internet Protocol |
IRS | Intelligent Reflecting Surface |
KPI | Key Performance Indicator |
MIMO | Multiple Input Multiple Output |
mMIMO | massive MIMO |
MMSE | Minimum Mean Square Error |
mMTC | massive Machine Type Communication |
QoS | Quality of Service |
RF | Radio Frequency |
TDD | Time Division Duplex |
UAV | Unmanned Aerial Vehicle |
UE | User Equipment |
URLLC | Ultra-Reliable Low-Latency Communication |
XL-MIMO | extremely large MIMO |
ZF | Zero Forcing |
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KPI | Use Case Family | |||
---|---|---|---|---|
Large Scale Digital Twins | Advanced Remote Interactions | Advanced Agribusiness | Invisible Security Zones | |
Rate/User (Mbps) | to | to | 10 to | 10 to |
Peak Rate (Gbps) | >1 | >100 | > | >100 |
Latency (ms) | <1 | <1 | <1 | <20 |
Reliability | ||||
Energy Efficiency | 10x mMTC | 10x eMBB | 10x eMBB | 10x eMBB |
Spectral efficiency (in relation to 5G NR) | 1x | 10x | 10x | 10x |
Spatial Accuracy (cm) | <10 | <1 | <1 | <10 |
Security & Privacy | Nominal | Critical | Critical | Critical |
User Density (1/) | 100 | 10 |
Use Cases | Massive MIMO | CF-mMIMO | XL MIMO | IRS |
---|---|---|---|---|
Large Scale Digital Twins | ✓ | ✓ | ✓ | ✓ |
Advanced Remote Interactions | ✓ | ✓ | ✓ | ✓ |
Advanced Agribusiness | ✗ | ✗ | ✗ | ✓ |
Invisible Security Zones | ✓ | ✓ | ✓ | ✓ |
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Dala Pegorara Souto, V.; Dester, P.S.; Soares Pereira Facina, M.; Gomes Silva, D.; de Figueiredo, F.A.P.; Rodrigues de Lima Tejerina, G.; Silveira Santos Filho, J.C.; Silveira Ferreira, J.; Mendes, L.L.; Souza, R.D.; et al. Emerging MIMO Technologies for 6G Networks. Sensors 2023, 23, 1921. https://doi.org/10.3390/s23041921
Dala Pegorara Souto V, Dester PS, Soares Pereira Facina M, Gomes Silva D, de Figueiredo FAP, Rodrigues de Lima Tejerina G, Silveira Santos Filho JC, Silveira Ferreira J, Mendes LL, Souza RD, et al. Emerging MIMO Technologies for 6G Networks. Sensors. 2023; 23(4):1921. https://doi.org/10.3390/s23041921
Chicago/Turabian StyleDala Pegorara Souto, Victoria, Plínio Santini Dester, Michelle Soares Pereira Facina, Daniely Gomes Silva, Felipe Augusto Pereira de Figueiredo, Gustavo Rodrigues de Lima Tejerina, José Cândido Silveira Santos Filho, Juliano Silveira Ferreira, Luciano Leonel Mendes, Richard Demo Souza, and et al. 2023. "Emerging MIMO Technologies for 6G Networks" Sensors 23, no. 4: 1921. https://doi.org/10.3390/s23041921
APA StyleDala Pegorara Souto, V., Dester, P. S., Soares Pereira Facina, M., Gomes Silva, D., de Figueiredo, F. A. P., Rodrigues de Lima Tejerina, G., Silveira Santos Filho, J. C., Silveira Ferreira, J., Mendes, L. L., Souza, R. D., & Cardieri, P. (2023). Emerging MIMO Technologies for 6G Networks. Sensors, 23(4), 1921. https://doi.org/10.3390/s23041921