Since there are currently no 3GPP standard specifications for the 6G RAN, a review of the RAN models being proposed for 6G is presented in this section. A few power models that could be used in 6G are also presented.
5.1. Proposed 6G RAN Architectures
The initial deployment of 6G technology is anticipated for 2027. However, numerous proposals for 6G RAN architectures have already been put forward. The white paper referenced in [
46] offers valuable insights into the potential opportunities, benefits, and challenges associated with Open RAN architectures, including those for 6G networks. This research underscores the necessity of adopting innovative approaches to the design and implementation of mobile networks to meet the diverse requirements of future deployment strategies and usage models. According to [
46], “open RAN” is characterized as a software-virtualized RAN comprising discrete components with open interface standards, such as open fronthaul. This approach, which leverages collaboratively developed open interfaces and standards, facilitates implementation on non-proprietary hardware and software. Furthermore, Open RAN enhances the network performance and user experience by integrating intelligence through open platforms based on artificial intelligence and machine learning.
The advent of 6G networks is expected to bring significant benefits through the adoption of open and disaggregated network designs. Firstly, these networks can be customized to meet the specific requirements of various use cases, thereby addressing the diverse needs of different applications. Open RAN exemplifies this approach by enhancing efficiency and scalability through the migration of network functions to the cloud. Additionally, the introduction of new interfaces alongside the existing 3GPP open interfaces, as proposed by Open RAN, can increase market flexibility and potentially boost competition within the telecommunications supply chains. By facilitating the reuse of multi-vendor network components and the integration of new elements to support 6G scenarios, open and disaggregated network architectures can significantly aid the transition to 6G [
46].
Future mobile networks are expected to continue the trend of network horizontalization, which includes features such as hardware/software separation, management, and exposure. The advent of 6G presents an opportunity to re-evaluate and enhance the 3GPP-standardized functional architecture to better align with network horizontalization. An effective orchestration of the RAN and core networks is essential to harmonize infrastructure, administration, and tools, which have been key focus areas in the development of open RAN. In the 6G era, achieving network horizontalization involves several competitive architectural strategies, including cloudification and orchestration, the implementation of an open fronthaul interface to enable flexible RAN disaggregation, and the exposure of the network through new interfaces and control components derived from the current O-RAN design. To meet the increasing demand for ubiquitous connectivity across both societal and industrial sectors, 6G networks are designed to support a broader range of use cases. The drive towards a more open and intelligent network, while maintaining simplicity and sustainability, is guided by diverse criteria. Network horizontalization is viewed as the ongoing trend towards the convergence of previously isolated technology domains, such as telecommunications and IT, onto a unified service platform. Openness is anticipated to be a crucial element in the evolution of 6G, as it is vital for component and system interoperability, system efficiency, and service innovation.
Moreover, [
46] asserts that energy efficiency and the reduction of the carbon footprint are central to the development of next-generation mobile networks. Despite a tenfold improvement in energy efficiency per bit, the transition to 5G has led to increased cell and antenna density, resulting in a tenfold rise in energy consumption. As 6G progresses towards higher frequencies, such as Terahertz (THz), the challenge of energy consumption will intensify due to denser networks and smaller cells. Therefore, a significant reduction in energy consumption per bit is a key incentive for 6G solutions. These solutions offer several energy efficiency benefits, including system-on-chip technologies that produce less heat, power amplifiers with higher energy efficiency, innovative features like deep sleep software functionality (which can reduce the power consumption of mMIMO radios by up to 70% during off-peak hours), and the ability to switch traffic to the most energy-efficient bands. However, several challenges may arise with the implementation of an open RAN design. It is widely recognized that managing multiple vendors and open interfaces introduces security risks. Additionally, it can be complex to oversee the lifecycle, integrate various platforms (such as the RAN Intelligent Controller (RIC) and Service Management and Orchestration components), and ensure their seamless operation across different vertical use cases. Furthermore, the mix-and-match approach of the end-to-end (E2E) solution can be problematic due to the network’s complexity, particularly in integrating components from various vendors. These factors could impede widespread compatibility among vendors.
The application of Artificial Intelligence (AI)-based Radio Access Networks (RAN) in the transition from 5G to 6G technology has been examined in [
47], emphasizing aspects such as the planning and optimization of RF resources, network reach and capacity management, and use cases across various industries. Deep learning (DL), a subset of machine learning (ML), and AI are considered central to the innovative technologies of 6G. These technologies facilitate communications at multiple layers using millimeter wave (mmWave) and THz waves, and support channel detection and modulation categorization at the physical layer. Additionally, DL is utilized for channel assignment and beamforming design at the link layer. In mmWave and THz systems, channel estimation frequency and the associated overhead can increase significantly due to micro-range channel variations. AI-RAN systems can predict network traffic patterns, adjust network capacity, and reduce the need for over-provisioning. Furthermore, AI-RAN can optimize network resource allocation in real-time, ensuring an efficient distribution of resources to meet user demands. Intelligent automation and orchestration facilitated by AI-RAN can lead to better decision-making. AI aids the industry by automating routine network tasks and enhancing service delivery, allowing operators to focus on more strategic activities. Another feature enabled by AI-RAN is network slicing, which allows network operators to create virtualized network segments tailored to specific user needs. With AI, RAN networks can become more reliable, flexible, and efficient, while also reducing costs and improving decision-making.
The next generation of networks is anticipated to be significantly shaped by AI-RAN. Employing deep learning techniques to optimize network performance, predict traffic patterns, and efficiently allocate radio resources could greatly enhance 6G RF planning and optimization. AI methods can self-adjust parameters such as antenna tilting, beamforming, and power control by analyzing vast amounts of data, thereby improving signal quality, reducing interference, and increasing the overall network efficiency. Additionally, the coverage and capacity management of 6G AI-RAN networks can be dynamically adjusted in real-time to meet demand, ensuring an optimal service with minimal congestion. However, integrating AI-RAN architecture will require substantial computational power, efficient methodologies, and robust infrastructure to manage the increased complexity and processing demands [
47]. In a similar research direction, the exploration of Open RAN’s application of Artificial Intelligence has emerged as a promising field. Researchers have investigated methodologies and technologies to enable virtualization, network slicing, and multi-vendor interoperability while leveraging open-source software within Open RAN frameworks to enhance network performance, resource allocation, and scalability. Open RAN advocates for open interfaces and software-defined networking to improve network flexibility, interoperability, and cost efficiency [
48].
Integrating current terrestrial communication systems with aerial radio access networks (ARANs) represents a promising new direction. Utilizing satellites, drones, and unmanned aerial vehicles (UAVs), ARANs can rapidly establish a flexible access network on demand. As we advance towards a comprehensive 6G global access infrastructure, ARANs are expected to facilitate the development of efficient mobile communication systems. The framework proposed by researchers in [
40] outlines the deployment of Aerial RANs over 6G networks. By employing aerial base stations (ABSs), ARANs provide end users with a radio access medium delivered from the sky for Internet services. Common examples of ABSs include UAVs, drones, balloons, and airplanes. Terrestrial macro base stations or miniaturized satellites can offer backhaul links. Future research is anticipated to benefit from a comprehensive and standardized reference model that integrates existing systems into a multitier and hierarchical ARAN.
An ARAN architecture typically consists of three main components: a primary segment that includes a cross-tier networking infrastructure shared among Aerial Base Stations (ABSs) at Low Altitude Platform (LAP), High Altitude Platform (HAP), and Low Earth Orbit (LEO) altitudes; a frontend interface that provides terrestrial and aerial access points to collect user connections; and a backend interface that connects the ARAN infrastructure to terrestrial core networks. Developing energy consumption models for aerial communications necessitates careful consideration of various factors, such as different types of UAVs, flight speeds, accelerations, payloads, and environmental conditions like weather. These factors are crucial because UAVs often operate in highly variable environments, which significantly affect their flight capabilities. For example, a UAV can achieve higher speeds with a lower energy consumption when flying with the wind. Additionally, ambient temperature can directly impact efficiency by affecting battery life [
40].
5.2. Power Consumption in 6G Networks
The telecom sector is increasingly concerned with rising energy consumption, a trend that extends to 6G discussions, where the goal is to achieve continuous service growth while reducing network energy usage. In their report, [
49] describe how the mobile industry is preparing to design the new 6G standard, which aims to provide even greater energy savings than 5G NR. As a new generation technology, 6G offers a unique opportunity to address the significant energy costs associated with cellular networks, with the RAN accounting for up to 76% of energy consumption. To create a more energy-efficient network, it is crucial to understand traffic characteristics and ensure that 6G can leverage deployment designs that centralize RAN operations to minimize energy usage. The radio product industry is also increasingly adopting a lower-layer split, which enhances RAN processing resource coordination, virtualization, adaptability, and hardware pooling, yielding substantial benefits. The lean architecture of 5G NR, which prioritizes data-related transmissions and eliminates unnecessary ones, has been highly effective, enabling networks to save considerable energy through micro-sleep.
Building on the successful implementations of lean design in 5G, it is prudent to extend these principles into 6G. Key considerations for 6G lean design include enhanced time-domain lean design, which involves further reducing the time-domain footprint of signals associated with idle mode, such as system information broadcasts, paging, and random access, and increasing the opportunities for micro-sleep transmission and reception in network equipment. Spatial domain lean design can limit system information transmission to a subset of transmission locations and utilize single-frequency-network (SFN) transmission formats to expand coverage. Frequency domain lean design focuses on improving solutions that enable carriers to operate without transmitting system information, as the regular transmission of downlink mobility reference signals (RS) is not necessary for all of the carriers; only certain carriers need to support specific criteria and functions, allowing for a dynamic adjustment of the carrier capacity to meet current traffic demands.
The next 6G system presents a significant opportunity to enhance lean design improvements and ensure that all user devices support these features from the initial release. Achieving an energy-efficient network requires careful tuning based on real-time traffic and performance needs. The design must prioritize the scalability and rapid adaptation to maintain the optimal operation with the fewest active hardware components. Enhanced visibility into end-user experience and real-time network energy utilization enables a fast and precise hardware setup and management [
49,
50]. Similarly, [
51] emphasized the critical need for sustainable energy solutions in future wireless networks as the number of connected devices and mobile terminals continues to grow. In response, 6G sustainable networks are rapidly emerging to provide energy-efficient solutions for connected networks.
A power optimization model for 6G-enabled massive IoT networks aimed at enhancing the system performance while minimizing the power overhead due to the large number of connected devices was developed in [
51]. By optimizing power resource management, the proposed network was tested for the maximum power allocation and spectral efficiency across various network operations with different precoding schemes. Notably, cell-free networks are emerging as a highly promising technology for 6G communication scenarios. Cell-free massive MIMO is an innovative approach that employs a distributed network of access points (APs) to support a large number of users, with each AP serving a subset of users. The study proposed two user-scheduling algorithms to allocate users among the APs. The performance of the proposed model was evaluated for different precoding schemes, considering parametric variations in AP deployment, Channel State Information (CSI) availability, spatial correlation, and the number of antennas at the AP. It was found that APs with numerous antennas and a less dense deployment achieved better spectral efficiency.
For both maximal ratio (MR) and local minimum mean square error (LPMMSE) precoding, the network performance declines with a spatial correlation in distributed network operations when the access point (AP) manages all signal processing. With perfect channel state information (CSI), 95% of network users employing the partial minimum mean square error (PMMSE) precoding should experience a 4.1% improvement in spectral efficiency (SE). Additionally, the system’s performance, incorporating power optimization mechanisms, was evaluated using the proposed user-scheduling methodologies. Each AP sets its maximum power at 141.7 mW for users with strong channels and its minimum power at 3.19 mW for users with weak channels using centralized PMMSE precoding. The Minimum Distance Scheduling (MCS) algorithm enhances the spectral efficiency for all users compared to the MDS algorithm. It was also observed that fractional power allocation achieves the optimal performance, providing most users with a higher spectral efficiency.
To mitigate the environmental impact and energy consumption of future cellular networks, it is crucial to explore network energy saving (NES) solutions as we advance towards 6G wireless technology. This technology promises ultra-high data rates, exceptionally low latency, and a substantial increase in the number of connected devices. The 3rd Generation Partnership Project (3GPP) has proposed the use of network-controlled repeaters (NCRs) to enhance the network coverage cost-effectively. In this context, [
2] examines NES methods for future 6G networks and recommends optimal NES strategies aimed at maximizing the network’s overall energy efficiency. As a cost-effective and energy-efficient approach to enhancing the performance of future 6G networks, repeaters facilitate power reductions at next-generation nodeB (gNB) and improve both the overall energy efficiency (EE) and spectrum efficiency (SE).
The primary objective discussed in [
2] was to optimize a set of parameters for next-generation nodeB (gNB) and network-controlled repeaters (NCR) to achieve the highest possible network energy efficiency (EE). The study measured the EE benefits and the associated spectral efficiency (SE) losses by examining trade-offs between the energy-efficient operation and quality of service (QoS) degradation for user equipment (UE). This was accomplished through an analytical study of basic network configurations with and without a repeater (or NCR), and a comprehensive simulation of the entire system to assess the effects of energy-efficient operations in a realistic network rollout. Recommendations were made to implement network energy saving (NES) and energy-efficient operations using various power amplifier (PA) technologies. The analysis considered two main scenarios: direct and indirect network topologies. The direct topology involved a direct connection between UE and gNB, with variable parameters at the gNB including the number of active antenna elements for transmission, their respective PA output power, and bandwidth, while the number of receiving antennas for the UE was assumed to be fixed. In the indirect scenario, an NCR was used to connect the UE to the gNB. For evaluating the system’s energy efficiency, the NCR’s parameters, such as the proportion of antennas involved in transmission and reception processes, along with the gNB’s settings, were considered.
The power consumption model presented for the gNB and network-controlled repeaters (NCRs) is detailed below.
where
is the constant power consumption component that does not vary with gNB settings,
is the power consumption not related to the power amplifier and varies according to the number of radio units deployed,
is the power consumption of power amplifiers, and the power consumption of power amplifiers is calculated as follows:
where
is the number of antenna elements actively involved in transmission,
is the power amplifier output power of every antenna element, and
is the standard transmit power of each radio unit.
η is the normalized power amplifier efficiency, and
is the reference value, and
is the constant power consumption component that does not vary with gNB settings.
The power consumption of the network-controlled repeater is calculated as follows:
where
is the standard component related to the network-controlled functions of the NCR,
is the power consumed by the analogue receive front-end of NCR, and
is the power consumed by the analogue transmit front-end of NCR.
The simulations were conducted using a 28 GHz band with 400 MHz of the operating bandwidth, assuming a fully loaded gNB and 100% buffer traffic. In the link-level direct topology scenario, energy efficiency improved by approximately 30%, albeit with a rate degradation of up to 10%. Conversely, varying the power amplifier efficiency resulted in a 60% improvement in energy efficiency, accompanied by a 20% decrease in spectral efficiency. For the indirect topology scenario, simulations revealed a 56% increase in energy efficiency, with a rate performance drop ranging from 3% to 20% when the energy efficiency optimization algorithms were applied. Ref. [
2] demonstrated that NES techniques could be employed to adjust the transmit and receive the parameters of gNB and NCR, enhancing energy efficiency (EE) and reducing network power consumption. According to our link and system-level findings, it is more energy-efficient in high SNR regimes to prioritize energy efficiency over spectral efficiency. Incorporating bias judgment and advanced power amplifier technology significantly improved energy efficiency compared to outdated power amplifier technologies. Additionally, networks utilizing repeaters benefited from enhanced spectral efficiency and contributed to power savings in gNB by leveraging the robust backhaul link, leading to a higher overall energy efficiency. Therefore, repeaters represent a cost-effective and energy-efficient approach to enhancing the future 6G network capacity and coverage.