1. Introduction
Traditional base stations rely on wired backhaul network technologies, such as fiber optics, Digital Subscriber Line (xDSL), and Hybrid Fibre-coax, as the backend communication solutions. Among these options, fiber optic communication networks have become the primary choice for fixed-point base station backhaul transmission. However, the deployment of fiber optic networks entails lengthy pre-installation procedures, requiring approval from local authorities for road excavation or shared pipeline usage. Moreover, access to the interior of buildings necessitates consent from the property owners, adding to the cost and time required for fiber optic network implementation due to administrative constraints. As a result, the construction and scheduling of fiber optic networks often face challenges and complexities, impeding infrastructure development.
To address these issues, wireless loop solutions have been increasingly discussed and proposed, leveraging the characteristics of wireless networks to reduce the need for civil engineering during network deployment. By doing so, not only can the costs of construction be lowered, but also the speed of base station equipment installation can be increased. In particular, for communication infrastructure requirements in the mountainous areas of Taiwan, a wireless backhaul network presents an excellent option, as it eliminates the need for physically laying cables, facilitating the provision of wireless internet services to remote regions while ensuring uninterrupted connectivity, even in the face of natural disasters. Additionally, the same infrastructure can serve as a vital relay point for activities such as landslide monitoring, forest fire detection, and environmental monitoring.
In recent years, artificial intelligence methods have been applied in various fields to solve practical problems. In particular, issues such as network resource allocation and base station configuration, which belong to the realm of mathematical optimization theory, can be addressed using deep learning methods [
1,
2]. The integration of Internet of Things (IoT) technologies plays a significant role in various applications, relying heavily on signal coverage rates and data transmission rates in network communications [
3,
4,
5,
6]. Therefore, this paper aims to investigate the maximization of base station coverage in wireless backhaul networks. Signal interference remains a primary concern for base stations, encompassing two main scenarios: inter-cell interference from large-scale base stations [
7] and co-channel interference between micro base stations [
8,
9]. These interferences can lead to adverse effects on user network quality, causing delays, disconnections, and signal loss.
To address the first scenario, the 3rd Generation Partnership Project (3GPP) introduced Enhanced Inter-Cell Interference Coordination (eICIC) to reduce interference between macro and small cells by implementing the Almost Blank Sub-frames (ABS) mechanism. However, the issue of mutual interference between base stations has not yet reached a unified standard approach. Currently, the most common method to control wireless signal interference between base stations is adjusting the transmission power of the base stations. Numerous studies have proposed algorithms to mitigate inter-cell interference, with the ICIC [
10] and Coverage and Capacity Optimization (CCO) [
11] solutions from 3GPP release 8 being the most representative ones. Furthermore, due to the limited spectrum resources, some researchers have developed frequency reuse methods to allow the reuse of the same frequency bands. This is because when adjacent base stations transmit using the same frequency, it can lead to interference. In situations with limited bandwidth, allocating the optimal frequency bands to base stations helps mitigate interference among them [
12]. However, traditional inter-cell interference coordination mainly focuses on coordinating interferences between macro base stations and resolving edge interference problems. With the integration of heterogeneous networks, interferences are no longer confined to macro base stations, especially in the ever-changing environments where micro base stations operate. Owing to their ease of installation by ordinary users without professional on-site testing, micro base stations face much more complex interference environments than traditional macro base stations. As a result, the probability of user device disconnection and retransmission significantly increases due to environmental interference and changes in transmission channels. In this study, we explore this issue and propose potential solutions.
This paper seeks to utilize intelligent antenna technology, allowing base stations to adapt their antenna radiation patterns and power to reduce the probability of user interference or disconnection when entering high-interference areas.
2. Small-Cell Interference
In a traditional omni-directional antenna base station network environment, when user equipment (UE) is located within the overlapping coverage areas of two base stations, as shown in
Figure 1, it will receive transmission signals from both Base Station 1 (BS1) and Base Station 2 (BS2). This situation leads to signal interference issues for UE1, as it receives signals from both BS1 and BS2 while being within the coverage range of both base stations. The same applies to UE2.
One approach to address this type of interference is illustrated in
Figure 2. By adjusting the transmission power of the traditional omni-directional antenna, the transmission power of BS2 can be reduced. As a result, the overlapping coverage area between BS1 and BS2 will be decreased, effectively resolving the interference problems experienced by UE1 and UE2.
Reducing the power of the base station can effectively shrink the overlapping coverage area between base stations, resolving interference issues for user equipment (UE), as illustrated in
Figure 3a. Prior to adjusting the transmission power of Base Station 2 (BS2), all UEs, including UE1, UE2, …, and UE6, were within the coverage areas of both Base Station 1 (BS1) and BS2, resulting in a 100% overall network coverage rate. However, due to the interference between UE1 and UE2, lowering the transmission power of BS2 (as shown in
Figure 3b) effectively resolved the interference problem for UE1 and UE2. Nevertheless, this action also led to a decrease in the coverage rate, as UE5 was no longer within the coverage range of BS2 and, thus, could not receive signals. Consequently, the overall network coverage rate dropped to 83%.
Many scholars have proposed innovative smart antenna designs based on antenna theory. These designs enable signals to be utilized more effectively during both reception and transmission, thereby achieving communication or sensing objectives [
13,
14], In order to simultaneously maintain a high base station coverage rate and effectively reduce UE interference issues, this study employed intelligent adaptive directional antennas for the base stations. Unlike traditional omni-directional antennas, where the antenna gain remained the same at different angles, intelligent adaptive directional antennas can control the signal strength in different directions, resulting in varying antenna gains for terminal devices at different angles.
Figure 4 represents the intelligent adaptive directional antenna used in this study. The antenna with only a degree zero sector was activated. This represents the radiation pattern of the base station’s transmitted signal. Taking the degree zero direction as an example, it is evident from the diagram that the emission intensity in the degree zero direction was greater than in the other directions.
Figure 5 illustrates the solution using intelligent adaptive directional antennas. In
Figure 5a, the traditional omni-directional antenna architecture shows that UE1, UE2, …, and UE6 were all within the coverage areas of BS1 and BS2, resulting in an overall network coverage rate of 100%. However, interference issues occurred between UE1 and UE2. By adopting the intelligent adaptive directional antenna architecture shown in
Figure 5b, the transmission power of BS1 and BS2 could be adjusted along with the directional antennas. This not only resolved the interference problem for UE1 and UE2, but also maintained the overall network coverage rate at 100%.
Each directional antenna can be adjusted to be on or off, enabling various radiation patterns. In this study, there were five antenna directions, each of which could be activated or deactivated. This allowed for a total of 25 = 32 possibilities. Assuming there were N base stations in the entire network system, each base station had M levels of adjustable power and C antenna directions. The total number of possibilities was then (M × C)N. The research objective of this study was to determine the power level and the combination of antenna directions (on or off) for each base station throughout the network system in a way that simultaneously achieved a high network coverage rate and reduced UE signal interference issues.
5. Conclusions
In contrast to traditional omni-directional antennas that can only adjust signal coverage by varying base station power, the intelligent directional antennas used in this study offer the capability to not only adjust base station power, but also manipulate the five different antenna directions. This allows the user equipment (UE) within the antenna coverage area to receive stronger antenna gain signals. Additionally, the algorithm proposed in this research can determine the appropriate power settings for each base station and determine which antenna directions should be turned on or off within the entire network system. As a result, this approach can save energy consumption related to base station transmission power while simultaneously reducing UE interference.
Through experimentation, it was observed that coverage rates increased as the number of base stations (BS) increased and decreased as the test area expanded. Consequently, in practical deployments, it is recommended to increase the number of BS to counteract the coverage rate decrease caused by larger test areas.
In conclusion, the adoption of intelligent directional antennas with the proposed algorithm offers a promising solution to address signal interference and improve network coverage. By optimizing power settings and antenna configurations, the network can achieve higher coverage rates and better performance.