A Novel Design for Joint Collaborative NOMA Transmission with a Two–Hop Multi–Path UE Aggregation Mechanism
Abstract
:1. Introduction
- Two–hop–based collaborative UE aggregation transmission with multiple cooperative nodes (CNs) is designed for multiple users in an uplink system. NOMA is considered for cooperative transmission among users to address the limitations of spectrum resources. UE aggregation means that users communicate with the base station by two–hop multipath transmission with the assistance of CNs, thereby enhancing system data rates and coverage, and addressing large–scale connectivity.
- A primary user CN–based channel–sorting search algorithm is proposed for constructing joint transmission pairs (JTPs) based on channel gains. This algorithm aims to group compatible CNs and NOMA users into appropriate JTPs. The constructed JTPs guarantee that each user’s signal in the NOMA group is transmitted interference–free at different CNs due to the correct successive interference cancellation (SIC) order.
- A power–allocation algorithm based on the whale–optimization algorithm (WoA) for NOMA users is proposed to achieve the optimal decoding order at CNs and maximize the transmission rate of JTPs.
- A greedy strategy based on the maximum weighted independent set is designed to allocate limited subchannels among all feasible JTPs. The proposed approach prioritizes the allocation of subchannels to some optimal and non–overlapping JTPs when channel resources are limited, thereby maximizing spectral efficiency.
2. Related Work
3. Scenario Description and System Model
3.1. Two–Hop Cooperative Transmission with UE Aggregation
3.2. Design of NOMA-Based Joint Transmission Pair
4. Problem Formulation and Problem Solving
4.1. Design of Primary User CN–Based Channel–Sorting Search Algorithm
- (1)
- First, for each user j, which is considered the primary user of the current JTP, we obtain its feasible CN set and add user j to NOMA group . Feasible CN implies that these CNs possess better channel conditions relative to the base station compared to user j, and their cooperative communication is advantageous for j.
- (2)
- Since we aim to increase the spectrum efficiency for users needing assistance and are more focused on the access rate of the first hop, we sort in descending order based on the channel gain for user j.
- (3)
- After obtaining , pair the eligible NOMA group users based on their channel conditions. Users that satisfy (12) can be paired with user j to form a feasible NOMA group and update the NOMA group .
- (4)
- After all feasible JTPs have been paired, output the conflict graph and the JTP groups .
Algorithm 1 Primary user CN–based channel–sorting search algorithm (PCCSSA). |
|
4.2. WoA-Based Power Allocation of NOMA Group for Each JTP
Algorithm 2 WoA–based power–allocation algorithm (WBPA). |
|
4.2.1. Encircling Prey
4.2.2. Bubble–Net Attacking Method
- Shrinking encircling strategy: The shrinking encircling strategy is achieved by reducing the value of , resulting in a decreased search range . Since the value of a linearly decreases from 2 to 0, the value of the search range is constrained to and when the value of is between [−1, 1], the updated position of the current whale can fall between its original position and the position of the optimal whale.
- Spiral position updating strategy: Under this strategy, the update of the current whale’s position towards the optimal whale’s position is modeled as a spiral equation to mimic the humpback whale’s helical movement. This behavior can be expressed as
4.2.3. Search for Prey
4.2.4. WoA-Based Power Allocation
- (1)
- First, initialize the population size as , the maximum number of iterations as , and the whale position information , which represents the power allocation factor vector for NOMA users in the ith JTP and also serves as the input vector for this algorithm, along with the optimal whale position .
- (2)
- Start the iteration process. When the current iteration count t is less than the maximum iteration count , update the parameters a, A, R, and l for each whale in the population, and randomly select a value for .
- (3)
- If the value of is less than 0.5, evaluate the value of . If is less than 1, update the current whale position according to Equation (14). If A is greater than or equal to 1, randomly select the position of a whale in the population as the target and update the current whale position according to Equation (22).
- (4)
- If the value of is greater than or equal to 0.5, update the current whale position according to Equation (19).
- (5)
- After completing this iteration of updating the whale population’s positions, calculate the population fitness, which is the sum rate of the JTP under the power allocation factors corresponding to each whale’s position. If the fitness of a whale’s position exceeds the current optimal position , update that position to be the new optimal position.
- (6)
- Proceed to the next iteration until the iteration count t reaches the maximum number of iterations , obtaining the power allocation factors corresponding to the optimal whale position. Output these power allocation factors to complete the power allocation for NOMA users in this JTP.
4.3. Resource Set Allocation among JTPs
- (1)
- First, initialize the conflict graph , where the vertices are composed of NOMA group users constructed by Algorithm 1, and the set of subchannels to be allocated .
- (2)
- Select the vertex from the graph and determine if subchannels k can be used by the current NOMA group. If subchannel k can be used, add k to the current vertex. The weight of the vertex is calculated by Algorithm 2.
- (3)
- When the graph is not empty, find the vertex with the highest weight in the graph , and add to the independent set .
- (4)
- After adding to , remove the node and its neighbor nodes from the original graph , resulting in the updated graph .
- (5)
- Repeat the above steps until the graph becomes an empty set. Finally, output the WMIS , where the vertices in the independent set include the NOMA groups that need to be allocated subchannels and the subchannels allocated to them.
Algorithm 3 MWIS–based greedy subchannel–allocation algorithm (MGSBA). |
|
5. Simulation Result
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Abbreviations
IoT | Internet of things |
CN | Cooperative nodes |
NOMA | Non–orthogonal multiple access |
JTP | Joint transmission pair |
SIC | Successive interference cancellation |
MWIS | Maximum weighted independent set |
UDN | Ultra–dense network |
eMBB | Enhanced mobile broadband |
mMTC | Machine type communication |
URLLC | Ultra–reliable and low latency communication |
feMBB | Further–eMBB |
umMTC | Ultra–mMTC |
euRLLC | Enhanced–uRLLC |
KPI | Key performance indicators |
IA | Interference mitigation |
SU | Secondary user |
D2D | Device–to–device |
PU | Primary user |
UE | User equipment |
QoS | User quality of service |
OMA | Orthogonal multiple access |
CoMP | Coordinated multipoint |
C–NOMA | Cooperative non–orthogonal multiple access |
HI | Hardware impairment |
BS | Base station |
MIMO | Multiple–input multiple–output |
WoA | Whale–optimization algorithm |
CDF | Cumulative distribution function |
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Notation | Explanation |
---|---|
The set of CNs within the cell | |
The set of users requiring coordination | |
B | The total bandwidth of the system |
K | Number of subchannels |
The bandwidth of each subchannel | |
The maximum transmit power of the user | |
The maximum transmit power of the CN | |
Signal of the jth user on the kth subchannel | |
Received signal at the sth CN from the jth user | |
Channel coefficient of the link between the jth UE and the sth CN | |
SINR between the jth user and the sth CN | |
Data rate between the jth user to the sth CN | |
Threshold of minimum decoding rate | |
Subchannel reuse indicator of the jth user on the kth subchannel | |
The set of users in the ith NOMA group | |
User in the NOMA group | |
Data rate between NOMA group user and the sth CN | |
The CN with the minimum channel gain for the NOMA group i | |
The CN with the maximum channel gain for the NOMA group i | |
I | Number of NOMA groups |
Power allocation of the NOMA users in NOMA group | |
Power allocation factor for the qth user in NOMA | |
The maximum value of the function | |
Spectral efficiency of the system | |
Feasible CNs set of user j | |
SINR threshold |
Parameters | Value |
---|---|
Carrier frequency | 3.6 GHz |
Pathloss | |
Shadowing | Log normal as |
Fast fading | Rayleigh fading |
Bandwidth per subchannel | 1440 KHz |
Number of subchannel | 12 |
Number of CNs | 9 |
Minimum distance between UE and CNs | 20 m |
Maximum transmitted power of user | 23 dBm |
Maximum transmitted power of the CN | 33 dBm |
Cell radius of macro cell | 500 m |
Collaborative radius of the CN | 200 m |
Thermal noise | −174 dBm/Hz |
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Zhao, X.; Chen, H.-M.; Lin, S.; Li, H.; Chen, T. A Novel Design for Joint Collaborative NOMA Transmission with a Two–Hop Multi–Path UE Aggregation Mechanism. Symmetry 2024, 16, 1052. https://doi.org/10.3390/sym16081052
Zhao X, Chen H-M, Lin S, Li H, Chen T. A Novel Design for Joint Collaborative NOMA Transmission with a Two–Hop Multi–Path UE Aggregation Mechanism. Symmetry. 2024; 16(8):1052. https://doi.org/10.3390/sym16081052
Chicago/Turabian StyleZhao, Xinqi, Hua-Min Chen, Shaofu Lin, Hui Li, and Tao Chen. 2024. "A Novel Design for Joint Collaborative NOMA Transmission with a Two–Hop Multi–Path UE Aggregation Mechanism" Symmetry 16, no. 8: 1052. https://doi.org/10.3390/sym16081052
APA StyleZhao, X., Chen, H. -M., Lin, S., Li, H., & Chen, T. (2024). A Novel Design for Joint Collaborative NOMA Transmission with a Two–Hop Multi–Path UE Aggregation Mechanism. Symmetry, 16(8), 1052. https://doi.org/10.3390/sym16081052