A Coalition Formation Game-Based Multi-User Grouping Approach in the Jamming Environment
Abstract
:1. Introduction
2. System Model and Problem Formulation
2.1. System Model
2.2. Problem Formulation
3. Users Coalition Formation Game
4. Distributed Federation Formation Algorithm for Multiple Users
- Merge rule: when the user prefers to merge, then any set of coalitions is merged, where and then .
- Split rules: when a user preference splits, any coalition is split, , and then .
Algorithm 1 Multi-user distributed anti-jamming coalition formation algorithm (MDACF) |
Input: the current position of each user and the position of the jammer Initialize the coalition grouping. Each user randomly selects a channel for transmission to obtain the user’s coalition grouping. For do Randomly select a user, calculate the total transmission rate of its coalition, and the coalition utility of that user is calculated according to Equation (6). Choose to join other nearby coalitions according to the “Merge” and “Split” rules, and calculate the new coalition utility. According to the reciprocity order, if Equation (8) is satisfied, the user can obtain higher coalition utility; then, change the coalition; otherwise, maintain the current coalition. end for Output: coalition grouping results for users |
5. Simulation Result and Analysis
5.1. Parameter Settings
5.2. Analysis of Simulation
6. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Notations | Explanation |
---|---|
The user | |
The coalition | |
The coalition formation scheme | |
The user in the coalition | |
The jammer | |
The number of coalitions | |
The number of users | |
The set of all the users | |
The distance between user and jammer | |
The distance between user and jammer | |
The channel gain between user and | |
The channel gain between user and jammer |
Parameters | Value |
---|---|
Target area | 10 km × 10 km |
Number of users | 10 |
Number of channels | 3 |
Channel bandwidth B | 1 MHz |
Channel noise power N0 | 2 |
Path loss factor | 2 |
Jamming power | 100 W |
Transmission power |
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Ding, H.; Niu, Y.; Han, C.; Xiang, P. A Coalition Formation Game-Based Multi-User Grouping Approach in the Jamming Environment. Electronics 2022, 11, 2241. https://doi.org/10.3390/electronics11142241
Ding H, Niu Y, Han C, Xiang P. A Coalition Formation Game-Based Multi-User Grouping Approach in the Jamming Environment. Electronics. 2022; 11(14):2241. https://doi.org/10.3390/electronics11142241
Chicago/Turabian StyleDing, Huihui, Yingtao Niu, Chen Han, and Peng Xiang. 2022. "A Coalition Formation Game-Based Multi-User Grouping Approach in the Jamming Environment" Electronics 11, no. 14: 2241. https://doi.org/10.3390/electronics11142241
APA StyleDing, H., Niu, Y., Han, C., & Xiang, P. (2022). A Coalition Formation Game-Based Multi-User Grouping Approach in the Jamming Environment. Electronics, 11(14), 2241. https://doi.org/10.3390/electronics11142241