面向UAV-BS三维网络部署的多目标优化策略研究

Research on Multi-objective Optimization Strategy for 3D UAV-BS Network Deployment

  • 摘要: 针对3维空间移动网络基站部署过程中存在的覆盖率、通信质量、飞行能耗等多目标优化问题,提出了一种改进的多目标鲸鱼优化算法。首先,融合3维空间部署结构特征构建空间信道模型,形成部署任务需求的多目标优化问题;其次,利用K中心点算法对无人机网络基站的初始2维位置进行改进,加快迭代速度、避免无效迭代和提升解的质量;然后,将改进的正余弦扰动因子融入螺旋式搜索中,以增强种群多样性,逃离局部最优;最后,引入黄金分割系数调整搜索方向,更准确地搜索最优个体,提高算法的求解能力和收敛速度。通过对比仿真实验结果表明,本文算法在多场景3种分布情况下的有效性,且覆盖率、飞行能耗等指标都具有明显优势。

     

    Abstract: Aiming at the multi-objective optimization problems such as coverage rate, communication quality and flight energy consumption existing in the deployment process of 3D space mobile network base stations, we propose an improved multi-objective whale optimization algorithm. Firstly, a spatial channel model is constructed by integrating the 3D spatial deployment characteristic to form a multi-objective optimization problem for the deployment task. Secondly, the K-medoids algorithm is utilized to improve the initial position of unmanned aerial vehicle (UAV) network base station, accelerating the iteration speed, avoiding invalid iterations and enhancing the quality of solution. Thirdly, the improved sine and cosine perturbation factors are integrated into the spiral search to enhance the population diversity and escape the local optimum. Finally, the golden section coefficient is introduced to adjust the search direction, search for the optimal individual more accurately, and improve the solution ability and convergence speed. The compared simulation results show the effectiveness of the algorithm proposed under three distributions in multiple scenarios, and it has obvious advantages in coverage rate and flight energy consumption.

     

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