Next-generation wireless networks will deploy UAVs dynamically as aerial base stations (UAV-BSs) to boost the wireless network coverage in the out of reach areas. To provide an efficient service in stochastic environments, the optimal number of UAV-BSs, their locations, and trajectories must be specified appropriately for different scenarios. Such deployment requires an intelligent decision-making mechanism that can deal with various variables at different times. This paper proposes a multi UAV-BS deployment model for smart farming, formulated as a Multi-Criteria Decision Making (MCDM) method to find the optimal number of UAV-BSs to monitor animals' behavior. This model considers the effect of UAV-BSs' signal interference and path loss changes caused by users' mobility to maximize the system's efficiency. To avoid collision among UAV-BSs, we split the considered area into several clusters, each covered by a UAV-BS. Our simulation results suggest up to 11x higher deployment efficiency than the benchmark clustering algorithm.
翻译:下一代无线网络将动态地部署无人机,作为空基站(无人机-BS),在距离不远的地区扩大无线网络覆盖面。为了在随机环境中提供高效服务,必须针对不同情况适当规定无人机-BS的最佳数目、位置和轨迹。这种部署需要智能决策机制,在不同的时间处理各种变量。本文件提议了一种多无人机-BS智能农作部署模式,作为多标准决策(MCDM)方法,以找到监测动物行为的无人机-BS的最佳数目。这一模式考虑了无人机-BS信号干扰和用户移动导致路径损失变化的影响,以最大限度地提高系统效率。为了避免无人机-BS发生碰撞,我们将考虑的区域分成若干组,每个组由无人机-BS覆盖。我们的模拟结果表明,部署效率高达11x,高于基准群集算法。