基于改进多目标优化的UAV辅助工业IoT数据采集方法

An improved multi-objective optimization-based method for UAV-assisted industrial IoT data collection

  • 摘要: 在智慧工厂建设进程中,高效的工业物联网数据采集系统是实现数据驱动决策的基础.然而,传统的固定地面基站采集方式存在部署不灵活、基础设施开销大以及环境适应性差等问题.针对这些问题,本文提出了一种基于多目标优化的无人机辅助数据收集系统.首先,综合考虑无人机的悬停位置、设备访问顺序、飞行速度以及终端设备发射功率等因素,构建了无人机辅助数据采集的多目标优化数学模型,旨在最大化设备的最小数据传输速率、最小化设备总能耗和无人机总能耗.其次,设计了一种基于动态惯性权重和Levy飞行机制的改进型多目标粒子群优化算法求解该模型.在不同工业厂区拓扑结构下开展仿真实验,对比分析了所提方法与随机部署、均匀部署两种方案的性能.实验结果表明,所提算法在数据传输效率和能源消耗等关键指标上均优于现有基准算法,为数据驱动的智能制造提供了有效的技术支撑.

     

    Abstract: An efficient Industrial Internet of Things (IIoT) data collection system is crucial for data-driven decision-making in smart factory construction. However, traditional fixed ground station collection methods face challenges such as inflexible deployment, high infrastructure costs, and poor environmental adaptability. To address these issues, this paper proposes a UAV-assisted data collection system based on multi-objective optimization. First, a mathematical model for UAV-assisted data collection is constructed by comprehensively considering factors including UAV hovering position selection, device access sequence planning, flight speed control, and terminal device transmission power adjustment. The model aims to simultaneously maximize the minimum data transmission rate of all devices while minimizing both device total energy consumption and UAV total energy consumption. Second, an improved multi-objective particle swarm optimization algorithm incorporating dynamic inertia weight and Levy flight mechanism is designed to solve this model. Through simulation experiments under different industrial plant topologies, the performance of random deployment and uniform deployment strategies are comparatively analyzed. Results demonstrate that the proposed algorithm outperforms existing baseline algorithms in key indicators such as data transmission efficiency and energy consumption, providing effective technical support for data-driven intelligent manufacturing.

     

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