The Internet-of-Things (IoT) is widely applied for forest monitoring, since the sensor nodes (SNs) in IoT network are low-cost and have computing ability to process the monitoring data. To further improve the performance of forest monitoring, uncrewed aerial vehicles (UAVs) are employed as the data processors to enhance computing capability. However, efficient forest monitoring with limited energy budget and computing resource presents a significant challenge. For this purpose, this paper formulates a multi-objective optimization framework to simultaneously consider three optimization objectives, which are minimizing the maximum computing delay, minimizing the total motion energy consumption, and minimizing the maximum computing resource, corresponding to efficient forest monitoring, energy consumption reduction, and computing resource control, respectively. Due to the hybrid solution space that consists of continuous and discrete solutions, we propose a diffusion model-enhanced improved multi-objective grey wolf optimizer (IMOGWO) to solve the formulated framework. The simulation results show that the proposed IMOGWO outperforms other benchmarks for solving the formulated framework. Specifically, for a small-scale network with $6$ UAVs and $50$ SNs, compared to the suboptimal benchmark, IMOGWO reduces the motion energy consumption and the computing resource by $53.32\%$ and $9.83\%$, respectively, while maintaining computing delay at the same level. Similarly, for a large-scale network with $8$ UAVs and $100$ SNs, IMOGWO achieves reductions of $41.81\%$ in motion energy consumption and $7.93\%$ in computing resource, with the computing delay also remaining comparable.
翻译:物联网因其传感器节点成本低廉且具备监测数据处理的计算能力,被广泛应用于森林监测。为进一步提升森林监测性能,无人机被用作数据处理器以增强计算能力。然而,在有限能量预算与计算资源下实现高效森林监测仍面临重大挑战。为此,本文构建了一个多目标优化框架,同时考虑三个优化目标:最小化最大计算延迟、最小化总运动能耗以及最小化最大计算资源,分别对应高效森林监测、能耗降低与计算资源控制。由于解空间包含连续与离散混合变量,我们提出一种扩散模型增强的改进多目标灰狼优化器(IMOGWO)来求解该框架。仿真结果表明,所提IMOGWO在求解该框架时优于其他基准算法。具体而言,在包含6架无人机与50个传感器节点的小规模网络中,相较于次优基准算法,IMOGWO在保持计算延迟水平相当的同时,将运动能耗与计算资源分别降低了53.32%与9.83%。类似地,在包含8架无人机与100个传感器节点的大规模网络中,IMOGWO实现了运动能耗降低41.81%与计算资源降低7.93%,同时计算延迟仍保持可比水平。