School of Computer Science, Wuhan University, Wuhan 430072, China.
Sensors (Basel). 2021 Jul 23;21(15):5002. doi: 10.3390/s21155002.
Wireless sensor networks are appealing, largely because they do not need wired infrastructure, but it is precisely this feature that renders them energy-constrained. The duty cycle scheduling is perceived as a contributor to the energy efficiency of sensing. This paper developed a novel paradigm for modeling wireless sensor networks; in this context, an adaptive sensing scheduling strategy is proposed depending on event occurrence behavior, and the scheduling problem is framed as an optimization problem. The optimization objectives include reducing energy depletion and optimizing detection accuracy. We determine the explicit form of the objective function by numerical fitting and found that the objective function aggregated by the fitting functions is a bivariate multimodal function that favors the Fibonacci tree optimization algorithm. Then, with the optimal parameters optimized by the Fibonacci tree optimization algorithm, the scheduling scheme can be easily deployed, and it behaves consistently in the coming hours. The proposed "Fibonacci Tree Optimization Strategy" ("FTOS") outperforms lightweight deployment-aware scheduling (LDAS), balanced-energy scheduling (BS), distributed self-spreading algorithm (DSS) and probing environment and collaborating adaptive sleeping (PECAS) in achieving the aforementioned scheduling objectives. The Fibonacci tree optimization algorithm has attained a better optimistic effect than the artificial bee colony (ABC) algorithm, differential evolution (DE) algorithm, genetic algorithm (GA) algorithm, particle swarm optimization (PSO) algorithm, and comprehensive learning particle swarm optimization (CLPSO) algorithm in multiple runs.
无线传感器网络具有吸引力,主要是因为它们不需要有线基础设施,但正是这一特点使它们受到能源的限制。占空比调度被认为是提高传感能效的一种手段。本文提出了一种新的无线传感器网络建模范例;在这种情况下,提出了一种基于事件发生行为的自适应传感调度策略,将调度问题框定为一个优化问题。优化目标包括降低能量消耗和优化检测精度。我们通过数值拟合确定了目标函数的显式形式,并发现拟合函数聚集的目标函数是一个双变量多峰函数,有利于斐波那契树优化算法。然后,使用斐波那契树优化算法优化的最优参数,可以轻松部署调度方案,并在未来几个小时内保持一致的性能。所提出的“斐波那契树优化策略”(FTOS)在实现上述调度目标方面优于轻量级感知调度(LDAS)、均衡能量调度(BS)、分布式自扩展算法(DSS)和探测环境与协作自适应休眠(PECAS)。在多次运行中,斐波那契树优化算法的乐观效果优于人工蜂群(ABC)算法、差分进化(DE)算法、遗传算法(GA)算法、粒子群优化(PSO)算法和综合学习粒子群优化(CLPSO)算法。