Khujamatov Halimjon, Pitchai Mohaideen, Shamsiev Alibek, Mukhamadiyev Abdinabi, Cho Jinsoo
Department of Computer Engineering, Gachon University, Seognam-daero, Sujeong-gu, Seongnam-si 1342, Gyeonggi-do, Republic of Korea.
Department of Computer Science and Engineering, National Engineering College, Kovilpatti 627011, Tamilnadu, India.
Sensors (Basel). 2024 Jul 7;24(13):4406. doi: 10.3390/s24134406.
As an alternative to flat architectures, clustering architectures are designed to minimize the total energy consumption of sensor networks. Nonetheless, sensor nodes experience increased energy consumption during data transmission, leading to a rapid depletion of energy levels as data are routed towards the base station. Although numerous strategies have been developed to address these challenges and enhance the energy efficiency of networks, the formulation of a clustering-based routing algorithm that achieves both high energy efficiency and increased packet transmission rate for large-scale sensor networks remains an NP-hard problem. Accordingly, the proposed work formulated an energy-efficient clustering mechanism using a chaotic genetic algorithm, and subsequently developed an energy-saving routing system using a bio-inspired grey wolf optimizer algorithm. The proposed chaotic genetic algorithm-grey wolf optimization (CGA-GWO) method is designed to minimize overall energy consumption by selecting energy-aware cluster heads and creating an optimal routing path to reach the base station. The simulation results demonstrate the enhanced functionality of the proposed system when associated with three more relevant systems, considering metrics such as the number of live nodes, average remaining energy level, packet delivery ratio, and overhead associated with cluster formation and routing.
作为扁平架构的替代方案,聚类架构旨在将传感器网络的总能耗降至最低。尽管如此,传感器节点在数据传输过程中能耗会增加,导致随着数据向基站路由,能量水平迅速耗尽。尽管已经开发了许多策略来应对这些挑战并提高网络的能源效率,但为大规模传感器网络制定一种既能实现高能源效率又能提高数据包传输率的基于聚类的路由算法仍然是一个NP难题。因此,所提出的工作使用混沌遗传算法制定了一种节能聚类机制,随后使用受生物启发的灰狼优化算法开发了一种节能路由系统。所提出的混沌遗传算法 - 灰狼优化(CGA - GWO)方法旨在通过选择能量感知簇头并创建到达基站的最佳路由路径来最小化总体能耗。仿真结果表明,在所考虑的诸如存活节点数量、平均剩余能量水平、数据包交付率以及与簇形成和路由相关的开销等指标方面,与另外三个相关系统相比,所提出的系统功能得到了增强。