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Refining Network Lifetime of Wireless Sensor Network Using Energy-Efficient Clustering and DRL-Based Sleep Scheduling

机译:使用节能集群和基于DRL的睡眠调度来完善无线传感器网络的网络寿命

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摘要

Over the recent era, Wireless Sensor Network (WSN) has attracted much attention among industrialists and researchers owing to its contribution to numerous applications including military, environmental monitoring and so on. However, reducing the network delay and improving the network lifetime are always big issues in the domain of WSN. To resolve these downsides, we propose an Energy-Efficient Scheduling using the Deep Reinforcement Learning (DRL) (E S-DRL) algorithm in WSN. E S-DRL contributes three phases to prolong network lifetime and to reduce network delay that is: the clustering phase, duty-cycling phase and routing phase. E S-DRL starts with the clustering phase where we reduce the energy consumption incurred during data aggregation. It is achieved through the Zone-based Clustering (ZbC) scheme. In the ZbC scheme, hybrid Particle Swarm Optimization (PSO) and Affinity Propagation (AP) algorithms are utilized. Duty cycling is adopted in the second phase by executing the DRL algorithm, from which, E S-DRL reduces the energy consumption of individual sensor nodes effectually. The transmission delay is mitigated in the third (routing) phase using Ant Colony Optimization (ACO) and the Firefly Algorithm (FFA). Our work is modeled in Network Simulator 3.26 (NS3). The results are valuable in provisions of upcoming metrics including network lifetime, energy consumption, throughput and delay. From this evaluation, it is proved that our E S-DRL reduces energy consumption, reduces delays by up to 40% and enhances throughput and network lifetime up to 35% compared to the existing cTDMA, DRA, LDC and iABC methods.
机译:在最近的时代,无线传感器网络(WSN)由于其对包括军事,环境监测等在内的众多应用的贡献而受到了工业界和研究人员的广泛关注。但是,减少网络延迟和延长网络寿命始终是WSN领域的大问题。为了解决这些缺点,我们提出了一种在WSN中使用深度强化学习(DRL)(ES-DRL)算法的节能调度。 E S-DRL有助于延长网络寿命并减少网络延迟的三个阶段,即群集阶段,占空比循环阶段和路由阶段。 E S-DRL从群集阶段开始,在此阶段我们减少了数据聚合过程中产生的能耗。它是通过基于区域的群集(ZbC)方案实现的。在ZbC方案中,使用了混合粒子群优化(PSO)和亲和传播(AP)算法。通过执行DRL算法在第二阶段采用占空比循环,由此E S-DRL有效地降低了各个传感器节点的能耗。在第三(路由)阶段使用蚁群优化(ACO)和萤火虫算法(FFA)减轻了传输延迟。我们的工作是在Network Simulator 3.26(NS3)中建模的。该结果对于提供即将到来的指标(包括网络寿命,能耗,吞吐量和延迟)非常有价值。通过该评估,证明了与现有的cTDMA,DRA,LDC和iABC方法相比,我们的E S-DRL降低了能耗,最多将延迟减少了40%,并将吞吐量和网络寿命提高了35%。

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