Deep reinforcement learning and enhanced optimization for real-time energy management in wireless sensor networks

IF 3.8 3区 计算机科学 Q1 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE
Vidhya Sachithanandam , Jessintha D. , Balaji V.S. , Mathankumar Manoharan
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引用次数: 0

Abstract

Constraints are a major issue in radio-based communication in Wireless Sensor Networks, where each sensor node has a limited amount of power. Conventional clustering and optimization methods have been inappropriate for dynamic conditions which lead to timely energy drainage and reduce the network lifetime. In this research, the novel Deep Reinforcement Learning-Enhanced Hybrid African Vulture and Aquila Optimizer has been proposed that optimizes the dynamic clustering and energy-based parameters in real time. The proposed model is designed for optimizing the Wireless Sensor Networks, by including Deep Reinforcement Learning to adjust the dynamic formation of the base of the cluster on real-time data which leads to efficient energy utilization among all the sensor nodes. It combines the best properties of the Aquila and African Vulture Optimizer to optimize the network lifetime and energy consumption. The network lifetime, which is one of the most crucial characteristics, is optimized by using the global search algorithm of African Vulture Optimiser. In contrast, it is optimized by the localized search of Aquila optimizer to reduce energy consumption. The presented novel African Vulture and Aquila model outperforms the existing methods used convention-based optimization methods. It shows a 20 % improvement in energy efficiency and faster convergence with better robustness while keeping the network scalability. The proposed approach is perfectly suited for the scalable WSNs which are mainly used in the environment such as smart cities and IoT systems where a timely adaptation process is inevitable.
无线传感器网络中实时能量管理的深度强化学习和增强优化
约束是无线传感器网络中基于无线电通信的主要问题,其中每个传感器节点的功率有限。传统的聚类和优化方法不适应动态环境,导致能量及时流失,降低网络寿命。在这项研究中,提出了一种新的深度强化学习增强混合非洲秃鹫和Aquila优化器,该优化器实时优化动态聚类和基于能量的参数。该模型旨在优化无线传感器网络,通过深度强化学习来根据实时数据调整簇基的动态形成,从而使所有传感器节点之间的能量有效利用。它结合了Aquila和非洲秃鹫优化器的最佳特性,以优化网络寿命和能耗。利用非洲秃鹫优化器(African Vulture optimizer)的全局搜索算法对网络最关键的特性之一——网络寿命进行优化。通过Aquila优化器的局部搜索进行优化,降低了能耗。提出的新型非洲秃鹫和Aquila模型优于现有的基于约定的优化方法。结果表明,在保持网络可扩展性的同时,能源效率提高了20% %,收敛速度更快,鲁棒性更好。所提出的方法非常适合于主要用于智能城市和物联网系统等环境中的可扩展wsn,这些环境不可避免地需要及时的适应过程。
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来源期刊
Sustainable Computing-Informatics & Systems
Sustainable Computing-Informatics & Systems COMPUTER SCIENCE, HARDWARE & ARCHITECTUREC-COMPUTER SCIENCE, INFORMATION SYSTEMS
CiteScore
10.70
自引率
4.40%
发文量
142
期刊介绍: Sustainable computing is a rapidly expanding research area spanning the fields of computer science and engineering, electrical engineering as well as other engineering disciplines. The aim of Sustainable Computing: Informatics and Systems (SUSCOM) is to publish the myriad research findings related to energy-aware and thermal-aware management of computing resource. Equally important is a spectrum of related research issues such as applications of computing that can have ecological and societal impacts. SUSCOM publishes original and timely research papers and survey articles in current areas of power, energy, temperature, and environment related research areas of current importance to readers. SUSCOM has an editorial board comprising prominent researchers from around the world and selects competitively evaluated peer-reviewed papers.
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