Recurrent Neural Network-Based Optimal Sensing Duty Cycle Control Method for Wireless Sensor Networks

Citations

WEB OF SCIENCE

6
Citations

SCOPUS

9

초록

With the development of Internet of Things (IoT) technologies, environmental monitoring systems using wireless sensor networks (WSNs) have received considerable attention. Reliable object detection and tracking is an important research issue in various WSN applications, such as environment and disaster monitoring, disaster propagation tracking, and intruder monitoring and tracking. Generally, because batteries are used as energy sources for sensors in WSNs, a highly energy-efficient operation is needed to prolong the life of the sensors and networks. To save energy, sensors usually manage multi-mode sensing operations, in which they periodically switch between active and inactive periods. A tradeoff exists between object detection accuracy and energy efficiency when we select a sensing schedule. Depending on the object speed, direction, and sensor deployment topology, different sensing schedules should be dynamically applied to individual sensors. In this paper, we propose a novel recurrent neural network (RNN)-based dynamic duty cycle control method for sensor nodes. For RNN training, a target optimal duty cycle for a given network condition is derived from the proposed digital twin-space analytic solution. Simulation results show that the proposed model provides accurate object detection performance and achieves high energy efficiency.

키워드

SensorsWireless sensor networksObject trackingObject detectionEnergy efficiencyTarget trackingSensor phenomena and characterizationDuty cycle controlmachine learningobject trackingrecurrent neural networkwireless sensor networksTARGET TRACKINGINFORMATIONOBJECTS
제목
Recurrent Neural Network-Based Optimal Sensing Duty Cycle Control Method for Wireless Sensor Networks
저자
Choi, Seung-HeeYoo, Sang-Jo
DOI
10.1109/ACCESS.2021.3113298
발행일
2021
유형
Article
저널명
IEEE Access
9
페이지
133215 ~ 133228