您所在的位置: 首页 >> 期刊 >> 控制工程期刊

控制工程期刊

《控制工程期刊》是一本关注控制工程领域最新进展的开源国际学术期刊。本刊采用开放获取模式,报道控制工程学科领域的最新科研成果,旨在反映学术前沿进展及水平,促进学术交流,为国内外该领域的学者、科研人员提供一个良好的交流平台,以推进控制工程理论、应用和技术的发展。本刊可接收中、英文稿件。但中文稿件要有详细的英文标题、作者、单位、摘要和关键词。初次投稿请按照稿件模板排版后在线投稿。录用稿件首先刊发在期刊网站上,然后由Ivy Publisher出版公司高质量…… 【更多】 《控制工程期刊》是一本关注控制工程领域最新进展的开源国际学术期刊。本刊采用开放获取模式,报道控制工程学科领域的最新科研成果,旨在反映学术前沿进展及水平,促进学术交流,为国内外该领域的学者、科研人员提供一个良好的交流平台,以推进控制工程理论、应用和技术的发展。

本刊可接收中、英文稿件。但中文稿件要有详细的英文标题、作者、单位、摘要和关键词。初次投稿请按照稿件模板排版后在线投稿。录用稿件首先刊发在期刊网站上,然后由Ivy Publisher出版公司高质量出版,面向全球公开发行。因此,要求来稿均不涉密,文责自负。

ISSN Print:2167-0196

ISSN Online:2167-020X

Email:sjce@ivypub.org

Website: http://www.ivypub.org/sjce

  0
  0

Paper Infomation

Research on Energy Consumption Optimization and Stability of IoT Devices in Complex Environments

Full Text(PDF, 64KB)

Author: Yinghao Tang

Abstract: The Internet of Things (IoT) has become an integral part of various industries, from smart cities to healthcare, driving the need for energy-efficient and stable devices, especially in complex and unpredictable environments. This research investigates the optimization of energy consumption and the enhancement of stability in IoT devices operating in such environments. The study addresses key challenges, including resource constraints, fluctuating environmental conditions, and the increasing complexity of IoT networks. It explores various energy optimization techniques, such as low-power communication protocols, edge and cloud computing, and machine learning models, that help reduce energy usage while maintaining performance. Furthermore, it examines stability enhancement strategies, including fault-tolerant mechanisms, resilient network architectures, and real-time monitoring and adaptive control, that ensure the continuous and reliable operation of IoT devices despite external disruptions. The findings of this research contribute to the development of next-generation IoT systems that are both energy-efficient and resilient, thereby promoting sustainable deployment in real-world applications.

Keywords: IoT Devices, Energy Consumption, Stability Enhancement, Complex Environments, Optimization Techniques, Machine Learning, Edge Computing

References:

[1] Yu S, Yanyi W, Gaoxiang J, et al. Deep learning-based power usage effectiveness optimization for IoT-enabled data center[J]. Peer-to-Peer Networking and Applications,2024,17(3):1702-1719.

[2] Yinghua T. Energy Consumption Optimization of an IoT Monitoring Center Based on a Max-Min Ant Colony Algorithm[J]. Wireless Communications and Mobile Computing,2023,2023

[3] Wang C W, Dwijendra A K N, Sayed T B, et al. Internet of Things Energy Consumption Optimization in Buildings: A Step toward Sustainability[J]. Sustainability,2023,15(8):

[4] Poh K L, Wei C C, Ling D T, et al. Optimizing Energy Consumption on Smart Home Task Scheduling using Particle Swarm Optimization[J]. Procedia Computer Science,2023,220195-201.

[5] Imran, Naeem I, Hyeun D K. IoT Task Management Mechanism Based on Predictive Optimization for Efficient Energy Consumption in Smart Residential Buildings[J]. Energy & Buildings,2022,257

[6] Ullah I, Fayaz M, Aman M, et al. An optimization scheme for IoT based smart greenhouse climate control with efficient energy consumption[J]. Computing,2021,104(2):1-25.

[7] Aladdin M, Muhannad A. Toward IoT fog computing-enabled system energy consumption modeling and optimization by adaptive TCP/IP protocol.[J]. Peer J. Computer science,2021,7e653-e653.

[8] Zhongyang W, Du X. Online optimization of intelligent reflecting surface-aided energy-efficient IoT-edge computing[J]. Future Generation Computer Systems,2023,141611-625.

Privacy Policy | Copyright © 2011-2025 Ivy Publisher. All Rights Reserved.

Contact: customer@ivypub.org