An energy efficient clustering algorithm based on density and fitness for mobile crowd-sensing network

IF 2.2 4区 工程技术 Q3 ENGINEERING, MULTIDISCIPLINARY Journal of Engineering Research Pub Date : 2025-09-01 Epub Date: 2024-07-17 DOI:10.1016/j.jer.2024.07.011
Hao Li , Hongwei Wang , Kaiyu Wang , Tonghui Qu , Xunhuan Ren , Jun Ma
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Abstract

Mobile crowd-sensing (MCS) is a cutting-edge paradigm that gathers sensory data and generates valuable insights for a multitude of users by utilizing built-in sensors and social applications in mobile devices. This enables a broad spectrum of Internet of Things (IoT) services. We introduce a novel MCS algorithm, Mobile Crowd-sensing Low Energy Clustering (MCLEC), which employs advanced clustering techniques to address issues of data oversampling and energy inefficiency prevalent in MCS networks. MCLEC innovatively adjusts clustering radii based on local node density and the proximity of nodes to the cloud server, thus optimizing data transmission paths and reducing energy consumption. A pivotal enhancement in MCLEC is its cluster head election strategy, which prioritizes leaders based on their energy levels and mobility, thereby enhancing network stability and minimizing the frequency of head re-elections. Our comparisons with established algorithms such as LEACH, LEACH-C, LEACH-M, DEEC, and SEP show that MCLEC significantly improves energy efficiency, reduces server load, and prolongs the lifespan of network nodes, establishing it as an effective solution for IoT applications dependent on MCS. Additionally, MCLEC was compared with other novel clustering algorithms including E-FLZSEPFCH, DFLC, ECPF, ACAWT, UCR, CHEF, and Gupta's algorithm. The results indicate that MCLEC also surpasses most of these algorithms in terms of energy consumption and network lifetime.
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基于密度和适合度的移动人群感知网络节能聚类算法
移动人群感知(MCS)是一个前沿的范例,它通过利用移动设备中的内置传感器和社交应用程序来收集感官数据并为众多用户产生有价值的见解。这使得广泛的物联网(IoT)服务成为可能。我们介绍了一种新的MCS算法,移动人群感知低能量聚类(MCLEC),它采用先进的聚类技术来解决MCS网络中普遍存在的数据过采样和能量低效率问题。MCLEC创新地根据本地节点密度和节点与云服务器的接近程度调整聚类半径,从而优化数据传输路径,降低能耗。MCLEC的一个关键改进是它的集群首领选举策略,该策略根据领导人的能量水平和机动性来优先考虑领导人,从而提高了网络稳定性并最大限度地减少了首领重新选举的频率。我们与LEACH、LEACH- c、LEACH- m、DEEC和SEP等现有算法的比较表明,MCLEC显著提高了能源效率,降低了服务器负载,延长了网络节点的使用寿命,使其成为依赖MCS的物联网应用的有效解决方案。此外,MCLEC还比较了E-FLZSEPFCH、DFLC、ECPF、ACAWT、UCR、CHEF和Gupta算法等新型聚类算法。结果表明,MCLEC在能量消耗和网络寿命方面也超过了大多数这些算法。
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来源期刊
Journal of Engineering Research
Journal of Engineering Research ENGINEERING, MULTIDISCIPLINARY-
CiteScore
1.60
自引率
10.00%
发文量
181
审稿时长
20 weeks
期刊介绍: Journal of Engineering Research (JER) is a international, peer reviewed journal which publishes full length original research papers, reviews, case studies related to all areas of Engineering such as: Civil, Mechanical, Industrial, Electrical, Computer, Chemical, Petroleum, Aerospace, Architectural, Biomedical, Coastal, Environmental, Marine & Ocean, Metallurgical & Materials, software, Surveying, Systems and Manufacturing Engineering. In particular, JER focuses on innovative approaches and methods that contribute to solving the environmental and manufacturing problems, which exist primarily in the Arabian Gulf region and the Middle East countries. Kuwait University used to publish the Journal "Kuwait Journal of Science and Engineering" (ISSN: 1024-8684), which included Science and Engineering articles since 1974. In 2011 the decision was taken to split KJSE into two independent Journals - "Journal of Engineering Research "(JER) and "Kuwait Journal of Science" (KJS).
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