近年来无线传感器网络性能分析

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摘要

近年来,无线传感器网络(WSNs)已成为一个热门的研究领域。毫无疑问,无线传输技术被用于所有的节点间通信。此外,由于无线传感器网络是自组织的,独立于固定的基础设施,并且它们的拓扑结构定期变化,广播是无线传感器网络中默认的通信方法。但在长期网络中,少数传感器节点已经动态地完成了这一任务。它们是共享公共传感器、集中式节点和后端服务器的自治系统。实时独立传感器数据首先由通用传感器传输,后端服务器接收到传感器数据后进行附加的流程和性能分析。无线传感器网络(wsn)是具有无线通信接口、数据感知、处理和存储功能的混合节点,其数量正在迅速扩大。它在日常生活中有许多不同的用途,包括跟踪车辆,监视森林中的火灾,寻找和跟踪军事用途的士兵,监视海洋和海洋,以及创建智能场所。
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A Performance Analysis of Wireless Sensor Networks in Recent Years
Wireless Sensor networks (WSNs) have become one of the most interesting areas of research in the past few years. Undoubtedly, wireless transmission techniques are used for all node-to-node communication. Additionally, because wireless sensor networks are self- organized, independent of fixed infrastructure, and their topologies vary on a regular basis, broadcasting is the default method of communication in WSNs. But a handful of sensor nodes in long-lasting networks have dynamically accomplished it. They are autonomous systems that share common sensors, centralized nodes, and a back-end server. The real-time independent sensor data is initially transmitted by the common sensors, and finally, the back- end server receives the sensed data to do additional process and performance analysis. Wireless sensor networks (WSNs) are hybrid nodes with wireless communication interfaces, data sensing, processing, and storage capabilities that are rapidly expanding in number. It is used for many different things in daily life, including tracking vehicles, keeping an eye out for fires in the forest, finding and tracking soldiers for military usage, keeping an eye on the oceans and seas, and creating intelligent places.
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