水下无线传感器网络中基于预测的事件确定

Wei Fang, Zhangbing Zhou, Lei Shu, Xiaolei Wang, Dengbiao Tu, Yongping Xiong
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引用次数: 0

摘要

即使探测到事件的发生,水下环境也可能逐渐发生变化。感觉数据可能遵循一定的趋势,并且在一定的时间内是可预测的。考虑到这些因素,可以采用预测机制进行估计,只有当变化超过预先设定的阈值时,水下传感器节点才会同步数据。利用预测数据,汇聚节点确定潜在事件的覆盖范围和来源,并据此确定这些事件的演变。评价结果表明了该方法的适用性和节能性,特别是当网络环境的变化遵循一定的简单模式时。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction-Based Event Determination in Underwater Wireless Sensor Networks
Underwater environments may vary gradually even when the occurrence of events is detected. Sensory data may follow a certain trend and are predictable during certain time durations. Taken these into concerns, a prediction mechanism can be adopted for estimate, and data are synchronized by underwater sensor nodes only when variation is beyond pre-specified thresholds. Leveraging predicted data, the coverage and sources of potential events are identified by the sink node, and the evolution of these events is determined accordingly. Evaluation results show the applicability and energy-efficiency of this approach, especially when the variation of network environments follows certain and simple patterns.
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