传感器网络节能滤波机制设计

Ru Huang, Guang-Hui Xu
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引用次数: 2

摘要

在传感器网络的采集场景中,通常会存在大量高度相关数据的传输,导致宝贵的能源资源的消耗。针对上述能源浪费问题,本文提出了一种有效的过滤机制,以提高数据收集的能源效率。目前许多研究采用聚类方法和聚合技术来降低数据传输过程中的能量成本,而我们提出的滤波框架主要强调在采集源处抑制冗余负载的产生,采用自适应滤波方案来大幅降低能量成本,该滤波方案由挖掘时域关联的预测模块构建。修改模型的自学习模块和执行过滤操作的驱动模块。我们可以证明上述滤波器组件结合错误驱动规则和阈值分配规则的运行,可以根据QoS要求有效地减少网络中的数据传输量。最后,仿真结果表明,所提出的滤波机制在节能效果方面优于一些经典的数据收集方法。
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The design of energy-saving filtering mechanism for sensor networks
The transmission of massive highly related data could generally exist in gathering scenario of sensor networks and lead to the depletion of valuable energy resource. According to the above energy waste problem, an effective filtering mechanism is proposed in the paper to enhance the energy-efficiency of data-gathering. Many current researches adopt clustering method and aggregation technology to lower energy cost during the process in data transmission, while our proposed filtering framework mainly puts emphasis on inhibiting the production of redundant loads at the gathering source to greatly reduce energy cost using self-adaptive filtering scheme, which is constructed by prediction module for mining the time domain association, self-learning module for modifying model and driving module for executing filtering operation. We can prove the above filter components combined with the running of error-driving rule and threshold-distributing rule can effectively decrease the quantity of data transmission in networks based on QoS requirement. Finally, the simulation results show that the proposed filtering mechanism can do better than some classical data gathering approaches on the aspect of energy-saving effect.
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