通过无线传感器网络中的混合最优概率进行数据聚合

S. Balaji, S. Jeevanandham, Mani Deepak Choudhry, M. Sundarrajan, Rajesh Kumar Dhanaraj
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引用次数: 0

摘要

简介:在无线传感器网络(WSN)领域,有效的数据传播对交通警报等应用至关重要,因此需要创新的解决方案来应对广播风暴等挑战。目标本文提出了一个开创性的框架,利用概率数据聚合来优化通信效率并减少冗余。方法:所提出的适应性系统可从知识库中提取有价值的见解,从而根据特定应用标准对路由进行动态调整。通过模拟解决带宽限制和本地广播问题,我们建立了一个基于 WSN 的稳健交通信息系统。结果:通过采用基元-二元分解,所提出的方法确定了最佳数据包聚合概率和持续时间,从而在满足延迟要求的同时降低了能耗。结论:本文提出的方法在各种流量和拓扑场景中都发挥了功效,证实了概率数据聚合能有效缓解本地广播问题,最终降低带宽需求。
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Data Aggregation through Hybrid Optimal Probability in Wireless Sensor Networks
  INTRODUCTION: In the realm of Wireless Sensor Networks (WSN), effective data dissemination is vital for applications like traffic alerts, necessitating innovative solutions to tackle challenges such as broadcast storms. OBJECTIVES: This paper proposes a pioneering framework that leverages probabilistic data aggregation to optimize communication efficiency and minimize redundancy. METHODS: The proposed adaptable system extracts valuable insights from the knowledge base, enabling dynamic route adjustments based on application-specific criteria. Through simulations addressing bandwidth limitations and local broadcast issues, we establish a robust WSN-based traffic information system. RESULTS: By employing primal-dual decomposition, the proposed approach identifies optimal packet aggregation probabilities and durations, resulting in reduced energy consumption while meeting latency requirements. CONCLUSION: The efficacy of proposed method is demonstrated across various traffic and topology scenarios, affirming that probabilistic data aggregation effectively mitigates the local broadcast problem, ultimately leading to decreased bandwidth demands.
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