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An Adaptive Data Collection Algorithm Based on a Bayesian Compressed Sensing Framework

机译:基于贝叶斯压缩感知框架的自适应数据收集算法

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摘要

For Wireless Sensor Networks, energy efficiency is always a key consideration in system design. Compressed sensing is a new theory which has promising prospects in WSNs. However, how to construct a sparse projection matrix is a problem. In this paper, based on a Bayesian compressed sensing framework, a new adaptive algorithm which can integrate routing and data collection is proposed. By introducing new target node selection metrics, embedding the routing structure and maximizing the differential entropy for each collection round, an adaptive projection vector is constructed. Simulations show that compared to reference algorithms, the proposed algorithm can decrease computation complexity and improve energy efficiency.
机译:对于无线传感器网络,能源效率始终是系统设计中的关键考虑因素。压缩感知是一种在无线传感器网络中具有广阔前景的新理论。然而,如何构造稀疏投影矩阵是一个问题。本文在贝叶斯压缩感知框架的基础上,提出了一种可以集成路由和数据收集的自适应算法。通过引入新的目标节点选择指标,嵌入路由结构并最大化每个收集回合的差分熵,可以构建自适应投影矢量。仿真表明,与参考算法相比,该算法可以降低计算复杂度,提高能源效率。

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