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Probability model for data redundancy detection in sensor networks

机译:传感器网络中数据冗余检测的概率模型

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Sensor networks are made of autonomous devices that are able to collect, store, process and share data with other devices. Large sensor networks are often redundant in the sense that the measurements of some nodes can be substituted by other nodes with a certain degree of confidence. This spatial correlation results in wastage of link bandwidth and energy. In this paper, a model for two associated Poisson processes, through which sensors are distributed in a plane, is derived. A probability condition is established for data redundancy among closely located sensor nodes. The model generates a spatial bivariate Poisson process whose parameters depend on the parameters of the two individual Poisson processes and on the distance between the associated points. The proposed model helps in building efficient algorithms for data dissemination in the sensor network. A numerical example is provided investigating the advantage of this model.
机译:传感器网络由能够收集,存储,处理和与其他设备共享数据的自主设备组成。大型传感器网络通常是冗余的,因为某些节点的测量值可以用一定的置信度替换为其他节点。这种空间相关性导致链路带宽和能量的浪费。在本文中,得出了两个相关的泊松过程的模型,通过该模型可以将传感器分布在一个平面中。建立了概率条件,以在位置紧密的传感器节点之间实现数据冗余。该模型生成一个空间双变量Poisson过程,其参数取决于两个单独的Poisson过程的参数以及相关点之间的距离。提出的模型有助于建立用于传感器网络中数据分发的高效算法。提供了一个数值示例来研究此模型的优势。

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