首页> 外文会议>Sensor Technologies and Applications, 2009. SENSORCOMM '09 >Distributed Source Coding for Sensor Data Model and Estimation of Cluster Head Errors Using Bayesian and K-Near Neighborhood Classifiers in Deployment of Dense Wireless Sensor Networks
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Distributed Source Coding for Sensor Data Model and Estimation of Cluster Head Errors Using Bayesian and K-Near Neighborhood Classifiers in Deployment of Dense Wireless Sensor Networks

机译:传感器数据模型的分布式源编码和在密集无线传感器网络部署中使用贝叶斯和K-Near邻域分类器估算簇头误差

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The lifetime calculation of large dense sensor networks with fixed energy resources and the remaining residual energy have shown that for a constant energy resource in a sensor network the fault rate at the cluster head is network size invariant when using the network layer with no MAC losses.Even after increasing the battery capacities in the nodes the total lifetime does not increase after a max limit of 8 times. As this is a serious limitation lots of research has been done at the MAC layer which allows to adapt to the specific connectivity, traffic and channel polling needs for sensor networks. There have been lots of MAC protocols which allow to control the channel polling of new radios which are available to sensor nodes to communicate. This further reduces the communication overhead by idling and sleep scheduling thus extending the lifetime of the monitoring application. We address the two issues which effects the distributed characteristics and performance of connected MAC nodes. (1) To determine the theoretical minimum rate based on joint coding for a correlated data source at the singlehop, (2a) to estimate cluster head errors using Bayesian rule for routing using persistence clustering when node densities are the same and stored using prior probability at the network layer, (2b) to estimate the upper bound of routing errors when using passive clustering were the node densities at the multi-hop MACS are unknown and not stored at the multi-hop nodes a priori. In this paper we evaluate many MAC based sensor network protocols and study the effects on sensor network lifetime. A renewable energy MAC routing protocol is designed when the probabilities of active nodes are not known a priori. From theoretical derivations we show that for a Bayesian rule with known class densities of omega1, omega2 with expected error P* is bounded by max error rate of P=2P* for single-hop. We study the effects of energy losses using cross-layer simulation of -nlarge sensor network MACS setup, the error rate which effect finding sufficient node densities to have reliable multi-hop communications due to unknown node densities. The simulation results show that even though the lifetime is comparable the expected Bayesian posterior probability error bound is close or higher than Pges2P*.
机译:具有固定能量资源和剩余剩余能量的大型密集传感器网络的寿命计算表明,对于传感器网络中的恒定能量资源,当使用无MAC损失的网络层时,簇头的故障率是网络大小不变的。即使增加了节点中的电池容量,在最长限制达到8倍后,总寿命也不会增加。由于这是一个严重的局限性,因此在MAC层进行了大量研究,可以适应传感器网络的特定连接性,流量和信道轮询需求。有许多MAC协议允许控制传感器节点可用来通信的新无线电的信道轮询。这通过空闲和睡眠调度进一步减少了通信开销,从而延长了监视应用程序的寿命。我们解决影响连接MAC节点的分布式特性和性能的两个问题。 (1)要确定基于单跳的相关数据源的联合编码的理论最小速率,(2a)使用贝叶斯规则估计簇头错误,以便在节点密度相同并使用先验概率存储时使用持久性聚类进行路由网络层(2b)在使用无源聚类时估计路由错误的上限,因为多跳MACS的节点密度是未知的,并且事先没有存储在多跳节点上。在本文中,我们评估了许多基于MAC的传感器网络协议,并研究了对传感器网络寿命的影响。当活动节点的先验概率未知时,设计可再生能源MAC路由协议。从理论推导中我们表明,对于已知类密度为omega 1 的贝叶斯规则,预期误差为P *的omega 2 受最大误差率P = 2P *限制单跳。我们使用-nlarge传感器网络MACS设置的跨层仿真研究了能量损失的影响,由于未知的节点密度,错误率会影响找到足够的节点密度以进行可靠的多跳通信。仿真结果表明,即使寿命可比,预期的贝叶斯后验概率误差界也接近或高于Pges2P *。

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