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首页> 外文期刊>International journal of cognitive informatics and natural intelligence >Adaptive Parameter Estimation of MR System-Based WSN Using Multihop Diffusion in Distributed Approach
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Adaptive Parameter Estimation of MR System-Based WSN Using Multihop Diffusion in Distributed Approach

机译:基于MR系统的WSN在分布式方法中使用多彩光扩散的自适应参数估计

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Distributed estimation of parameters in wireless sensor networks is taken into consideration to reduce the communication overhead of the network which makes the sensor system energy efficient. Most of the distributed approaches in literature, the sensor system is modeled with finite impulse response as it is inherently stable. Whereas in real time applications of WSN like target tracking, fast rerouting requires, infinite impulse response system (IIR) is used to model and that has been chosen in this work. It is assumed that every sensor node is equipped with IIR adaptive system. The diffusion least mean square (DLMS) algorithm is used to estimate the parameters of the IIR system where each node in the network cooperates themselves. In a sparse WSN, the performance of a DLMS algorithm reduces as the degree of the node decreases. In order to increase the estimation accuracy with a smaller number of iterations, the sensor node needs to share their information with more neighbors. This is feasible by communicating each node with multi-hop nodes instead of one-hop only. Therefore the parameters of an IIR system is estimated in distributed sparse sensor network using multihop diffusion LMS algorithm. The simulation results exhibit superior performance of the multihop diffusion LMS over non-cooperative and conventional diffusion algorithms.
机译:考虑了无线传感器网络中参数的分布估计,以减少网络的通信开销,这使得传感器系统能量效率。大多数文献中的分布式方法,传感器系统以有限的脉冲响应为模型,因为它固有稳定。然而,在WSN等目标跟踪的实时应用中,快速重新路由要求,无限脉冲响应系统(IIR)用于模型,并在这项工作中选择。假设每个传感器节点都配备有IIR自适应系统。扩散最小均方(DLMS)算法用于估计网络中的每个节点的IIR系统的参数。在稀疏WSN中,随着节点的程度降低,DLMS算法的性能降低。为了提高具有较少数量的迭代的估计精度,传感器节点需要与更多邻居共享他们的信息。这是通过使用多跳节点传送每个节点而不是仅一次跳来可行。因此,使用多彩光扩散LMS算法在分布式稀疏传感器网络中估计IIR系统的参数。仿真结果表现出多跳扩散LMS的卓越性能和传统扩散算法。

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