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A Link Quality Estimation Method Based on Improved Weighted Extreme Learning Machine

机译:一种基于改进加权极限习得机的链路质量估计方法

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摘要

The link quality of wireless sensor networks is the basis for selecting communication links in routing protocols. Effective link quality estimation is helpful to select high-quality links for communication and to improve network stability. The correlation of link quality parameter and packet reception rate (PRR) is calculated by the Pearson correlation coefficient. According to Pearson coefficient values, the averages of the link quality indication, received signal strength indication, and signal-to-noise are selected as the parameters of the link quality. The link quality grade is taken as a metric of the link quality estimation. Particle Swarm Optimization (PSO) algorithm is used to optimize the parameters of the weighted extreme learning machine (WELM), including the number of hidden nodes, weights, and the normalization factor. A link quality estimator (LQE) based on the improved weighted extreme learning machine (LQE-IWELM) is constructed. In different scenarios, experiment results show that the improved weighted extreme learning machine (IWELM) is more effective than extreme learning machine (ELM) and WELM. Compared with the other three link quality estimation models, LQE-IWELM has better precision and G_mean.
机译:无线传感器网络的链路质量是选择路由协议中的通信链路的基础。有效的链路质量估计有助于选择用于通信的高质量链路和提高网络稳定性。通过Pearson相关系数计算链路质量参数和分组接收速率(PRR)的相关性。根据Pearson系数值,选择链路质量指示,接收信号强度指示和信号对噪声的平均值作为链路质量的参数。链路质量等级被视为链路质量估计的指标。粒子群优化(PSO)算法用于优化加权极限学习机(WELM)的参数,包括隐藏节点,权重和归一化因子的数量。构建基于改进的加权极限习得机(LQE-IWELM)的链路质量估计器(LQE)。在不同的场景中,实验结果表明,改进的加权极限学习机(IWELM)比极端学习机(ELM)和WELM更有效。与其他三个链路质量估算模型相比,LQE-IWELM具有更好的精度和G_MEAN。

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