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Avoiding congestion using RBF-GM controller for wireless sensor network

机译:避免使用RBF-GM控制器进行无线传感器网络的拥塞

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摘要

In wireless sensor networks (WSNs), sink nodes are the bottleneck of network. As sensor network own its characteristics, the traditional congestion control strategy can't be used directly any longer. Most of the existing congestion control strategies and algorithms are not fully considered RTT. At the same time as the actual sensor network operating in the nonlinear, time delays and time-varying parameters such as interference factors, if the controller design parameters are fixed, not learning ability, then the actual running of the convergence is poor, slow convergence, not to control the length of queue. For the above-mentioned problems, the controller which is based on gray predicted neural network is proposed to cope with the large delays and time-varying network parameters. The gray GM (1, 1) model is utilized to compensate the time-delay, while RBF neural network is employed to design controller to reduce the number and interaction of tuning parameter. The simulation experimental results show that the integrated performance of the proposed algorithm is obviously superior to that of the existing schemes when the network configuration parameter is largely delayed.
机译:在无线传感器网络(WSN)中,宿节点是网络的瓶颈。随着传感器网络拥有其特征,传统拥塞控制策略不能直接使用。大多数现有拥塞控制策略和算法并不完全被认为是RTT。同时作为实际传感器网络在非线性,时间延迟和时变的参数如干扰因素,如果控制器设计参数是固定的,而不是学习能力,那么融合的实际运行差,收敛慢,不要控制队列的长度。对于上述问题,提出了基于灰度预测神经网络的控制器来应对大的延迟和时变网络参数。灰色GM(1,1)模型用于补偿时间延迟,而RBF神经网络用于设计控制器以减少调谐参数的数量和交互。仿真实验结果表明,当网络配置参数大大延迟时,所提出的算法的综合性能明显优于现有方案。

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