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Hop-by-Hop Congestion Avoidance in wireless sensor networks based on genetic support vector machine

机译:基于遗传支持向量机的无线传感器网络逐跳拥塞避免

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Congestion in wireless sensor networks causes packet loss, throughput reduction and low energy efficiency. To address this challenge, a transmission rate control method is presented in this article. The strategy calculates buffer occupancy ratio and estimates the congestion degree of the downstream node. Then, it sends this information to the current node. The current node adjusts the transmission rate to tackle the problem of congestion, improving the network throughput by using multi-classification obtained via Support Vector Machines (SVMs). SVM parameters are tuned, using genetic algorithm. Simulations showed that in most cases, the results of the SVM network match the actual data in training and testing phases. Also, simulation results demonstrated that the proposed method not only decreases energy consumption, packet loss and end to end delay in networks, but it also significantly improves throughput and network lifetime under different traffic conditions, especially in heavy traffic areas.
机译:无线传感器网络中的拥塞会导致数据包丢失,吞吐量降低和能源效率低下。为了解决这一挑战,本文提出了一种传输速率控制方法。该策略计算缓冲区占用率,并估计下游节点的拥塞程度。然后,它将此信息发送到当前节点。当前节点通过使用支持向量机(SVM)获得的多分类来调整传输速率以解决拥塞问题,从而提高网络吞吐量。使用遗传算法调整SVM参数。仿真表明,在大多数情况下,SVM网络的结果与训练和测试阶段的实际数据相匹配。仿真结果还表明,该方法不仅降低了网络的能耗,丢包率和端到端时延,而且还显着提高了在不同流量条件下(特别是在高流量区域)的吞吐量和网络寿命。

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