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首页> 外文期刊>New review of information networking >NNRA-CAC: NARX Neural Network-based Rate Adjustment for Congestion Avoidance and Control in Wireless Sensor Networks
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NNRA-CAC: NARX Neural Network-based Rate Adjustment for Congestion Avoidance and Control in Wireless Sensor Networks

机译:NNRA-CAC:基于NARX神经网络的速率调整,用于无线传感器网络中的拥塞避免和控制

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摘要

A wireless sensor network (WSN) is an application area that is valuable in various fields, such as healthcare monitoring, environmental monitoring, and so on. Application areas require WSNs with high throughput and low degree of packet loss. Due to congestion in the network, the throughput of the network is affected, which imposes the need for congestion control in the network. This article proposes a method, titled NARX Neural network-based Rate Adjustment (NNRA) for avoiding and controlling congestion in the network. Initially, congestion in the network is avoided by dropping packets and the NNRA is used to control congestion in the network when congestion is present. Performance analysis is carried out in terms of throughput, delay, size of the queue, packet loss, and the level of the congestion using two setups. The results of the proposed method are compared with the existing methods to prove the effectiveness of the proposed method. The proposed method attained a maximum throughput at a rate of 0.9585 and minimum values for delay, queue size, packet loss, and the congestion level.
机译:无线传感器网络(WSN)是在各个领域(如医疗保健监视,环境监视等)中都很有价值的应用领域。应用领域需要具有高吞吐量和低丢包率的WSN。由于网络中的拥塞,网络的吞吐量受到影响,这需要在网络中进行拥塞控制。本文提出了一种名为NARX基于神经网络的速率调整(NNRA)的方法,用于避免和控制网络中的拥塞。最初,通过丢弃数据包来避免网络中的拥塞,并且当存在拥塞时,NNRA用于控制网络中的拥塞。使用两种设置根据吞吐量,延迟,队列大小,数据包丢失和拥塞程度进行性能分析。将该方法的结果与现有方法进行比较,以证明该方法的有效性。所提出的方法以0.9585的速率获得了最大吞吐量,并获得了延迟,队列大小,数据包丢失和拥塞级别的最小值。

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