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Applying the Linear Neural Network to TCP Congestion Control

机译:将线性神经网络应用于TCP拥塞控制

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The previous TCP protocol cannot predict congestion. Only when the sender receives more than three acknowledgements or the retransmission timer is out can it realize that congestion has occurred. We train the linear neural network by using round-trip time and current TCP throughput as its inputs. As a result, we get the decision boundary, which could predict whether the current network is in congestion or not. Simulation results show that, when applied to TCP congestion control, it can effectively predict the occurrence of congestion, so congestion window could make adjustments as soon as possible to reduce the probability of congestion collapse.
机译:以前的TCP协议无法预测拥塞。只有当发件人收到超过三个确认或重传计时器时,才能实现已发生拥塞。我们通过使用往返时间和当前TCP吞吐量作为其输入来培训线性神经网络。结果,我们得到了决策边界,这可以预测当前网络是否处于拥塞。仿真结果表明,当应用于TCP拥塞控制时,它可以有效地预测拥塞的发生,因此拥塞窗口可以尽快进行调整,以降低拥塞崩溃的概率。

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