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Intelligent throughput stabilizer for UDP-based rate-control communication system

机译:聪明的udp的稳定器的吞吐量速率控制通信系统

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In view of the successful application of deep learning, mainly in the field of image recognition, deep learning applications are now being explored in the fields of communication and computer networks. In these fields, systems have been developed by use of proper theoretical calculations and procedures. However, due to the large amount of data to be processed, proper processing takes time and deviations from the theory sometimes occur due to the inclusion of uncertain disturbances. Therefore, deep learning or nonlinear approximation by neural networks may be useful in some cases. We have studied a user datagram protocol (UDP) based rate-control communication system called the simultaneous multipath communication system (SMPC), which measures throughput by a group of packets at the destination node and feeds it back to the source node continuously. By comparing the throughput with the recorded transmission rate, the source node detects congestion on the transmission route and adjusts the packet transmission interval. However, the throughput fluctuates as packets pass through the route, and if it is fed back directly, the transmission rate fluctuates greatly, causing the fluctuation of the throughput to become even larger. In addition, the average throughput becomes even lower. In this study, we tried to stabilize the transmission rate by incorporating prediction and learning performed by a neural network. The prediction is performed using the throughput measured by the destination node, and the result is learned so as to generate a stabilizer. A simple moving average method and a stabilizer using three types of neural networks, namely multilayer perceptrons, recurrent neural networks, and long short-term memory, were built into the transmission controller of the SMPC. The results showed that not only fluctuation reduced but also the average throughput improved. Together, the results demonstrated that deep learning can be used to predict and output stable values from data with complicated time fluctuations that are difficultly analyzed.
机译:针对深的成功应用学习,主要领域的形象识别、深度学习应用程序现在在领域的交流和探讨计算机网络。开发了使用适当的理论计算和程序。要处理大量的数据,适当的处理需要时间和偏离有时候是会发生的由于包含理论不确定的干扰。或由神经网络非线性近似在某些情况下是有用的。基于数据报协议(UDP)的速率控制通信系统称为同步多路通信系统(SMPC)吞吐量的一组包的措施它回源目的节点和提要节点不断。记录的传输速度,来源节点检测到交通拥堵传播路线和调整数据包传输时间间隔。然而,数据包的流量波动经过的路线,如果反馈直接传播率波动很大程度上,造成的波动成为更大的吞吐量。平均吞吐量变得更低。这项研究中,我们试图稳定将预测和传输速率学习由一个神经网络。使用吞吐量预测执行衡量目标节点和结果是后天习得的,生成稳定剂。简单移动平均法和稳定剂使用三种类型的神经网络,即多层感知器,复发性神经网络和短期记忆,建成的传输控制器SMPC。结果表明,不仅波动减少而且平均吞吐量提高了。在一起,结果表明,深学习可以用于预测和输出稳定值数据和复杂的时间波动的困难进行了分析。

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