开发一种新的移动网络性能研究仿真与可视化平台

C. Amaro, Thaina Saraiva, D. Duarte, Pedro Vieira, Tiago Rosa Maria Paula Queluz, A. Rodrigues
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引用次数: 1

摘要

如今,移动网络代表了最具创新性和挑战性的技术和研究型工作领域之一。用户订阅量的增长以及人工智能(AI)和物联网(IoT)带来的进步,极大地提高了通信网络的复杂性和潜力。各种设备和交换移动数据流量的增加导致对网络提供商的要求越来越高。随着网络的扩展和数据的增加,一些问题开始出现。交通阻塞、数据包丢失和高延迟就是一些例子。因此,引入强大的工具和方法来应对这些挑战非常重要。从这个角度来看,一些研究强调了人工智能系统,主要是机器学习(ML)算法,通过提高整体性能和效率,是无线网络环境中最有前途的方法。本工作提出将几种已经开发的网络优化算法集成到一个通用的统一的可视化平台中。这些算法是用c#和Python开发的,其中一些使用了有监督和无监督的ML技术。提出的解决方案包括处理并发仿真的多线程进程、平台间通信的代理和动态可视化界面。
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Developing a New Simulation and Visualization Platform for Researching Aspects of Mobile Network Performance
Nowadays, mobile networks represent one of the most innovative and challenging technological and research-oriented fields of work. The growth on user subscriptions and the advances introduced by Artificial Intelligence (AI) and Internet of Things (IoT), greatly enhanced the complexity and potential of communication networks. The increase on variety of devices and exchanged mobile data traffic resulted in demanding requirements for the network providers. As networks tend to scale and data to increase, some problems start to arise. Traffic congestion, packet loss and high latency being some examples. Therefore, it is important to introduce powerful tools and methods to tackle these challenges. On this perspective, several studies have highlighted AI systems, mainly Machine Learning (ML) algorithms, as the most promising methods, in the context of wireless networks, by improving the overall performance and efficiency. This work proposes to integrate several network optimization algorithms, already developed, in a common and unified visualization platform. These algorithms were developed in C# and Python and some of them use supervised and unsupervised ML techniques. The proposed solution includes multi-threading processes to deal with concurrent simulations, a proxy to communicate between platforms and a dynamic visual interface.
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