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Designing and implementing Machine Learning Algorithms for advanced communications using FPGAs

机译:使用FPGA设计和实现用于高级通信的机器学习算法

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Communications systems can obtain substantial benefits from increased intelligence. Improvements to communications include increased spectral situational awareness, spectral optimization, and robust operation in dynamic and demanding communications environments. Furthermore, complex communication systems require a high degree of autonomous intelligence to optimize performance under such varying conditions. Machine Learning Algorithms provide a means to increase the intrinsic intelligence of wideband communication systems. This paper considers the use of Machine Learning Algorithms to increase the intelligence of communication systems. Specifically, the focus of this paper is to sense and learn the communication environment in real-time and optimize system parameters to maximize end-to-end performance. Communications systems have existing adaptive capabilities in many subsystems such as equalization. The focus in this paper is top level system intelligence by learning from the environment, and based on the system capabilities determine an optimal mode in the solution space in real-time. Furthermore, the goal of this paper is to consider implementation of Machine Learning Algorithms using FPGAs. Design data for implementing Machine Learning Algorithms using FPGAs is provided in the paper as well as reference circuits for implementation. Finally, an example implementation of a Machine Learning Algorithm for intelligent communications is provided based on implementation in a Xilinx UltraScale FPGA.
机译:通信系统可以从提高的智能中获得实质性的好处。通信方面的改进包括增强频谱状况感知,频谱优化以及在动态和苛刻的通信环境中的可靠运行。此外,复杂的通信系统需要高度的自主智能才能在这种变化的条件下优化性能。机器学习算法提供了一种提高宽带通信系统内在智能的方法。本文考虑使用机器学习算法来增加通信系统的智能。具体来说,本文的重点是实时感知和学习通信环境,并优化系统参数以最大化端到端性能。通信系统在诸如均衡之类的许多子系统中具有现有的自适应能力。本文的重点是通过从环境中学习来获得顶级系统智能,并基于系统功能实时确定解决方案空间中的最佳模式。此外,本文的目的是考虑使用FPGA实现机器学习算法。本文提供了用于使用FPGA实现机器学习算法的设计数据,以及用于实现的参考电路。最后,基于Xilinx UltraScale FPGA中的实现,提供了用于智能通信的机器学习算法的示例实现。

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