论文标题
水下光学链接中的配置学习
Configuration Learning in Underwater Optical Links
论文作者
论文摘要
这项工作描述了一个名为配置学习的新研究问题。提出了一种新型算法来解决配置学习问题。配置学习问题定义为机器学习(ML)分类器的优化,以最大化信号处理/通信系统中的发射机配置的ML性能指标。具体而言,在水下光学通信系统中研究了这种配置学习问题,并具有信号处理的物理层通信吞吐量的性能指标。提出了一种新颖的算法来通过优化关键设计参数的优化并在几个复发性神经网络(RNN)分类器之间进行切换来执行配置学习。提出的ML算法通过水下光学通信系统的数据集进行了验证,并与竞争的ML算法进行了比较。性能结果表明,该提案的表现优于水下光学通信数据集中二进制和多级配置学习的竞争算法。提出的配置学习框架可以进一步研究并应用于信号处理和通信中的广泛主题。
A new research problem named configuration learning is described in this work. A novel algorithm is proposed to address the configuration learning problem. The configuration learning problem is defined to be the optimization of the Machine Learning (ML) classifier to maximize the ML performance metric optimizing the transmitter configuration in the signal processing/communication systems. Specifically, this configuration learning problem is investigated in an underwater optical communication system with signal processing performance metric of the physical-layer communication throughput. A novel algorithm is proposed to perform the configuration learning by alternating optimization of key design parameters and switching between several Recurrent Neural Network (RNN) classifiers dependant on the learning objective. The proposed ML algorithm is validated with the datasets of an underwater optical communication system and is compared with competing ML algorithms. Performance results indicate that the proposal outperforms the competing algorithms for binary and multi-class configuration learning in underwater optical communication datasets. The proposed configuration learning framework can be further investigated and applied to a broad range of topics in signal processing and communications.