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Supervised Learning for Performance Prediction in Underwater Acoustic Communications

机译:水下通信绩效预测的监督学习

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The propagation of acoustic waves under water is a highly complex and stochastic process. Such channel dynamics renders large performance variation in underwater acoustic (UWA) communications. Prediction of the UWA communication performance is critical for selection and adaptation of the communication strategies. This work explores the use of supervised learning for performance prediction in UWA communications. This work first quantifies the transmitter design, the UWA channel characteristics and the receiver design by numerical and categorical parameters. For a chosen performance metric (e.g., the bit error rate or the packet error rate), the performance prediction is cast individually into a numerical prediction problem and a classification problem. Using the data sets from two field experiments, the performance of typical supervised learning methods are examined. The data processing results reveal that some supervised learning methods can achieve fairly good numerical prediction or classification performance, and the discriminative models typically outperform the generative models.
机译:声波在水下的传播是一种高度复杂和随机的过程。这种信道动力学使水下声学(UWA)通信中的大性能变化呈现大。 UWA通信性能的预测对于选择和适应通信策略至关重要。这项工作探讨了UWA通信中绩效预测的监督学习。这项工作首先通过数值和分类参数量化发射器设计,UWA通道特性和接收器设计。对于所选择的性能度量(例如,误码率或分组错误率),性能预测被单独投射到数值预测问题和分类问题中。使用来自两个现场实验的数据集,检查了典型的监督学习方法的性能。数据处理结果表明,一些监督的学习方法可以实现相当良好的数值预测或分类性能,并且鉴别模型通常优于生成模型。

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