Deep Learning for Range Localization via Over-Water Electromagnetic Signals

Evan Witz, M. Barger, R. Paffenroth
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Abstract

Neural networks are widely applied in domains such as image processing, natural language processing, and time series forecasting. However, neural networks have seen less use in problems arising in the physical sciences. This is unfortunate, since the physical domain has a wealth of problems that can benefit from application of neural networks. These problems hold substantial significance to many areas such as manufacturing, material science, and many others. In the current text we demonstrate that knowledge of the physical systems of interest can be combined with effective data preprocessing and neural network training to achieve prediction effectiveness which is greater than the sum of its parts. In particular, we study the challenging problem of range estimation from the measurement of electromagnetic scattering of radio waves reflected off the surface of the ocean and the atmosphere. Our key finding is a that good performance can only be achieved by combining physical principles with careful data preprocessing and network training.
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基于水面电磁信号的深度学习距离定位
神经网络广泛应用于图像处理、自然语言处理和时间序列预测等领域。然而,神经网络在物理科学中出现的问题中很少使用。这是不幸的,因为物理领域有大量的问题可以从神经网络的应用中受益。这些问题对制造业、材料科学等许多领域都具有重大意义。在当前的文本中,我们证明了感兴趣的物理系统的知识可以与有效的数据预处理和神经网络训练相结合,以达到大于其各部分之和的预测效果。特别地,我们研究了从海洋和大气表面反射的无线电波的电磁散射测量中估计距离的挑战性问题。我们的主要发现是,良好的性能只能通过将物理原理与仔细的数据预处理和网络训练相结合来实现。
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