Flexible Compression for Efficient Information Sharing in a Network of Radio Frequency Sensors

Fraser K. Coutts;John Thompson;Bernard Mulgrew
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Abstract

The efficient extraction of useful information from radio frequency (RF) sensors is one important application for artificial intelligence (AI) and machine learning (ML) approaches. In particular, there is a desire to maximize efficiency when sharing positioning, navigation, and timing (PNT) information captured by distributed networks of low size, weight, power, and cost (SWAP-C) RF sensors when operating in congested or contested electromagnetic environments (EMEs). By implementing effective PNT information-sharing strategies, these networks can more easily position the sensors or characterize targets of interest. In this work, we propose a novel ML-inspired compression design framework that improves efficiency when sharing PNT information in a network of sensors receiving radar waveforms. In addition, through novel learning procedures, the network can adapt to unforeseen EMEs such that network efficiency can be maintained in the presence of unforeseen RF waveforms and sensor surroundings. We show that our intelligent, model-driven, ML-inspired data reduction strategies can outperform alternative strategies that do not best-utilize the information content of waveforms in the EME. In addition, we demonstrate the ability of our strategies to adapt to changing mission goals by balancing different types of PNT information and learning from developing EMEs.
射频传感器网络中有效信息共享的柔性压缩
从射频(RF)传感器中高效提取有用信息是人工智能(AI)和机器学习(ML)方法的重要应用。特别是,当在拥挤或有争议的电磁环境(eme)中运行时,人们希望在共享由小尺寸、重量、功率和成本(SWAP-C) RF传感器的分布式网络捕获的定位、导航和定时(PNT)信息时实现效率最大化。通过实施有效的PNT信息共享策略,这些网络可以更容易地定位传感器或表征感兴趣的目标。在这项工作中,我们提出了一种新的ml启发的压缩设计框架,可以提高在接收雷达波形的传感器网络中共享PNT信息时的效率。此外,通过新颖的学习过程,网络可以适应不可预见的EMEs,从而在不可预见的RF波形和传感器环境存在的情况下保持网络效率。我们的研究表明,我们的智能、模型驱动、ml启发的数据约简策略可以胜过那些不能最好地利用EME中波形信息内容的替代策略。此外,我们通过平衡不同类型的PNT信息和向发展中的EMEs学习,展示了我们的策略适应不断变化的任务目标的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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