A Cognitive ML Agent for Airborne Networking

F. D. Kronewitter, Sumner Lee, Kenneth. Oliphant, Dell. Kronewitter, Kenneth. Oliphant
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Abstract

This conference note describes a Deep Reinforcement Learning architecture specifically designed to improve wireless network performance over a heterogeneous airborne wireless network consisting of multiple waveforms, antennas, platforms, link protocols, frequencies, spatial transmission, and codes. The cooperative optimization of this high dimensional space is a difficult problem which obviously has a highly correlated characterization where human network operators cannot possibly capture these correlations. Model-free Reinforcement Learning techniques represent a potential solution to our problem. Specifically, we use Deep Q-Learning Networks (DQN) to improve networking performance. We have developed a high-fidelity network simulation tool we call Tactical Airborne Network Simulator (TANS) which we use to train our neural network before deploying to the field where the asset is deployed to some mission which is hopefully somewhat similar to the scenarios used for training. By utilizing the model developed under the TANS training scenarios for the target mission scenario our learning technique gets a head start, rather than using a truly model-free approach. Our technique is codified in the ML community as “Deep Transfer Learning” [4] where terms and metrics have been examined. This paper represents an initial investigation into both the decision support agent architecture and the ML technique. Upcoming research will be described below including our vision for an expanded agent architecture as well as ideas for improved ML techniques which ultimately will result in better wireless network performance. Here we demonstrate a minor throughput performance improvement of 4% using a proof of concept agent over the use of a standard unassisted network. We improved the throughput from 309kbps to 324 kbps.
机载网络的认知机器学习代理
本会议记录描述了一种深度强化学习架构,专门用于在由多种波形、天线、平台、链路协议、频率、空间传输和代码组成的异构机载无线网络上提高无线网络性能。这个高维空间的协同优化是一个难题,它显然具有高度相关的特征,而人类网络运营商不可能捕捉到这些相关性。无模型强化学习技术代表了我们问题的潜在解决方案。具体来说,我们使用深度q -学习网络(DQN)来提高网络性能。我们开发了一种高保真网络仿真工具,我们称之为战术机载网络模拟器(TANS),我们用它来训练我们的神经网络,然后部署到战场上,在那里,资产被部署到一些任务中,希望与用于训练的场景有些相似。通过将TANS训练场景下开发的模型用于目标任务场景,我们的学习技术获得了一个良好的开端,而不是使用真正的无模型方法。我们的技术在ML社区中被编码为“深度迁移学习”[4],其中的术语和指标已经被检查过。本文对决策支持代理体系结构和机器学习技术进行了初步研究。接下来的研究将在下面描述,包括我们对扩展代理架构的愿景,以及改进机器学习技术的想法,这些技术最终将带来更好的无线网络性能。在这里,我们展示了使用概念验证代理比使用标准的无辅助网络提高4%的吞吐量性能。我们将吞吐量从309kbps提高到324kbps。
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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