一种用于潜在无线电信号预测的快速贝叶斯模型

B. Houlding, Arnab Bhattacharya, Simon P. Wilson, T. Forde
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引用次数: 2

摘要

本文考虑使用最近开发的贝叶斯统计近似技术,该技术可以非常快速地确定潜在无线电信号功率的高度精确估计。在适当的数据分析之后,考虑了潜在无线电信号的一阶非平稳自回归过程,然后使用快速逼近技术来提供隐藏模型参数的准确估计。这些估计是基于接收到几个有噪声但空间相关的真实潜在信号的观测结果。本文还讨论了该技术对实时决策分析的意义,以及发现和利用所谓的无线电频谱洞的问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A fast Bayesian model for latent radio signal prediction
This paper considers the use of a recently developed Bayesian statistical approximation technique that leads to very fast determination of highly accurate estimates for latent radio signal power. Following suitable data analysis, a first order non-stationary auto-regressive process is considered for latent radio signal and the fast approximation technique is then used to provide accurate estimates of the hidden model parameters. These estimates are based on having received several noisy, but spatially correlated, observations of the true latent signal. The implication of this technique for real time decision analysis and the problem of finding, and making use of, so-called radio spectrum holes is also discussed.
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