VLF遥感下电离层声波的系统统计识别

Matthew Woodward, M. Cohen
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摘要

本文提出了一种通过分析极低频(VLF)波段的磁场记录来自动统计表征电离层声波(1-5分钟周期)扰动的方法。电离层是位于大气层顶部(60-500公里)的带电层,由太阳辐射形成。最低的区域,被称为d区(60-90公里),很难感知,因为它高于适合气球的高度,但低于卫星的高度。电离层影响着全球通信解决方案,因为它能够将信号传输到视线之外的全球距离。声波是周期性的移动振荡,可以破坏电离层下层的条件。我们描述了一种定位声波的方法,该方法依赖于识别磁场数据30分钟周期频谱中的异常值。这些异常值可能与声波干扰有关。过去对电离层声波的研究都是零星的个案研究。然而,为了进一步解释这些扰动的原因,如飓风、雷暴、空间天气和山脉上空的空气湍流,需要有关它们发生的详细信息。
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Systematic Statistical Identification of Lower Region Ionosphere Acoustic Waves through VLF Remote Sensing
We present a method to automatically statistically characterize ionospheric acoustic wave (1–5 minute period) disturbances propagating through the lower region ionosphere (75–85 km) by analyzing magnetic field recordings in the very-low-frequency (VLF) band. The ionosphere is an electrically charged layer at the top of the atmosphere (60–500 km) formed from solar radiation. The lowest region, known as the D-region (60–90 km), is difficult to sense as it is above an elevation suitable for balloons yet below that of satellites. The ionosphere impacts global communications solutions due to its ability to transmit signals beyond line-of-sight to global distances. Acoustic waves are periodic moving oscillations that can disrupt conditions in the lower ionosphere. We describe a method to locate acoustic waves that relies on identifying outliers in the frequency spectrum of 30-minute periods of magnetic field data. These outliers may correlate to acoustic wave disturbances. Past studies of acoustic waves in the ionosphere have been anecdotal case studies. However, detailed information about their occurrences is needed to further reason about the causes of these disturbances, such as hurricanes, thunderstorms, space weather, and air turbulence over mountain ranges.
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