Title
Ionospheric Echo Detection in Digital Ionograms Using Convolutional Neural Networks
Date Issued
01 August 2021
Access level
metadata only access
Resource Type
journal article
Publisher(s)
John Wiley and Sons Inc
Abstract
An ionogram is a graph of the time that a vertically transmitted wave takes to return to the earth as a function of frequency. Time is typically represented as virtual height, which is the time divided by the speed of light. The ionogram is shaped by making a trace of this height against the frequency of the transmitted wave. Along with the echoes of the ionosphere, ionograms usually contain a large amount of noise and interference of different nature that must be removed in order to extract useful information. In the present work, we propose a method based on convolutional neural networks to extract ionospheric echoes from digital ionograms. Extraction using the CNN model is compared with extraction using machine learning techniques. From the extracted traces, ionospheric parameters can be determined and electron density profile can be derived.
Volume
56
Issue
8
Language
English
OCDE Knowledge area
Física de partículas, Campos de la Física Meteorología y ciencias atmosféricas
Scopus EID
2-s2.0-85113380463
Source
Radio Science
ISSN of the container
00486604
Sponsor(s)
The Low Latitude Ionospheric Sensor Network (LISN) is funded by NSF Grant AGS‐1933056 and is a project led by the University of Texas at Dallas in collaboration with the Geophysical Institute of Peru and other institutions that provide information in benefit of the space weather scientific community. The authors thank all organizations and persons that who support and operate receivers under the LISN project. All ionograms that were used to train the neural network models are available and can be downloaded from the following location https://lisn.igp.gob.pe .
Sources of information: Directorio de Producción Científica Scopus