За технічних причин Електронний архів Харківського національного університету радіоелектроніки «ElAr КhNURE» працює тільки на перегляд. Про відновлення роботи у повному обсязі буде своєчасно повідомлено.
 

Публікація:
Fusion Method of Primary Surveillance Radar Data and IFF systems Data

Завантаження...
Зображення мініатюри

Дата

2020

Назва журналу

ISSN журналу

Назва тома

Видавництво

DESSERT

Дослідницькі проекти

Організаційні підрозділи

Видання журналу

Анотація

In this article, based on the Bayesian approach, the Primary Surveillance Radar (PSR) and Identification Friend or Foe (IFF) systems data fusion model is proposed and investigated for the case, where the uncertainty volume of PSR and IFF systems are the same, as well as for the case, where the uncertainty volume of IFF systems significantly exceeds the PSR uncertainty volume and several air object are in the IFF systems uncertainty volume. It is shown that for the second case, the identification process has three phases: the detection and measurement of air object (AO) coordinates, AO selection and AO binding to target designation, which includes fusing the AO coordinates determined by the PSR and IFF systems, followed by identification of the detected AO. Each of the phases can be random in nature and can be described by numerical parameters: the probability of measuring the trait by which it will be selected; the probability of selection, which characterizes the ability of IFF systems to classify AOs as “Friend” and “Foe” according to a measured score; the likelihood of correctly linking the “Friend and Foe” score to target designation.

Опис

Ключові слова

air object, Primary Surveillance Radar, IFF, Identification Friend or Foe, Information Security, aircraft responder

Бібліографічний опис

I. Svyd, O. Maltsev, I. Obod and G. Zavolodko, "Fusion Method of Primary Surveillance Radar Data and IFF systems Data," 2020 IEEE 11th International Conference on Dependable Systems, Services and Technologies (DESSERT), Kyiv, Ukraine, 2020, pp. 336-340, doi: 10.1109/DESSERT50317.2020.9125040

DOI