Time-Series Prediction for Amount of Airworthiness Based on Time-Delay Neural Networks

Troposphere and the first stratum of the stratosphere are intensely utilized atmosphere layers for the aviation activities. Due to the different performances, capabilities, designs, and equipment of the aerial vehicles, meteorological weather events that occur in the troposphere affect these vehicle...

Full description

Bibliographic Details
Main Authors: Ali Tatli, Sinem Kahvecioglu, Hikmet Karakoc
Format: Article
Language:English
Published: Kaunas University of Technology 2020-10-01
Series:Elektronika ir Elektrotechnika
Subjects:
Online Access:https://eejournal.ktu.lt/index.php/elt/article/view/25843
id doaj-cf52bf6457eb496684edb272390347f1
record_format Article
spelling doaj-cf52bf6457eb496684edb272390347f12020-11-25T03:52:36ZengKaunas University of TechnologyElektronika ir Elektrotechnika1392-12152029-57312020-10-01265283210.5755/j01.eie.26.5.2584322098Time-Series Prediction for Amount of Airworthiness Based on Time-Delay Neural NetworksAli Tatli0Sinem Kahvecioglu1Hikmet Karakoc2Department of Avionics, Eskisehir Technical UniversityDepartment of Avionics, Eskisehir Technical UniversityDepartment of Airframe and Powerplant Maintenance, Eskisehir Technical UniversityTroposphere and the first stratum of the stratosphere are intensely utilized atmosphere layers for the aviation activities. Due to the different performances, capabilities, designs, and equipment of the aerial vehicles, meteorological weather events that occur in the troposphere affect these vehicles at different levels during their aeronautical activities. Although simple aircrafts are more sensitive to the effects of meteorological events, they are especially preferred by flight training organizations (FTOs) in pilotage training when they are considered in terms of maintenance and equipment costs. In cases where inexperienced pilot candidates and simple aircrafts that are more vulnerable to weather events come together, analysis and prediction of meteorological parameters becomes more important in terms of preventing accidents and reducing risks, as well as proper planning for flight and maintenance. The purposes of this study are, first, to derive flight availability time-series for two different types of aircraft according to visual flight rules by using Meteorological Terminal Air Report (METAR), and then to establish and evaluate a prediction model by using Time-Delay Neural Networks (TDNNs).https://eejournal.ktu.lt/index.php/elt/article/view/25843short-term forecastingtime series predictiontdnnairworthiness
collection DOAJ
language English
format Article
sources DOAJ
author Ali Tatli
Sinem Kahvecioglu
Hikmet Karakoc
spellingShingle Ali Tatli
Sinem Kahvecioglu
Hikmet Karakoc
Time-Series Prediction for Amount of Airworthiness Based on Time-Delay Neural Networks
Elektronika ir Elektrotechnika
short-term forecasting
time series prediction
tdnn
airworthiness
author_facet Ali Tatli
Sinem Kahvecioglu
Hikmet Karakoc
author_sort Ali Tatli
title Time-Series Prediction for Amount of Airworthiness Based on Time-Delay Neural Networks
title_short Time-Series Prediction for Amount of Airworthiness Based on Time-Delay Neural Networks
title_full Time-Series Prediction for Amount of Airworthiness Based on Time-Delay Neural Networks
title_fullStr Time-Series Prediction for Amount of Airworthiness Based on Time-Delay Neural Networks
title_full_unstemmed Time-Series Prediction for Amount of Airworthiness Based on Time-Delay Neural Networks
title_sort time-series prediction for amount of airworthiness based on time-delay neural networks
publisher Kaunas University of Technology
series Elektronika ir Elektrotechnika
issn 1392-1215
2029-5731
publishDate 2020-10-01
description Troposphere and the first stratum of the stratosphere are intensely utilized atmosphere layers for the aviation activities. Due to the different performances, capabilities, designs, and equipment of the aerial vehicles, meteorological weather events that occur in the troposphere affect these vehicles at different levels during their aeronautical activities. Although simple aircrafts are more sensitive to the effects of meteorological events, they are especially preferred by flight training organizations (FTOs) in pilotage training when they are considered in terms of maintenance and equipment costs. In cases where inexperienced pilot candidates and simple aircrafts that are more vulnerable to weather events come together, analysis and prediction of meteorological parameters becomes more important in terms of preventing accidents and reducing risks, as well as proper planning for flight and maintenance. The purposes of this study are, first, to derive flight availability time-series for two different types of aircraft according to visual flight rules by using Meteorological Terminal Air Report (METAR), and then to establish and evaluate a prediction model by using Time-Delay Neural Networks (TDNNs).
topic short-term forecasting
time series prediction
tdnn
airworthiness
url https://eejournal.ktu.lt/index.php/elt/article/view/25843
work_keys_str_mv AT alitatli timeseriespredictionforamountofairworthinessbasedontimedelayneuralnetworks
AT sinemkahvecioglu timeseriespredictionforamountofairworthinessbasedontimedelayneuralnetworks
AT hikmetkarakoc timeseriespredictionforamountofairworthinessbasedontimedelayneuralnetworks
_version_ 1724481946021527552