Utilizing Advanced Regression Techniques to Forecast Visibility at Subang and Langkawi International Airport

In the context of aviation, the anticipation of visibility is contingent upon the consideration of diverse meteorological factors. This study systematically examines the influence of the cross-validation technique (k) on the precision of visibility predictions, as gauged by root mean square error an...

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Published in:NEW TRENDS IN CIVIL AVIATION, NTCA 2024
Main Authors: Bin Jamaludin, Wan Mohammed Rais; Mohamed, Wan Mazlina Binti Wan; Ali, Nik Hakimi Bin Nik; Isa, Nor Azlina Binti Mohd
Format: Proceedings Paper
Language:English
Published: IEEE 2024
Subjects:
Online Access:https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001223424800016
author Bin Jamaludin
Wan Mohammed Rais; Mohamed
Wan Mazlina Binti Wan; Ali
Nik Hakimi Bin Nik; Isa
Nor Azlina Binti Mohd
spellingShingle Bin Jamaludin
Wan Mohammed Rais; Mohamed
Wan Mazlina Binti Wan; Ali
Nik Hakimi Bin Nik; Isa
Nor Azlina Binti Mohd
Utilizing Advanced Regression Techniques to Forecast Visibility at Subang and Langkawi International Airport
Engineering
author_facet Bin Jamaludin
Wan Mohammed Rais; Mohamed
Wan Mazlina Binti Wan; Ali
Nik Hakimi Bin Nik; Isa
Nor Azlina Binti Mohd
author_sort Bin Jamaludin
spelling Bin Jamaludin, Wan Mohammed Rais; Mohamed, Wan Mazlina Binti Wan; Ali, Nik Hakimi Bin Nik; Isa, Nor Azlina Binti Mohd
Utilizing Advanced Regression Techniques to Forecast Visibility at Subang and Langkawi International Airport
NEW TRENDS IN CIVIL AVIATION, NTCA 2024
English
Proceedings Paper
In the context of aviation, the anticipation of visibility is contingent upon the consideration of diverse meteorological factors. This study systematically examines the influence of the cross-validation technique (k) on the precision of visibility predictions, as gauged by root mean square error and mean absolute error. Employing the Regression Learner, encompassing 26 predetermined algorithms, and employing cross-validation (k) iterations ranging from 5 to 15, the primary objective was to discern the optimal model for visibility prognosis. Notably, our analysis extends to two distinct airports in Peninsular Malaysia, thereby enabling a comparative assessment. Results elucidate that the Gaussian Process Regression model consistently demonstrates superior efficacy across varied meteorological parameters and diverse k values. The outcomes of this study are poised to yield practical implications, particularly in refining visibility prognostications and mitigating the likelihood of aviation incidents.
IEEE
2694-7854

2024


10.23919/NTCA60572.2024.10517824
Engineering

WOS:001223424800016
https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001223424800016
title Utilizing Advanced Regression Techniques to Forecast Visibility at Subang and Langkawi International Airport
title_short Utilizing Advanced Regression Techniques to Forecast Visibility at Subang and Langkawi International Airport
title_full Utilizing Advanced Regression Techniques to Forecast Visibility at Subang and Langkawi International Airport
title_fullStr Utilizing Advanced Regression Techniques to Forecast Visibility at Subang and Langkawi International Airport
title_full_unstemmed Utilizing Advanced Regression Techniques to Forecast Visibility at Subang and Langkawi International Airport
title_sort Utilizing Advanced Regression Techniques to Forecast Visibility at Subang and Langkawi International Airport
container_title NEW TRENDS IN CIVIL AVIATION, NTCA 2024
language English
format Proceedings Paper
description In the context of aviation, the anticipation of visibility is contingent upon the consideration of diverse meteorological factors. This study systematically examines the influence of the cross-validation technique (k) on the precision of visibility predictions, as gauged by root mean square error and mean absolute error. Employing the Regression Learner, encompassing 26 predetermined algorithms, and employing cross-validation (k) iterations ranging from 5 to 15, the primary objective was to discern the optimal model for visibility prognosis. Notably, our analysis extends to two distinct airports in Peninsular Malaysia, thereby enabling a comparative assessment. Results elucidate that the Gaussian Process Regression model consistently demonstrates superior efficacy across varied meteorological parameters and diverse k values. The outcomes of this study are poised to yield practical implications, particularly in refining visibility prognostications and mitigating the likelihood of aviation incidents.
publisher IEEE
issn 2694-7854

publishDate 2024
container_volume
container_issue
doi_str_mv 10.23919/NTCA60572.2024.10517824
topic Engineering
topic_facet Engineering
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