Statistical Analysis of Weather Parameters for Sustainable Flight Operation in Nigeria

A. Olabode
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Abstract

Abstract The recent complications in the weather system, which oftentimes lead to flight cancellation, delay and diversion have become a critical issue in Nigeria. This study however considers the weather related parameters and their impacts on flight disruption in the country. Weather data (on thunderstorm, wind speed and direction, visibility and cloud cover) and flight data (delay, cancellation and diversion) were collected from Murtala International Airport, Ikeja-Lagos, Nigeria. The data covered the period between 2005 and 2020. However, Regional Climate Models (RCMs) were also used to run climate data projections between year 2020 and 2035 in the study region. The study employed Statistical Package for Social Sciences (SPSS) software for the descriptive and inferential analysis. Time series analysis, Pearson Moment Correlation for interrelationship among the weather parameters and the flight disruption data, and multiple linear regression analysis were applied to determine the influence of weather parameters on flight disruption data. Results show that cloud cover and high visibility are negatively correlated. Wind speed has positive relationship with wind direction; and an inverse relationship between visibility, thunderstorm, and fog. Direct relationship exists between highest visibility and thick dust, wind speed and cloud cover. Thick dust, wind speed and cloud cover indicate increased visibility level in the study area. Flight delay is prominent over flight diversion and cancellation, which indicates their relevance in air traffic of the study area. The prediction model indicates high degree of cloud cover at the beginning of every year and later declines sharply in 2035, the visibility flattens out by the year 2025, and low pattern of thick dust was calculated in the same pattern in 2011, 2016 and 2027. Based on this conclusion, the study recommends accurate weather reporting and strict compliance to safety regulations, and attention should be paid to changing pattern of weather parameters in order to minimize fight related disasters.
尼日利亚可持续飞行天气参数的统计分析
近年来,天气系统的复杂性经常导致航班取消、延误和备降,这已经成为尼日利亚的一个关键问题。然而,本研究考虑了与天气相关的参数及其对该国航班中断的影响。天气数据(雷暴、风速和风向、能见度和云量)和航班数据(延误、取消和备降)从尼日利亚伊贾-拉各斯的穆尔塔拉国际机场收集。这些数据涵盖了2005年至2020年期间。然而,区域气候模式(RCMs)也被用于运行研究区域2020 - 2035年的气候数据预测。本研究采用SPSS (Statistical Package for Social Sciences)软件进行描述性和推断性分析。采用时间序列分析、Pearson矩相关分析和多元线性回归分析来确定天气参数对航班中断数据的影响。结果表明,云量与高能见度呈负相关。风速与风向呈正相关;以及能见度、雷暴和雾之间的反比关系。最高能见度与厚尘、风速、云量有直接关系。厚尘、风速和云量表明研究区能见度增加。航班延误比航班改道和航班取消更为突出,表明其在研究区域空中交通中的相关性。预测模型显示,2035年每年年初云量高,之后急剧下降,到2025年能见度趋于平缓,2011年、2016年和2027年在相同的模式下计算厚尘低。在此基础上,建议准确预报天气,严格遵守安全规定,并注意天气参数的变化模式,以尽量减少与战斗有关的灾害。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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