全球气候变化视角下卡拉奇日最低极端气温的随机模式分析

Q4 Physics and Astronomy
Muhammad Atif, Muhammad Atif Idrees, Syed Ahmed Hassan, Muhammad Arif Hussain
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引用次数: 0

摘要

气候变化的影响是一个关键的、全球公认的现象,并逐渐变得不可避免,引起了世界各地决策者的注意。温度是一个主要的气候因素,被定义为对人类生活造成巨大影响的热量的程度或强度。本文提出了一些随机方法来分析卡拉奇地区2010年1月1日至2014年12月31日的日最低极端温度。观察到,平均日最低温度符合马尔可夫链,其极限概率在20至87个步骤或转变后达到稳态条件。结果表明,在20至87天后,分布变得稳定。较小的稳态时间表示数据序列的平稳性,而长期行为在相应的季节性时间序列中显示出趋势行为的非平稳性。此外,对夏季早期24°C至31°C日最低温度的全年休眠情况进行了分析。这项研究可用于天气变异性预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis of Stochastic Patterns of Daily Minimum Extreme Temperature of Karachi in Global Climate Change Perspective
Effects of climate change are a critical and globally accepted phenomenon and gradually becoming inevitable and catching the attention of policymakers around the world. Temperature is a principal climatic factor and is defined as the degree or intensity of heat causing huge consequences on human beings’ lives. This paper suggests some stochastic approaches to do an analysis of the Karachi region’s daily minimum extreme temperature from Jan 1, 2010, to Dec 31, 2014. It is observed that the average daily minimum temperature fits the Markov chain and its limiting probability has reached steady-state conditions after 20 to 87 steps or transitions. The results indicate that after 20 to 87 days the distribution becomes stationary. The smaller steady-state time represents the stationary of the data series, whereas long-term behavior shows non-stationarity in trend behavior in the respective seasonal time series. Furthermore, the overall annual dormancy of 24 o C to 31o C daily minimum temperature was analyzed early part of the summer season. This study can be useful for weather variability forecasting.
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来源期刊
Proceedings of the Pakistan Academy of Sciences: Part A
Proceedings of the Pakistan Academy of Sciences: Part A Computer Science-Computer Science (all)
CiteScore
0.70
自引率
0.00%
发文量
15
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