揭示印度大陆气温数据集的分形复杂性

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Adarsh Sankaran, Thomas Plocoste, Arathy Nair Geetha Raveendran Nair, Meera Geetha Mohan
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引用次数: 0

摘要

研究气候变化下的大气温度特征至关重要,因为它有助于我们了解对环境、生态系统和人类福祉有重大影响的温度变化规律。本研究采用多分形去趋势波动分析法(MFDFA),对整个印度大陆的日气温序列缩放行为的时空变异性进行了全面分析。分析考虑了 1951 年至 2016 年期间最高气温(Tmax)、最低气温(Tmin)、平均气温(Tmean)和昼夜温差(DTR)(TDTR = Tmax - Tmin)的 1° × 1° 数据集,首次比较了它们的缩放行为。结果表明,Tmin序列的持久性最高(赫斯特指数从0.849到1,平均值为0.971),所有四个温度序列都显示出长期持久性和多分形特征。印度中北部的多分形特征变异性较小,而印度西部沿海的变异性最大。此外,对 1976-1977 年前后太平洋气候转变期间不同气温序列的多分形特征进行评估后发现,1976-1977 年后所有地区气温序列的多分形强度和持久性都明显下降。此外,为了探测气候变化及其主要驱动因素,我们通过评估频谱指数和赫斯特指数的时间演变,提出了一种新的滚动窗口多分形(RWM)框架。这项研究成功捕捉到了 1976-1977 年和 1997-1998 年期间的制度转换。有趣的是,较早的气候转变主要减轻了 Tmax 序列的持续性,而较晚的转变则显著影响了印度大部分温度均匀地区 Tmean 序列的持续性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unravelling the Fractal Complexity of Temperature Datasets across Indian Mainland
Studying atmospheric temperature characteristics is crucial under climate change, as it helps us to understand the changing patterns in temperature that have significant implications for the environment, ecosystems, and human well-being. This study presents the comprehensive analysis of the spatiotemporal variability of scaling behavior of daily temperature series across the whole Indian mainland, using a Multifractal Detrended Fluctuation Analysis (MFDFA). The analysis considered 1° × 1° datasets of maximum temperature (Tmax), minimum temperature (Tmin), mean temperature (Tmean), and diurnal temperature range (DTR) (TDTR = Tmax − Tmin) from 1951 to 2016 to compare their scaling behavior for the first time. Our results indicate that the Tmin series exhibits the highest persistence (with the Hurst exponent ranging from 0.849 to unity, and a mean of 0.971), and all four-temperature series display long-term persistence and multifractal characteristics. The variability of the multifractal characteristics is less significant in North–Central India, while it is highest along the western coast of India. Moreover, the assessment of multifractal characteristics of different temperature series during the pre- and post-1976–1977 period of the Pacific climate shift reveals a notable decrease in multifractal strength and persistence in the post-1976–1977 series across all regions. Moreover, for the detection of climate change and its dominant driver, we propose a new rolling window multifractal (RWM) framework by evaluating the temporal evolution of the spectral exponents and the Hurst exponent. This study successfully captured the regime shifts during the periods of 1976–1977 and 1997–1998. Interestingly, the earlier climatic shift primarily mitigated the persistence of the Tmax series, whereas the latter shift significantly influenced the persistence of the Tmean series in the majority of temperature-homogeneous regions in India.
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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