利用自适应马尔可夫链模式检测方法揭示气候变化模式

Zhaoxia Wang, G. Lee, H. Chan, R. Li, Xiuju FU, R. Goh, Pauline Aw, M. Hibberd, H. Chin
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引用次数: 3

摘要

提出了一种利用气象数据挖掘揭示新加坡气候变化模式的自适应马尔可夫链模式检测(AMCPD)方法。同时考虑了日平均气温、平均露点温度、平均能见度、平均风速、最大持续风速、最高温度和最低温度等气象变量来识别气候变化模式。该结果基于樟宜气象站的记录,描绘了1962年至2011年新加坡的各种天气模式。采用不同的聚类阈值来测试该方法的灵敏度。实验结果证明了该方法的鲁棒性。从结果中可以观察到,从20世纪60年代开始出现的早期天气模式在各个模式中一致消失。时间天气模式的变化表明新加坡气候的长期变化,这可能部分归因于城市发展和更大范围的全球气候变化。我们的气候变化模式检测算法已被证明对气候和气象研究以及关注天气的时间趋势及其变化的研究具有潜在的用途。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Disclosing Climate Change Patterns Using an Adaptive Markov Chain Pattern Detection Method
This paper proposes an adaptive Markov chain pattern detection (AMCPD) method for disclosing the climate change patterns of Singapore through meteorological data mining. Meteorological variables, including daily mean temperature, mean dew point temperature, mean visibility, mean wind speed, maximum sustained wind speed, maximum temperature and minimum temperature are simultaneously considered for identifying climate change patterns in this study. The results depict various weather patterns from 1962 to 2011 in Singapore, based on the records of the Changi Meteorological Station. Different scenarios with varied cluster thresholds are employed for testing the sensitivity of the proposed method. The robustness of the proposed method is demonstrated by the results. It is observed from the results that the early weather patterns that were present from the 1960s disappear consistently across models. Changes in temporal weather patterns suggest long-term changes to the climate of Singapore which may be attributed in part to urban development, and global climate change on a larger scale. Our climate change pattern detection algorithm is proven to be of potential use for climatic and meteorological research as well as research focusing on temporal trends in weather and the consequent changes.
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