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首页> 外文期刊>Journal of Hydrology >On the detection of human influence in extreme precipitation over India
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On the detection of human influence in extreme precipitation over India

机译:关于人类对印度极端降水的影响的检测

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Climate change is expected to influence extreme precipitation which in turn might affect risks of pluvial flooding. Recent studies on extreme rainfall over India vary in their definition of extremes, scales of analyses and conclusions about nature of changes in such extremes. Fingerprint-based detection and attribution (D&A) offer a formal way of investigating the presence of anthropogenic signals in hydroclimatic observations. There have been recent efforts to quantify human effects in the components of the hydrologic cycle at large scales, including precipitation extremes. This study conducts a D&A analysis on precipitation extremes over India, considering both univariate and multivariate fingerprints, using a standardized probability-based index (SPI) from annual maximum one-day (RX1D) and five-day accumulated (RX5D) rainfall. The pattern-correlation based fingerprint method is used for the D&A analysis. Transformation of annual extreme values to SPI and subsequent interpolation to coarser grids are carried out to facilitate comparison between observations and model simulations. Our results show that in spite of employing these methods to address scale and physical processes mismatch between observed and model simulated extremes, attributing changes in regional extreme precipitation to anthropogenic climate change is difficult. At very high (95%) confidence, no signals are detected for RX1D, while for the RX5D and multivariate cases only the anthropogenic (ANT) signal is detected, though the fingerprints are in general found to be noisy. The findings indicate that model simulations may underestimate regional climate system responses to increasing human forcings for extremes, and though anthropogenic factors may have a role to play in causing changes in extreme precipitation, their detection is difficult at regional scales and not statistically significant. (C) 2015 Elsevier B.V. All rights reserved.
机译:预计气候变化将影响极端降水,进而可能影响到洪水泛滥的风险。最近有关印度极端降雨的研究对极端的定义,有关极端变化的性质的分析规模和结论各不相同。基于指纹的检测和归因(D&A)提供了一种正式方法,用于调查水文气候观测中人为信号的存在。最近已经进行了努力,以量化人类在水文循环各组成部分中的影响,包括极端降水。这项研究使用标准的基于概率的指数(SPI)从年度最大一日降雨量(RX1D)和五天累积降雨量(RX5D)中进行了D&A分析,同时考虑了单变量和多变量指纹。基于模式相关的指纹方法用于D&A分析。进行年度极值到SPI的转换以及随后到较粗网格的插值,以方便观察和模型仿真之间的比较。我们的结果表明,尽管采用这些方法来解决观测到的和模型模拟的极端之间的尺度和物理过程失配,但是将区域极端降水的变化归因于人为气候变化却是困难的。在非常高的置信度(95%)下,对于RX1D没有检测到信号,而对于RX5D和多变量情况,仅检测到了人为(ANT)信号,尽管通常发现指纹很嘈杂。研究结果表明,模型模拟可能低估了区域气候系统对人类极端强迫增加的响应,尽管人为因素可能在引起极端降水变化中发挥作用,但在区域尺度上很难对其进行检测,而且在统计上也不显着。 (C)2015 Elsevier B.V.保留所有权利。

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