Climate change increased extreme monsoon rainfall, flooding highly vulnerable communities in Pakistan

F. Otto, M. Zachariah, F. Saeed, A. Siddiqi, Shahzad Kamil, H. Mushtaq, Arulalan T, K. AchutaRao, Chaitra S T, Clair Barnes, S. Philip, S. Kew, R. Vautard, Gerbrand Koren, Izidine Pinto, P. Wolski, Maja Vahlberg, Roop K. Singh, J. Arrighi, M. V. van Aalst, L. Thalheimer, E. Raju, Sihan Li, Wenchang Yang, L. Harrington, B. Clarke
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引用次数: 28

Abstract

As a direct consequence of extreme monsoon rainfall throughout the summer 2022 season Pakistan experienced the worst flooding in its history. We employ a probabilistic event attribution methodology as well as a detailed assessment of the dynamics to understand the role of climate change in this event. Many of the available state-of-the-art climate models struggle to simulate these rainfall characteristics. Those that pass our evaluation test generally show a much smaller change in likelihood and intensity of extreme rainfall than the trend we found in the observations. This discrepancy suggests that long-term variability, or processes that our evaluation may not capture, can play an important role, rendering it infeasible to quantify the overall role of human-induced climate change. However, the majority of models and observations we have analysed show that intense rainfall has become heavier as Pakistan has warmed. Some of these models suggest climate change could have increased the rainfall intensity up to 50%. The devastating impacts were also driven by the proximity of human settlements, infrastructure (homes, buildings, bridges), and agricultural land to flood plains, inadequate infrastructure, limited ex-ante risk reduction capacity, an outdated river management system, underlying vulnerabilities driven by high poverty rates and socioeconomic factors (e.g. gender, age, income, and education), and ongoing political and economic instability. Both current conditions and the potential further increase in extreme peaks in rainfall over Pakistan in light of anthropogenic climate change, highlight the urgent need to reduce vulnerability to extreme weather in Pakistan.
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气候变化增加了极端季风降雨,淹没了巴基斯坦高度脆弱的社区
作为2022年夏季极端季风降雨的直接后果,巴基斯坦经历了其历史上最严重的洪水。我们采用概率事件归因方法以及对动力学的详细评估来了解气候变化在这一事件中的作用。许多现有的最先进的气候模型都难以模拟这些降雨特征。那些通过我们的评估测试的通常显示极端降雨的可能性和强度的变化比我们在观测中发现的趋势要小得多。这种差异表明,我们的评估可能无法捕捉到的长期变率或过程可能发挥重要作用,因此无法量化人类引起的气候变化的总体作用。然而,我们分析的大多数模式和观测表明,随着巴基斯坦变暖,强降雨变得更强了。其中一些模型表明,气候变化可能使降雨强度增加了50%。人类住区、基础设施(房屋、建筑物、桥梁)和农业用地靠近洪泛平原、基础设施不足、预先降低风险能力有限、过时的河流管理系统、高贫困率和社会经济因素(如性别、年龄、收入和教育)造成的潜在脆弱性,以及持续的政治和经济不稳定,也造成了破坏性影响。鉴于人为气候变化,巴基斯坦目前的状况和极端降雨峰值可能进一步增加,突显了降低巴基斯坦对极端天气脆弱性的迫切需要。
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