Climate Risk and Early Warning Systems (CREWS) for Papua New Guinea

Y. Kuleshov, K. Inape, Andrew B. Watkins, A. Bear-Crozier, Zhi-Weng Chua, P. Xie, T. Kubota, Tomoko Tashima, R. Stefański, T. Kurino
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引用次数: 13

Abstract

Developing and least developed countries are particularly vulnerable to the impact of climate change and climate extremes, including drought. In Papua New Guinea (PNG), severe drought caused by the strong El Niño in 2015–2016 affected about 40% of the population, with almost half a million people impacted by food shortages. Recognizing the urgency of enhancing early warning systems to assist vulnerable countries with climate change adaptation, the Climate Risk and Early Warning Systems (CREWS) international initiative has been established. In this chapter, the CREWS-PNG project is described. The CREWS-PNG project aims to develop an improved drought monitoring and early warning system, running operationally through a collaboration between PNG National Weather Services (NWS), the Australian Bureau of Meteorology and the World Meteorological Organization that will enable better strategic decision-making for agriculture, water management, health and other climate-sensitive sectors. It is shown that current dynamical climate models can provide skillful predictions of regional rainfall at least 3 months in advance. Dynamical climate model-based forecast products are disseminated through a range of Web-based information tools. It is demonstrated that seasonal climate prediction is an effective solution to assist governments and local communities with informed decision-making in adaptation to climate variability and change.
巴布亚新几内亚气候风险和预警系统(CREWS)
发展中国家和最不发达国家特别容易受到气候变化和极端气候的影响,包括干旱。在巴布亚新几内亚,2015-2016年强厄尔尼诺Niño造成的严重干旱影响了约40%的人口,近50万人受到粮食短缺的影响。认识到加强预警系统以帮助脆弱国家适应气候变化的紧迫性,建立了气候风险和预警系统(CREWS)国际倡议。本章描述了CREWS-PNG项目。CREWS-PNG项目旨在开发一个改进的干旱监测和预警系统,通过巴布亚新几内亚国家气象局(NWS)、澳大利亚气象局和世界气象组织之间的合作运行,使农业、水管理、卫生和其他气候敏感部门能够更好地做出战略决策。结果表明,目前的动力气候模式可以提供至少提前3个月的区域降雨预报。基于动态气候模式的预报产品通过一系列基于网络的信息工具传播。结果表明,季节气候预测是一种有效的解决方案,可以帮助政府和地方社区在适应气候变率和变化方面做出明智的决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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