Piotr Wolski, Olivier Crespo, M. Tadross, Fidelity Z. Khumalo, Tamika Du-Pont, Damien Riquet, Catherine Jones
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To build efficient and credible AA trigger models, quantitative assessments of relationships between observed climate and environmental conditions, weather/seasonal forecasts, and variables expressing current sectoral and societal vulnerability (collectively referred to as indicators) and expected impacts, are required at varied lead times. These quantitative assessments are needed to: (a) avoid over-weighting (placing excessive trust in) non-skillful indicators; (b) avoid using several co-varying and correlated indicators (over-emphasising their collective importance for the decision at hand); and (c) provide objective and defensible evidence for and consequently confidence in the AA trigger model. Motivated by the need to improve the current AA trigger model used for agricultural drought by FAO in Mindanao, a region of the Philippines which experiences periodic drought-related food insecurity, this study evaluates a range of climate and environmental indicators as a basis for developing a quantitative, objective trigger model. The analyses focus on: (i) an evaluation of efficacy of using a climate-only drought hazard index as an expression of impactful drought in the region, and (ii) an evaluation of the predictive utility of a set of indicators and formal statistical models combining these indicators, at various lead times. 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引用次数: 0
摘要
预见性行动(AA)是指在危机/影响发生之前及时采取知情行动,作为减轻包括干旱在内的极端气候灾害影响的一种方式,正在被越来越多地使用/推广。行动是在预测灾害发生及其影响的情况下启动的,取决于准备时间、影响的可能性以及开展此类行动的有效性和能力。启动行动的决定是在所谓的触发模型的支持下做出的,该模型预测了预期影响的可能性或程度。为了建立高效、可信的 AA 触发模型,需要在不同的准备时间对观测到的气候和环境条件、天气/季节预报以及表示当前部门和社会脆弱性的变量(统称为指标)与预期影响之间的关系进行定量评估。需要进行这些定量评估,以便(a) 避免过度重视(过度信任)非技术性指标;(b) 避免使用多个共同变化和相关的指标(过度强调它们对当前决策的共同重要性);(c) 为 AA 触发模型提供客观和可辩护的证据,从而增强对该模型的信心。菲律宾棉兰老岛地区周期性出现与干旱相关的粮食不安全问题,为改善目前粮农组织用于农业干旱的 AA 触发模型,本研究对一系列气候和环境指标进行了评估,并以此为基础开发了一个定量、客观的触发模型。分析的重点是(i) 评估使用纯气候干旱危害指数作为该地区有影响干旱的表达方式的有效性,以及 (ii) 评估在不同提前期的一系列指标和结合这些指标的正式统计模型的预测效用。我们表明,每个指标的预测效用因季节和提前期而异,凸显了触发模型的不同技能,因此主张将模型技能透明地纳入触发机制。
On the quantitative limits for triggering drought anticipatory actions in Mindanao, the Philippines
Anticipatory Action (AA), which involves timely and informed actions ahead of a crisis/impact, is increasingly being used/promoted as a way to mitigate the impacts of extreme climatic hazards, including droughts. Actions are initiated in anticipation of the occurrence of the hazard and its impacts, and depend on the lead time, likelihood of impact, as well as the effectiveness of, and the capacity to undertake such actions. A decision to initiate actions is taken with a support of the so-called trigger model that forecasts likelihood or magnitude of expected impact. To build efficient and credible AA trigger models, quantitative assessments of relationships between observed climate and environmental conditions, weather/seasonal forecasts, and variables expressing current sectoral and societal vulnerability (collectively referred to as indicators) and expected impacts, are required at varied lead times. These quantitative assessments are needed to: (a) avoid over-weighting (placing excessive trust in) non-skillful indicators; (b) avoid using several co-varying and correlated indicators (over-emphasising their collective importance for the decision at hand); and (c) provide objective and defensible evidence for and consequently confidence in the AA trigger model. Motivated by the need to improve the current AA trigger model used for agricultural drought by FAO in Mindanao, a region of the Philippines which experiences periodic drought-related food insecurity, this study evaluates a range of climate and environmental indicators as a basis for developing a quantitative, objective trigger model. The analyses focus on: (i) an evaluation of efficacy of using a climate-only drought hazard index as an expression of impactful drought in the region, and (ii) an evaluation of the predictive utility of a set of indicators and formal statistical models combining these indicators, at various lead times. We show that the predictive utility of each indicator varies by season and lead time, highlight the varying skill of the trigger model and consequently advocate for transparent inclusion of model skill in the trigger mechanism.