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Long lead rainfall forecasts for the Australian sugar industry

机译:澳大利亚制糖业的长期铅降雨预测

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摘要

Rainfall variability is a crucial element that impinges on the success of sugarcane growing regions around the world. As the scientific community and industry personnel gain more experience at working participatively, the ability of long-range rainfall forecasts to reduce the risk and uncertainty associated with decisions impacted by rainfall variability has become increasingly recognized. Some important decisions, however, require knowing the chances of rain at early lead times that span the austral autumn period. These types of decisions remain largely unassisted by climate forecasting technologies owing to the boreal spring (austral autumn) persistence barrier. Taking the Australian sugar industry as a case study example, this article explores the capability of a long lead statistical El Ni (n) over tildeo Southern Oscillation phenomenon (ENSO) prediction model to reduce the risk associated with decisions that must be made before autumn and are effected by rainfall anomalies post-autumn. Results shown across all regions considered in this study indicated a higher risk of obtaining an above-median rainfall index when the statistical model predicted La Ni (n) over tildea type conditions to emerge post-spring. For selected regions, this risk was reduced when the model predicted El Ni (n) over tildeo type conditions for the same period. In addition, the model would have provided an earlier indication of the likelihood of disruption due to wet harvest conditions in a year that devastated the Australian sugar industry. This benchmark study has highlighted the potential of an ENSO prediction model to aid industry decisions that have previously been made in isolation of probabilistic knowledge about future rainfall conditions. Copyright (C) 2007 Royal Meteorological Society.
机译:降雨多变性是影响全球甘蔗种植区成功的关键因素。随着科学界和行业人员在参与性工作方面积累了更多的经验,远程降雨预报能够减少与降雨变异性影响的决策相关的风险和不确定性的能力已得到越来越多的认可。但是,一些重要的决定需要了解整个秋季的提前交货期下雨的机会。由于寒冬(秋季)的持久性障碍,这些类型的决策在很大程度上仍未得到气候预测技术的帮助。以澳大利亚的制糖业为例,本文探讨了长期领先的统计El Ni(n)对tildeo南方涛动现象(ENSO)预测模型的能力,以降低与秋季和秋季之前必须做出的决策相关的风险。受秋季后降雨异常的影响。在本研究中考虑的所有区域显示的结果表明,当统计模型预测在蒂尔德类型条件下的La Ni(n)在春季后出现时,获得高于中值降雨指数的风险更高。对于选定的区域,当模型在相同时期内在波浪型条件下预测El Ni(n)时,降低了这种风险。此外,该模型将提供较早的迹象,表明在一年的潮湿采收条件下破坏澳大利亚制糖业的可能性。这项基准研究突出了ENSO预测模型在帮助行业决策方面的潜力,该决策以前是通过隔离有关未来降雨条件的概率知识来做出的。皇家气象学会(C)2007。

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