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Quantifying the impacts of pre-occurred ENSO signals on wheat yield variation using machine learning in Australia

机译:通过澳大利亚的机器学习量化预先发生的ENSO信号对小麦产量变化的影响

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Australia is one of the top wheat exporting countries in the world and the reliable prediction of wheat production plays a key role in ensuring regional and global food security. However, wheat yield in Australia is highly exposed to the impacts of climate variability, especially seasonal rainfall, as wheat is mostly grown in the drylands. Previous studies showed that El Nino Southern Oscillation (ENSO) has a strong influence on Australia's climate and found the ENSO-related phenomena have prognostic features for future climatic conditions. Therefore, we examined the predictability of state-scale variation in Australian wheat yields based on ENSO-related large-scale climate precursors using machine learning techniques. Here, we firstly established a set of random forest (RF, a machine learning method) models based on pre-occurred climate indices to forecast spring rainfall for the four major wheat producing states of Australia, the forecasted rainfall was then combined with selected precedent climate drivers to predict yield variations using another set of RF models for each state. We explored the most influential variables in determining spring rainfall and yield variation. We found that the first set of RF models accounted for 43-59% of the change in spring rainfall across the four states. By incorporating forecasted spring rainfall with selected ENSO climate indices, the RF model accounted for 33-66% of the variation in yield which was greater than the 22-50% of yield variations explained by ENSO-related indices alone. The results suggest that wheat yield variation at a state level could be reliably forecasted at lead-times of three months prior to the commencement of harvest. We also found that forecasted spring rainfall and precedent Southern Oscillation Index (SOI) in July were the most important factors in estimation of crop yield in the winter dominant rainfall states. ENSO climate indices are easy to obtain and can be rapidly used to drive the forecasting model. Therefore, we believe the proposed models for predicting wheat yield variations at three-month lead time would be helpful for state governments and policy makers to develop effective planning to reduce monetary loss and ensure food security.
机译:澳大利亚是世界上顶级小麦出口国之一,麦田生产的可靠预测在确保区域和全球粮食安全方面发挥着关键作用。然而,澳大利亚的小麦产量受到气候变异性,尤其是季节性降雨的影响,因为小麦大多在旱地种植。以前的研究表明,El Nino Southern振荡(ENSO)对澳大利亚的气候有很大影响,发现与未来气候条件有关的enso相关的现象。因此,我们研究了使用机器学习技术的基于Enso相关的大规模气候前驱体的澳大利亚小麦产量的状态规模变化的可预测性。在这里,我们首先建立了一套随机森林(RF,机器学习方法)模型,基于预先发生的气候指标,预测春季降雨量的澳大利亚四大小麦生产国,然后将预测降雨与选定的先例气候相结合驱动程序预测每个状态的另一组RF模型的产生变化。我们探讨了确定春季降雨和产量变异时最有影响力的变量。我们发现,第一组RF模型占四个州春季降雨量的43-59%。通过将预测的春天降雨与所选择的ENSO气候指标合并,RF模型占产量变化的33-66%,其占ENSO相关指数解释的22-50%的产量变化。结果表明,在收获开始前三个月的11个月的递增时间可以在州水平的小麦产量变异。我们还发现,7月份预测春季降雨和先例的南方振荡指数(SOI)是冬季占雨量州估算作物产量最重要的因素。 ENSO气候指数易于获得,可以迅速用于推动预测模型。因此,我们相信拟议的模型预测小麦产量变化的三个月的提前时间将有助于国家政府和决策者制定有效的计划,以减少货币损失并确保粮食安全。

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