首页> 外文会议>Annual Conference of the Australian Society of Sugar Cane Technologists >A STATISTICAL APPROACH FOR IDENTIFYING IMPORTANT CLIMATIC INFLUENCES ON SUGARCANE YIELDS
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A STATISTICAL APPROACH FOR IDENTIFYING IMPORTANT CLIMATIC INFLUENCES ON SUGARCANE YIELDS

机译:一种鉴定甘蔗产量的重要气候影响的统计方法

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Interannual climate variability impacts sugarcane yields. Local climate data such as daily rainfall, temperature and radiation were used to describe yields collected from three locations-Victoria sugar mill (1951-1999), Bundaberg averaged across all mills (1951-2010) and Condong sugar mill (1965-2013). Three regression methods, which have their own inbuilt variable selection process were investigated. These methods were (i) stepwise regression, (ii) regression trees and (iii) random forests. Althoughthere was evidence of overlap, the variables that were considered most important for explaining yields by the stepwise regressions were not always consistent with the variables considered most important by the regression trees. The stepwise regression models for Bundaberg and Condong delivered a model that was difficult to explain biophysically, whereas the regression trees offered a much more intuitive and simpler model that explained similar levels of variation in yields to the stepwise regression method. The random forest approach, which extends on the regression tree algorithm generated a variable importance list which overcomes model sensitivities caused by sampling variability, thereby making it easier to identify important variables that explain yield.The variable importance list for Victoria indicated that maximum temperature (February-April), radiation (January-March) and rainfall (July-October) were important predictors for explaining yields. For Bundaberg, emphasis clearly centred on rainfall, particularly for the period January to April. Interestingly, the random forest model did not rate rainfall highly as a predictor for Condong. Here the model favoured radiation (February to April), minimum temperature (March-April) and maximum temperature (January to April). Improved understanding of influential climate variables will help improve regional yield forecasts and decisions that rely on accurate and timely yield forecasts.
机译:依赖性气候变异性影响甘蔗产量。局部气候数据如每日降雨,温度和辐射,用于描述从三个地点 - 维多利亚糖厂(1951-1999),围绕所有轧机(1951-2010)和Condong Sugher Mill(1965-2013)的Bundaberg所收集的产量。研究了三种回归方法,其中具有自己的内置变量选择过程。这些方法是(i)逐步回归,(ii)回归树和(iii)随机森林。虽然是重叠的证据,所认为最重要的是通过逐步回归解释产量的变量并不总是与回归树最为重要的变量一致。 Bundaberg和Condong的逐步回归模型提供了一种难以解释的模型,而回归树提供了更直观和更简单的模型,该模型可以解释对逐步回归方法的相似变化水平。在回归树算法上扩展的随机森林方法产生了一种可变的重要列表,克服了通过采样可变性引起的模型敏感性,从而更容易识别解释产量的重要变量。维多利亚的可变重要性列表表明了最高温度(2月-april),辐射(1月至3月)和降雨(7月至10月)是解释产量的重要预测因素。对于Bundaberg,强调明确以降雨为中心,特别是在1月至4月的期间。有趣的是,随机森林模型并没有降雨量高度降雨,这是一种钢结构的预测因素。这里的型号赞成辐射(2月至4月),最低温度(4月)和最高温度(1月至4月)。改善对影响力的气候变量的理解将有助于改善依赖准确和及时的收益预测的区域产量预测和决策。

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