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Modeling Daily Reference Evapotranspiration from Climate Variables: Assessment of Bagging and Boosting Regression Approaches

机译:气候变量的每日参考蒸散建模:袋装和提升回归方法的评估

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Abstract The increasing frequency of droughts and floods due to climate change has severely affected water resources across the globe in recent years. An optimal design for the scheduling and management of irrigation is thus urgently needed to adapt agricultural activities to the changing climate. The accurate estimation of reference crop evapotranspiration (ET0), a vital hydrological component of the water balance and crop water need, is a tiresome task if all the relevant climatic variables are unavailable. This study investigates the potential of four ensemble techniques for estimating precise values of the daily ET0 at representative stations in 10 agro-climatic zones in the state of Karnataka, India, from 1979 to 2014. The performance of these models was evaluated by using several combinations of climatic variables as inputs by using tenfold cross-validation. The outcomes indicated that predictions of ET0 by all four ensemble models based on all climatic variables were the most accurate in comparison with other input combinations. The random forest regressor was found to deliver the best performance among the four models on all measures considered (Nash–Sutcliffe efficiency, 1.0, root-mean-squared error, 0.016?mm/day, and mean absolute error, 0.011?mm/day). However, it incurred the highest computational cost, whereas the computational cost of the bagging model for linear regression was the lowest. The extreme gradient-boosting model delivered the most stable performance with a modified training dataset. The work here shows that these models can be recommended for daily ET0 estimation based on the users’ interests.
机译:摘要 近年来,气候变化导致的干旱和洪涝灾害频发日益频繁,严重影响了全球水资源。因此,迫切需要对灌溉的调度和管理进行优化设计,以使农业活动适应不断变化的气候。如果无法获得所有相关的气候变量,那么准确估计参考作物蒸散量(ET0)是水平衡和作物需水量的重要组成部分,是一项繁琐的任务。本研究调查了 1979 年至 2014 年印度卡纳塔克邦 10 个农业气候带代表性站点的四种集合技术在估计日ET0 精确值的潜力。通过使用十倍交叉验证,使用气候变量的几种组合作为输入来评估这些模型的性能。结果表明,与其他输入组合相比,基于所有气候变量的4个集合模式对ET0的预测最为准确。在所考虑的所有指标(Nash-Sutcliffe效率,1.0,均方根误差,0.016?mm/天,平均绝对误差,0.011?mm/天)中,随机森林回归器在四个模型中提供了最佳性能。然而,它产生的计算成本最高,而线性回归的袋装模型的计算成本最低。极端梯度提升模型通过修改后的训练数据集提供了最稳定的性能。这里的研究表明,这些模型可以根据用户的兴趣推荐用于每日 ET0 估计。

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