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首页> 外文期刊>Journal of hydrologic engineering >Evaluation of Rule and Decision Tree Induction Algorithms for Generating Climate Change Scenarios for Temperature and Pan Evaporation on a Lake Basin
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Evaluation of Rule and Decision Tree Induction Algorithms for Generating Climate Change Scenarios for Temperature and Pan Evaporation on a Lake Basin

机译:基于规则和决策树归纳算法的湖盆温度和锅蒸发生成气候变化方案的评估

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摘要

Climate change scenarios generated by general circulation models (GCMs) have too coarse a spatial resolution to be useful in planning disaster risk reduction and climate change adaptation strategies at regional to river/lake basin scales. This paper investigates the performances of existing state-of-the-art rule induction and tree algorithms, namely, single conjunctive rule learner, decision table. M5P model tree, decision stump, and REPTree. Downscaling models are developed to obtain projections of mean monthly maximum and minimum temperatures (Tmax and Tmin) as well as pan evaporation to lake-basin scale in an arid region in India using these algorithms. The predictor variables, such as air temperature, zonal wind, meridional wind, and geo-potential height, are extracted from the National Centers for Environmental Prediction (NCEP) reanalysis data set for the period 1948-2000 and from the simulations using third-generation Canadian coupled global climate models for emission scenarios for the period 2001-2100. A simple multiplicative shift was used for correcting predictand values. The performances of various models have been evaluated on several statistical performance parameters such as correlation coefficient, mean absolute error, and root mean square error. The M5P model tree algorithm was found to yield better performance among all other learning techniques explored in the present study. An increasing trend is observed for Tmax and Tmin for emission scenarios, whereas no trend has been observed for pan evaporation in the future.
机译:由一般环流模型(GCM)产生的气候变化情景的空间分辨率太粗糙,无法在规划从区域到河流/湖泊流域尺度的减少灾害风险和适应气候变化的策略时使用。本文研究了现有的最新规则归纳和树算法(即单个联合规则学习器,决策表)的性能。 M5P模型树,决策树桩和REPTree。开发了降尺度模型,以使用这些算法来获得印度干旱地区月平均最高和最低温度(Tmax和Tmin)以及锅蒸发到湖盆规模的预测。预测变量(例如气温,纬向风,子午风和地势高度)是从1948-2000年期间的国家环境预测中心(NCEP)重新分析数据集以及使用第三代技术的模拟中提取的加拿大为2001-2100年期间的排放情景设计了全球气候模型。一个简单的乘法移位用于校正预测值。已对多个统计性能参数(如相关系数,平均绝对误差和均方根误差)评估了各种模型的性能。在本研究中探索的所有其他学习技术中,发现M5P模型树算法可产生更好的性能。对于排放情景,观察到Tmax和Tmin呈上升趋势,而将来没有观察到锅蒸发的趋势。

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