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首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Least square support vector and multi-linear regression for statistically downscaling general circulation model outputs to catchment streamflows
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Least square support vector and multi-linear regression for statistically downscaling general circulation model outputs to catchment streamflows

机译:最小二乘支持向量和多元线性回归,用于将常规环流模型的输出统计缩减至集水流

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摘要

This study employed least square support vector machine regression (LS-SVM-R) and multi-linear regression (MLR) for statistically downscaling monthly general circulation model (GCM) outputs directly to monthly catchment streamflows. The scope of the study was limited to calibration and validation of the downscaling models. The methodology was demonstrated by its application to a streamflow site in the Grampian water supply system in northwestern Victoria, Australia. Probable predictors for the study were selected from the National Center for Environmental Prediction/National Center for Atmospheric Research (NCEP/NCAR) reanalysis data set based on the past literature and hydrology. Probable variables that displayed the best significant correlations, consistently with the streamflows over the entire period of the study (1950-2010) and under three 20-year time slices (1950-1969, 1970-1989 and 1990-2010) were selected as potential predictors. To better capture seasonal variations of streamflows, downscaling models were developed for each calendar month. The standardized potential predictors were introduced to the LS-SVM-R and MLR models, starting from the best correlated three and then, others one by one, based on their correlations with the streamflows, until the model performance in validation was maximized. This stepwise model development enabled the identification of the optimum number of potential variables for each month. The model calibration was performed over the period 1950-1989 and validation was done for 1990-2010. LS-SVM-R model parameter optimization was achieved using simplex algorithm and leave-one-out cross-validation. The MLR models were optimized by minimizing the sum of squared errors. In both modelling techniques, validation was performed as an independent simulation. In calibration, LS-SVM-R and MLR models displayed equally good performances with a trend of under-predicting high flows. During validation, LS-SVM-R outperformed MLR, though both techniques over-predicted most of the streamflows. It was concluded that LS-SVM-R is a better technique for statistically downscaling GCM outputs to streamflows than MLR, but still MLR is a potential technique for the same task.
机译:这项研究采用了最小二乘支持向量机回归(LS-SVM-R)和多线性回归(MLR),以将按比例缩小的每月总环流模型(GCM)的统计结果直接缩减为每月集水量。研究范围仅限于缩小模型的校准和验证。该方法通过在澳大利亚西北维多利亚的格兰屏供水系统中的水流站点的应用得到了证明。根据过去的文献和水文学,从国家环境预测中心/国家大气研究中心(NCEP / NCAR)重新分析数据集中选择了可能的研究预测指标。与整个研究期间(1950-2010年)和三个20年时间段(1950-1969年,1970-1989年和1990-2010年)的流量一致的,显示最佳显着相关性的可能变量被选为潜在预测变量。为了更好地捕获流量的季节性变化,针对每个日历月开发了缩减模型。将标准化的潜在预测变量引入到LS-SVM-R和MLR模型中,从它们之间的相关性最好的三个变量开始,然后根据它们与流量的相关性,一个一个地逐个地传播,直到使模型的验证性能最大化。通过逐步开发模型,可以确定每个月潜在变量的最佳数量。在1950年至1989年进行模型校准,并在1990年至2010年进行验证。 LS-SVM-R模型参数优化是通过单纯形算法和留一法交叉验证实现的。通过最小化平方误差之和来优化MLR模型。在这两种建模技术中,验证都是作为独立的模拟进行的。在校准过程中,LS-SVM-R和MLR模型表现出同样出色的性能,但低流量的趋势有所预测。在验证期间,尽管两种技术都高估了大多数流,但LS-SVM-R的表现优于MLR。结论是,与MLR相比,LS-SVM-R是一种将GCM输出按统计比例缩减为流的更好的技术,但是MLR仍然是完成同一任务的潜在技术。

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