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Stepwise extreme learning machine for statistical downscaling of daily maximum and minimum temperature

机译:逐步极端学习机,用于统计较最大和最小温度的统计尺寸

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Increasing temperature from climate change can bring a number of different risks such as more droughts and heat waves, and increasing sea level rise. Assessment of climate change with future scenarios is essential to adapt these impacts. To provide climate change information through the outputs of general circulation models at finer resolution, a reliable and accurate downscaling model has always been of great interest. Meeting this need, artificial neural network (ANN) has been commonly employed in downscaling for nonlinear models. Extreme learning machine (ELM), a recently developed ANN, is an efficient learning algorithm for generalized single hidden layer feedforward neural networks. In light of its simple learning algorithm, we introduced a useful approach to combine the stepwise feature selection method into ELM for temperature downscaling, as stepwise ELM (SWELM), since model complexity and computational time consumption of a traditional ANN impedes application of stepwise feature selection. This SWELM is able to identify the most influential predictors in a dataset and use them to train a nonlinear model while removing the irrelevant ones. The ELM and SWELM as well as regular ANN were tested in a simulation study. Results indicated that ELM even with randomness of weights and biases in the nodes of input and hidden layers better performed than did ANN. Also, SWELM presents a capability to select the influential predictors and remove the unrelated variables. A case study with downscaling temperature of Wisconsin, USA, showed that ELM was a comparable alternative to ANN. SWELM outperformed the ANN algorithm for temperature downscaling and sometimes predicted the temperature increase larger than did others for future scenarios. The current study of temperature downscaling with the statistical tool allows assessing the possible impacts of climate change in a local scale and some developing countries where sophisticate research cannot be eligible.
机译:气候变化中的温度越来越大,可能带来许多不同的风险,如更多的干旱和热浪,增加海平面上升。对未来情景的气候变化评估对于适应这些影响至关重要。为了通过更精细分辨率的通用循环模型的产出提供气候变化信息,可靠和准确的缩小模型一直非常兴趣。满足这种需求,人工神经网络(ANN)通常用于非线性模型的较低。最近发达的ANN的极端学习机(ELM)是一种高效的单一隐藏层前馈神经网络的高效学习算法。鉴于其简单的学习算法,我们介绍了一种有用的方法,将逐步特征选择方法与温度缩小的ELM组合成ELM,因为逐步榆树(SWELM),因为模型复杂性和传统ANN的计算时间消耗逐步特征选择的应用。此威尔管理能够识别数据集中最有影响力的预测器,并在删除不相关的时使用它们培训非线性模型。在模拟研究中测试了ELM和SWELM以及常规ANN。结果表明,ELM即使在输入和隐藏层的节点中的重量和偏差也比ANN更好地进行。此外,SWELM呈现了一种选择有影响力的预测器并删除不相关的变量。威斯康星州潜伏温度的案例研究表明,ELM是ANN的可比替代品。 SWELM优于温度较低的ANN算法,有时预测比其他方案更大的温度增加。目前利用统计工具的温度较低的研究允许评估气候变化在本地规模和一些发展中国家的可能影响,这些发展中国家无法符合资格。

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