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Support vector regression with reduced training sets for air temperature prediction: a comparison with artificial neural networks

机译:支持向量回归和减少训练集的气温预测:与人工神经网络的比较

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Sudden changes in weather, in particular extreme temperatures, can result in increased energy expenditures, depleted agricultural resources, and even loss of life. However, these ill effects can be reduced with accurate air temperature predictions that provide adequate advance warning. Support vector regression (SVR) was applied to meteorological data collected across the state of Georgia in order to produce short-term air temperature predictions. A method was proposed for reducing the number of training patterns of massively large data sets that does not require lengthy pre-processing of the data. This method was demonstrated on two large data sets: one containing 300,000 cold-weather training patterns collected during the winter months and one containing 1.25 million training patterns collected throughout the year. These patterns were used to produce predictions from 1 to 12 h ahead. The mean absolute error (MAE) for the evaluation set of winter-only patterns ranged from 0.514°C for the 1-h prediction horizon to 2.303°C for the 12-h prediction horizon. For the evaluation set of year-round patterns, the MAE ranged from 0.513°C for the 1-h prediction horizon to 1.922°C for the 12-h prediction horizon. These results were competitive with previously developed artificial neural network (ANN) models that were trained on the full data sets. For the winter-only evaluation data, the SVR models were slightly more accurate than the ANN models for all twelve of the prediction horizons. For the year-round evaluation data, the SVR models were slightly more accurate than the ANN models for three of the twelve prediction horizons.
机译:天气的突然变化,特别是极端温度的变化,可能导致能源支出增加,农业资源枯竭甚至生命损失。但是,可以通过提供足够的提前警告的准确空气温度预测来减少这些不良影响。支持向量回归(SVR)被应用于整个佐治亚州收集的气象数据,以产生短期气温预测。提出了一种减少大规模数据集训练模式数量的方法,该方法不需要冗长的数据预处理。这种方法在两个大型数据集上得到了证明:一个包含冬季冬季收集的300,000种寒冷天气训练模式,另一个包含全年收集的125万训练模式。这些模式用于产生从1到12小时的预测。仅冬季模式评估集的平均绝对误差(MAE)范围从1小时预测范围的0.514°C到12小时预测范围的2.303°C。对于全年模式的评估集,MAE范围从1小时预测范围的0.513°C到12小时预测范围的1.922°C。这些结果与以前开发的人工神经网络(ANN)模型(在完整数据集上进行训练)相比具有竞争力。对于仅冬季评估数据,对于所有十二个预测范围,SVR模型都比ANN模型更准确。对于全年评估数据,对于十二个预测范围中的三个,SVR模型比ANN模型更准确。

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