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A study of hold-out and k-fold cross validation for accuracy of groundwater modeling in tidal lowland reclamation using extreme learning machine

机译:应用极限学习机进行潮汐低地开垦中地下水建模精度的保留和k折交叉验证研究

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The accuracy of prediction is required to conduct modeling the groundwater flow. This research represents the application of extreme learning machine (ELM) that can be used to model the groundwater flow in tidal lowland reclamation. The accuracy is measured using the hold-out and k-fold cross validation methods. The study will be implemented in the Delta Telang I Lowlands area, Banyuasin District, South Sumatra Province. The results of this groundwater flow modeling shows that the accuracy using the k-fold cross validation is better than the hold-out method. The values of accuracy level of the results of simulation-1 for training are: MSE = 0.000042091 and MAPE = 0.3165%. The values of accuracy level of the results of simulation-1 for testing are: MSE = 0.000093083 and MAPE = 0.4006%.
机译:对地下水流进行建模需要预测的准确性。这项研究代表了极限学习机(ELM)的应用,可用于模拟潮汐低地开垦中的地下水流。使用保留和k倍交叉验证方法测量准确性。这项研究将在南苏门答腊省Banyuasin区的Delta Telang I低地地区进行。该地下水流模型的结果表明,使用k折交叉验证的准确性要优于保留方法。用于训练的模拟1结果的准确性级别的值为:MSE = 0.000042091,MAPE = 0.3165%。用于测试的模拟1结果的准确性级别的值是:MSE = 0.000093083和MAPE = 0.4006%。

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