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Predicting the Effects of Climate Change on Water Temperatures of Roode Elsberg Dam Using Nonparametric Machine Learning Models

机译:使用非参数机学习模型预测气候变化对Roode Elsberg水坝水温的影响

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A nonparametric machine learning model was used to study the behaviour of the variables of a concrete arch dam: Roode Elsberg dam. The variables used were ambient temperature, water temperatures, and water level. Water temperature was measured using twelve thermometers; six thermometers were on each flank of the dam. The thermometers were placed in pairs on different levels: avg6 (avg6-R and avg6-L) and avg5 (avg5-R and avg5-L) were on level 47.43 m, avg4 (avg4-R and avg4-L) and avg3 (avg3-R and avg3-L) were on level 43.62 m, and avg2 (avg2-R and avg2-L) and avg1 (avg1-R and avg1-L) were on level 26.23 m. Four neural networks and four random forests were cross-validated to determine their best-performing hyperparameters with the water temperature data. Quantile random forest was the best performer at mtry 7 (Number of variables randomly sampled as candidates at each split) and RMSE (Root mean square error) of 0.0015, therefore it was used for making predictions. The predictions were made using two cases of water level: recorded water level and full dam steady-state at Representative Concentration Pathway (RCP) 4.5 (hot and cold model) and RCP 8.5 (hot and cold model). Ambient temperature increased on average by 1.6 °C for the period 2012–2053 when using recorded water level; this led to increases in water temperature of 0.9 °C, 0.8 °C, and 0.4 °C for avg6-R, avg3-R, and avg1-R, respectively, for the period 2012–2053. The same average temperature increase led to average increases of 0.7 °C for avg6-R, 0.6 °C for avg3-R, and 0.3 °C for avg1-R for a full dam steady-state for the period 2012–2053.
机译:非参数机学习模型用于研究混凝土拱坝的变量的行为:Roode Elsberg Dam。使用的变量是环境温度,水温和水位。使用12个温度计测量水温;每个伏特的六个温度计六个温度计。将温度计成对置于不同水平上:AVG6(AVG6-R和AVG6-L)和AVG5(AVG5-R和AVG5-L)均采用47.43M,AVG4(AVG4-R和AVG4-L)和AVG3( AVG3-R和AVG3-L)在43.62μm等级上,AVG2(AVG2-R和AVG2-L)和AVG1(AVG1-R和AVG1-L)均采用26.23米。四个神经网络和四个随机森林被交叉验证,以确定其具有水温数据的最佳性能的超参数。 Smastile随机森林是MTRY 7的最佳表现者(随着每个分裂的候选者随机采样的变量数),并且RMSE(均方误差)为0.0015,因此它用于制作预测。使用两种水位案例进行预测:代表浓度途径(RCP)4.5(热冷模型)和RCP 8.5(冷热模型)的记录水位和全坝稳态。在使用记录水位时,环境温度平均增加1.6°C;这导致在2012-2053期间的水温0.9℃,0.8℃和0.4°C的水温增加,为AVG6-R,AVG3-R和AVG1-R。对于AVG6-R,0.6℃,AVG3-R,0.3°C,对于AVG1-R的平均值增加,平均增加为0.7℃,对于2012 - 2053期间的全坝稳态,为0.3℃。

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