In this research, a functional time series model was introduced to predict future realizations of river flow time series. The proposed model was constructed based on a functional time series's correlated lags and the essential exogenous climate variables. Rainfall, temperature, and evaporation variables were hypothesized to have substantial functionality in river flow simulation. Because an actual time series model is unspecified and the input variables' significance for the learning process is unknown in practice, it was employed a variable selection procedure to determine only the significant variables for the model. A nonparametric bootstrap model was also proposed to investigate predictions' uncertainty and construct pointwise prediction intervals for the river flow curve time series. Historical datasets at three meteorological stations (Mosul, Baghdad, and Kut) located in the semi-arid region, Iraq, were used for model development. The prediction performance of the proposed model was validated against existing functional and traditional time series models. The numerical analyses revealed that the proposed model provides competitive or even better performance than the benchmark models. Also, the incorporated exogenous climate variables have substantially improved the modeling predictability performance. Overall, the proposed model indicated a reliable methodology for modeling river flow within the semi-arid region.
翻译:在这一研究中,采用了一个功能时间序列模型来预测河流流时间序列的未来实现情况;提议的模型是根据功能时间序列的相关时间差和基本外在气候变量构建的;雨量、温度和蒸发变量被假定为在河流流模拟中具有实质性功能;由于实际时间序列模型没有具体指明,输入变量对学习过程的意义在实践中并不为人所知,因此采用了一个变量选择程序,仅确定模型的重要变量;还提议了一个非参数靴子捕捉模型,以调查预测的不确定性,并为河流曲线时间序列建立点性预测间隔;位于伊拉克半干旱地区的三个气象站(摩苏尔、巴格达和库特)的历史数据集用于模型开发;拟议的模型的预测性能与现有的功能和传统时间序列模型相比得到了验证;数字分析表明,拟议的模型提供了比基准模型更具有竞争力或更好的性能;此外,纳入的外源气候变量大大改进了模型的可预测性性能。总体而言,拟议的模型显示半干旱地区内河流的可靠方法。