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首页> 外文期刊>Proceedings >The Use of Stochastic Models for Short-Term Prediction of Water Parameters of the Thesaurus Dam, River Nestos, Greece
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The Use of Stochastic Models for Short-Term Prediction of Water Parameters of the Thesaurus Dam, River Nestos, Greece

机译:随机模型在希腊内斯托斯河词库大坝水参数短期预测中的应用

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摘要

The scope of this paper is to evaluate the short-term predictive capacity of the stochastic models ARIMA, Transfer Function (TF) and Artificial Neural Networks for water parameters, specifically for 1, 2 and 3 steps forward (m = 1, 2 and 3). The comparison of statistical parameters indicated that ARIMA models could be proposed as short-term prediction models. In some cases that TF models resulted in better predictions, the difference with ARIMA was minimal and since the latter are simpler in their construction, they are proposed for short-term prediction. Artificial Neural Networks didna??t show a good short-term predictive capacity in comparison with the aforementioned models.
机译:本文的范围是评估随机模型ARIMA,传递函数(TF)和人工神经网络对水参数的短期预测能力,特别是针对前进1、2和3步(m = 1、2和3) )。统计参数的比较表明,ARIMA模型可以作为短期预测模型提出。在某些情况下,TF模型可带来更好的预测,与ARIMA的差异很小,并且由于后者的构造更简单,因此建议将其用于短期预测。与上述模型相比,人工神经网络没有显示出良好的短期预测能力。

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