基于GCA-CG的塔里木河下游地下水位不确定预测

Yue Chen, Yuhong Li
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引用次数: 0

摘要

众所周知,虽然神经网络和其他一些所谓的人工智能方法始终提供最小的不确定性和不同的中值,但对于地下水位没有统一的预测方法。本文以塔里木河下游为研究区,提出了一种基于灰色关联分析和云发生器(GCA-CG)的地下水位预测模型。该模型最大的特点是考虑了观测数据的不确定性。首先,基于GCA理论,选取地下水水位最重要的影响指标;然后,将知识推理中的CG应用于地下水位预测。最后,利用历史观测资料进行了数值试验,验证了所建地下水位预测模型的拟合精度:输水前为91.09%,输水后为87.84%。从理论基础和实验结果可以看出,该模型可以广泛应用于其他不确定系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GCA-CG Based Groundwater Level Prediction with Uncertainty in Lower Reaches of Tarim River
It is well known that no uniform prediction approaches were obtained regarding ground water level, though the neural network and some other so-called artificial intelligence methods consistently provide the smallest uncertainty and different medians warranting further research on their abilities. In the present paper, the lower reaches of Tarim River is taken as the study area, a grey correlation analysis and cloud generator (GCA-CG) based groundwater level prediction model is proposed. The most important characteristic feature of the novel model is that the observation data with uncertainty is taken into consideration. First of all, based on the GCA theory, the most important influencing indicator of groundwater level is selected. And then, the CG of knowledge reasoning is applied to predict the groundwater level. Finally, a numerical experiment based on the historical observation data is performed to verify the presented ground water level prediction model, which shows us that the fitting precision is 91.09% before water transportation and 87.84% after the water transportation. From the theoretic foundation and experiment results, we can see that the model could be widely used in other systems with uncertainty.
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