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Application of Back-Propagation Artificial Neural Network Models for Prediction of Groundwater Levels: Case study in Western Jilin Province, China

机译:背部繁殖人工神经网络模型在地下水位预测中的应用 - 吉林西部案例研究

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Evaluation and forecast of groundwater levels through specific model helps in forecasting of groundwater resources. Among the different robust tools available, the Back-Propagation Artificial Neural Network (BPANN) model is commonly used to empirically forecast hydrological variables. Here, we discuss the modeling process and accuracy of this method based on the Root Mean Squared Error (RMSE), the Mean Absolute Error (MAE) and coefficient of efficiency (R{sup}2). The and and semi-arid areas of western Jilin province (China) were chosen as study area owing to the decline of groundwater levels during the past decade mainly due to overexploitation. The simulations results indicated that BPANN is accurate in reproducing (fitting) and forecasting the groundwater levels time series based on the R{sup}2 are 0.97 and 0.74, respectively. The RMSE, MAE for BPANN model in the predicting stage are 0.08, 0.066, respectively. It is evident that the BPANN is able to predict the groundwater levels reasonable well.
机译:通过特定模型的地下水位评估和预测有助于地下水资源预测。在可用的不同鲁棒工具中,反向传播人工神经网络(BPANN)模型通常用于经验预测水文变量。这里,我们讨论了基于根均方误差(RMSE),平均绝对误差(MAE)和效率系数(R {SUP} 2)的模拟过程和准确性。由于过去十年的地下水位下降主要是由于过度开采,所选择的吉林省西部(中国)的和半干旱地区被选为研究领域。模拟结果表明,BPANN在再现(配件)方面是准确的,并预测基于R {SUP} 2的地下水位时间序列分别为0.97和0.74。预测阶段的BPANN模型的RMSE,MAE分别为0.08,0.066。很明显,BPANN能够预测地下水位合理良好。

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