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Evaluation Research of Groundwater Resources Based on Artificial Neural Networks in the Sanjiang Plain

机译:基于人工神经网络的三江平原地下水资源评价研究。

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Replacing Least Squares Method by Real coding based Accelerating Genetic Algorithm (RAGA), the parameters of time response function in the GM (1, 1) Model are optimized. Combined with BP Artificial Neural Networks Model, the Equa ldimension Gray Filling BP Neural Networks Model Based on RAGA is established. By this model, predicted the groundwater depth of Chuangye farm in Sanjiang Plain. The structural of BP Neural Networks is 3 : 12 : 3. The relative error is only 2.33%. Comparing with the traditional GM (1, 1) Model or BP Neural Networks Model, the precision is highly increased. The result shows that the groundwater deep will descend 0.3m in average annually in the area from 2007 to 2012.
机译:通过基于实数编码的加速遗传算法(RAGA)替代最小二乘法,对GM(1,1)模型中的时间响应函数参数进行了优化。结合BP人工神经网络模型,建立了基于RAGA的等维灰填充BP神经网络模型。利用该模型,预测了三江平原创业农场的地下水深度。 BP神经网络的结构为3:12:3。相对误差仅为2.33%。与传统的GM(1,1)模型或BP神经网络模型相比,精度得到了大大提高。结果表明,从2007年到2012年,该地区的地下水深度平均每年下降0.3m。

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