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Comparison of FFNN and ANFIS models for estimating groundwater level

机译:FFNN和ANFIS模型用于估算地下水位的比较

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摘要

Prediction of water level is an important task for groundwater planning and management when the water balance consistently tends toward negative values. In Maheshwaram watershed situated in the Ranga Reddy District of Andhra Pradesh, groundwater is overexploited, and groundwater resources management requires complete understanding of the dynamic nature of groundwater flow. Yet, the dynamic nature of groundwater flow is continually changing in response to human and climatic stresses, and the groundwater system is too intricate, involving many nonlinear and uncertain factors. Artificial neural network (ANN) models are introduced into groundwater science as a powerful, flexible, statistical modeling technique to address complex pattern recognition problems. This study presents the comparison of two methods, i.e., feed-forward neural network (FFNN) trained with Levenberg-Marquardt (LM) algorithm compared with a fuzzy logic adaptive network-based fuzzy inference system (ANFIS) model for better accuracy of the estimation of the groundwater levels of the Maheshwaram watershed. The statistical indices used in the analysis were the root mean square error (RMSE), regression coefficient (R~2) and error variation (EV).The results show that FFNN-LM and ANFIS models provide better accuracy (RMSE = 4.45 and 4.94, respectively, R~2 is 93% for both models) for estimating ground-water levels well in advance for the above location.
机译:当水平衡持续趋于负值时,水位的预测是地下水规划和管理的重要任务。在安得拉邦Ranga Reddy区的Maheshwaram分水岭,地下水被过度开发,地下水资源管理需要完全了解地下水流动的动态特性。然而,地下水流的动态性质不断响应人类和气候压力而变化,地下水系统过于复杂,涉及许多非线性和不确定因素。人工神经网络(ANN)模型作为一种强大,灵活的统计建模技术被引入地下水科学领域,以解决复杂的模式识别问题。这项研究提出了两种方法的比较,即使用Levenberg-Marquardt(LM)算法训练的前馈神经网络(FFNN)与基于模糊逻辑自适应网络的模糊推理系统(ANFIS)模型进行比较,以提高估计的准确性Maheshwaram流域的地下水位。分析中使用的统计指标是均方根误差(RMSE),回归系数(R〜2)和误差变化(EV),结果表明FFNN-LM和ANFIS模型提供了更好的准确性(RMSE = 4.45和4.94 ,两个模型的R〜2分别为93%),以便提前估算上述位置的地下水位。

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