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A comparative study of artificial neural networks, Bayesian neural networks and adaptive neuro-fuzzy inference system in groundwater level prediction

机译:人工神经网络,贝叶斯神经网络和自适应神经模糊推理系统在地下水位预测中的比较研究。

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Predictive modeling of hydrological time series is essential for groundwater resource development and management. Here, we examined the comparative merits and demerits of three modern soft computing techniques, namely, artificial neural networks (ANN) optimized by scaled conjugate gradient (SCG) (ANN.SCG), Bayesian neural networks (BNN) optimized by SCG (BNN.SCG) with evidence approximation and adaptive neuro-fuzzy inference system (ANFIS) in the predictive modeling of groundwater level fluctuations. As a first step of our analysis, a sensitivity analysis was carried out using automatic relevance determination scheme to examine the relative influence of each of the hydro-meteorological attributes on groundwater level fluctuations. Secondly, the result of stability analysis was studied by perturbing the underlying data sets with different levels of correlated red noise. Finally, guided by the ensuing theoretical experiments, the above techniques were applied to model the groundwater level fluctuation time series of six wells from a hard rock area of Dindigul in Southern India. We used four standard quantitative statistical measures to compare the robustness of the different models. These measures are (1) root mean square error, (2) reduction of error, (3) index of agreement (IA), and (4) Pearson's correlation coefficient (i?). Based on the above analyses, it is found that the ANFIS model performed better in modeling noise-free data than the BNN.SCG and ANN.SCG models. However, modeling of hydrological time series correlated with significant amount of red noise, the BNN.SCG models performed better than both the ANFIS and ANN.SCG models. Hence, appropriate care should be taken for selecting suitable methodology for modeling the complex and noisy hydrological time series. These results may be used to constrain the model of groundwater level fluctuations, which would in turn, facilitate the development and implementation of more effective sustainable groundwater management and planning strategies in semi-arid hard rock area of Dindigul, Southern India and alike.
机译:水文时间序列的预测模型对于地下水资源的开发和管理至关重要。在这里,我们研究了三种现代软计算技术的优缺点,分别是通过比例共轭梯度(SCG)优化的人工神经网络(ANN.SCG),通过SCG(BNN)优化的贝叶斯神经网络(BNN)。 SCG)和证据近似和自适应神经模糊推理系统(ANFIS)在地下水位波动的预测模型中。作为我们分析的第一步,我们使用自动相关性确定方案进行了敏感性分析,以检查每种水文气象属性对地下水位波动的相对影响。其次,通过对具有不同水平的相关红色噪声的基础数据集进行扰动来研究稳定性分析的结果。最后,在随后的理论实验的指导下,将上述技术应用于印度南部Dindigul硬岩地区的六口井的地下水位波动时间序列模型。我们使用四种标准的定量统计量度来比较不同模型的鲁棒性。这些度量是(1)均方根误差;(2)误差减少;(3)一致性指数(IA);以及(4)皮尔逊相关系数(i)。根据以上分析,发现ANFIS模型在建模无噪声数据方面比BNN.SCG和ANN.SCG模型表现更好。然而,水文时间序列的建模与大量的红色噪声有关,BNN.SCG模型的性能优于ANFIS和ANN.SCG模型。因此,应采取适当的措施选择适合的方法,以对复杂而嘈杂的水文时间序列进行建模。这些结果可用于约束地下水位波动模型,进而有助于在印度南部等地的半干旱硬岩地区开发和实施更有效的可持续地下水管理和规划策略。

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