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首页> 外文期刊>Water Resources Management >Development and Evaluation of Hybrid Artificial Neural Network Architectures for Modeling Spatio-Temporal Groundwater Fluctuations in a Complex Aquifer System
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Development and Evaluation of Hybrid Artificial Neural Network Architectures for Modeling Spatio-Temporal Groundwater Fluctuations in a Complex Aquifer System

机译:复杂含水层系统中时空地下水波动的混合人工神经网络架构的开发与评价

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摘要

The proper design, development, and appropriate tuning of the Hybrid Neural Network architecture, mainly for its parsimoniousity and optimal training can help practitioners to generate a robust predictive tool for modeling several important hydrological processes within the water resources sector. In this paper, the Feedforward Artificial Neural Network (FFANN) and the hybrid WANN model have been developed, and later, coupled with the Gamma and M-tests (GT) approach for forecasting spatio-temporal groundwater fluctuations in a complex alluvial aquifer system. The performance of these hybrid models were evaluated using goodness-of-fit criteria. An analysis of the modeling results indicates that the GT coupled with the WANN model was able to provide significantly improved results, with lower values of the root mean square error (RMSE) and higher values of the NSE metric for the 1-week and 3-week lead times. Hence, utilizing this hybrid model, the groundwater level prediction tests were extended for 6-week and 12-week lead times with the GT approach, coupled with the WANN hybrid model only. The results showed that the accuracy of the GT-WANN hybrid model was better for the unconfined aquifer system compared to the leaky confined aquifer system. Furthermore, the present study also examined the interdependence between different model inputs and output variables for the selected study sites by means of the Wavelet Coherent Analysis (WCA). These results indicated that all the model's input variables have a significant effect on the groundwater level of unconfined aquifers, and confirmed the nature of the aquifers tapped within the present study sites. The study finally concludes that the GT-WANN approach can be a robust predictive tool for modeling spatio-temporal fluctuations of groundwater levels.
机译:混合神经网络架构的适当的设计,开发和适当调整,主要针对其Parsimiousity和最佳培训,可以帮助从业人员生成强大的预测工具,用于在水资源部门内建模几个重要的水文过程。在本文中,已经开发了前馈人工神经网络(FFANN)和杂交WANN模型,并且后来与伽马和M-TESTS(GT)方法相结合,用于预测复杂的冲积含水层系统中的时空地下水波动。使用拟合良好标准评估这些混合模型的性能。对建模结果的分析表明,GT与WANN模型耦合的GT能够提供显着改善的结果,其根均线误差(RMSE)的较低值和1周和3的NSE度量的更高值。周交货时间。因此,利用该混合模型,地下水位预测试验延长了6周和12周的11周,其GT方法仅与Wann混合模型相结合。结果表明,与泄漏限制含水层系统相比,GT-WANN杂交模型的准确性更好地为无凝固的含水层系统。此外,本研究还通过小波相干分析(WCA)检查所选研究站点的不同模型输入和输出变量之间的相互依存。这些结果表明,所有模型的输入变量都对非整合含水层的地下水位具有显着影响,并确认了在本研究网站内删除的含水层的性质。该研究最终得出结论,GT-WANN方法可以是用于建模地下水位水平的时空波动的强大预测工具。

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