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Development of a robust ensemble meta-model for prediction of salinity time series under uncertainty (case study: Talar aquifer)

机译:在不确定度下的盐度时间序列预测的强大合奏元模型的开发(案例研究:TALAR AQUIFIR)

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摘要

The aim of this study is to develop an accurate and reliable numerical model of the coastal Talar aquifer threatened by seawater intrusion by developing an ensemble meta-model (MM). In comparison with previous methodologies, the developed model has the following superiority: (1) Its performance is enhanced by developing ensemble MMs using four different meta-modelling frameworks, i.e., artificial neural network, support vector regression, radial basis function, genetic programing and evolutionary polynomial regression; (2) The accuracy of different MMs based on 16 integration of four meta-modeling frameworks is compared; and (3) the effect of aquifer heterogeneity on the MM. The performance of the proposed MM was assessed using an illustrative case aquifer subject to seawater intrusion. The obtained results indicate that the ensemble MM that combines all four meta-modeling frameworks outperformed the GP and ANN models, with a correlation coefficient of 0.98. Moreover, the proposed MM using nonlinear-learning ensemble of SVR-EPR achieves a better and robust forecasting performance. Therefore, it can be considered as an accurate and robust simulator to predict salinity levels under different abstraction patterns in variable density flow. The result of uncertainty analyses reveals that robustness value and pumping rate are inversely proportional and scenarios with a robustness measure of about 12% are more reliable.
机译:本研究的目的是通过开发合并元模型(MM)开发由海水入侵威胁的沿海塔拉尔含水层的准确且可靠的数值模型。与先前的方法相比,开发模型具有以下优势:(1)使用四种不同的元建模框架,即人工神经网络,支持向量回归,径向基函数,遗传编程和遗传编程和遗传编程和遗传编程和遗传编程和遗传编程和遗传编程,通过开发集合MMS来增强其性能。进化多项式回归; (2)比较了基于16个元建模框架的16个集成的不同MMS的准确性; (3)含水层异质性对MM的影响。使用经过海水侵入的说明性含水层评估所提出的MM的性能。所得结果表明,组合所有四个元建模框架的集合MM优于GP和ANN模型,其相关系数为0.98。此外,使用SVR-EPR的非线性学习集合的所提出的MM实现了更好且稳健的预测性能。因此,它可以被认为是准确且坚固的模拟器,以在可变密度流中的不同抽象模式下预测盐度水平。不确定性分析的结果揭示了鲁棒性值和泵送率是成反比的,具有约12%的鲁棒性度量的情景更可靠。

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