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Self-optimizer data-mining method for aquifer level prediction

机译:用于含水层级预测的自优化器数据挖掘方法

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摘要

Groundwater management requires accurate methods for simulating and predicting groundwater processes. Data-based methods can be applied to serve this purpose. Support vector regression (SVR) is a novel and powerful data-based method for predicting time series. This study proposes the genetic algorithm (GA)–SVR hybrid algorithm that combines the GA for parameter calibration and the SVR method for the simulation and prediction of groundwater levels. The GA–SVR algorithm is applied to three observation wells in the Karaj plain aquifer, a strategic water source for municipal water supply in Iran. The GA–SVR's groundwater-level predictions were compared to those from genetic programming (GP). Results show that the randomized approach of GA–SVR prediction yields R ~(2)values ranging between 0.88 and 0.995, and root mean square error ( RMSE ) values ranging between 0.13 and 0.258 m, which indicates better groundwater-level predictive skill of GA-SVR compared to GP, whose R ~(2)and RMSE values range between 0.48–0.91 and 0.15–0.44 m, respectively.
机译:地下水管理需要准确的方法模拟和预测地下水过程。可以应用基于数据的方法来提供此目的。支持向量回归(SVR)是一种用于预测时间序列的新型和强大的基于数据的方法。本研究提出了结合GA的遗传算法(GA)-SVR混合算法,用于参数校准和用于地下水位的模拟和预测的SVR方法。 GA-SVR算法应用于Karaj Plane Aquifer中的三个观察井,是伊朗市政供水的战略水源。将GA-SVR的地下水位预测与来自遗传编程(GP)的地下水位预测进行了比较。结果表明,GA-SVR预测的随机方法产生R〜(2)值,范围为0.88和0.995,均为0.13和0.258米之间的根均方误差(RMSE)值,表示GA的更好地下水位预测技能-SVR与GP相比,其R〜(2)和RMSE值分别在0.48-0.91和0.15-0.44 m之间。

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