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首页> 外文期刊>Arabian journal of geosciences >Automatic interpretation of pumping tests data using metaheuristics
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Automatic interpretation of pumping tests data using metaheuristics

机译:采用综茂地自动解释泵浦测试数据

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摘要

Pumping tests data interpretation is of major importance in groundwater engineering. It is traditionally performed in a subjective manner by means of standard type curves. In this paper, an automatic interpretation of time-drawdown data has been proposed based on two algorithms, the real-coded genetic algorithm and differential evolution. The proposed approaches combine metaheuristic algorithms with an appropriate analytical drawdown solution depending upon the nature of the considered aquifer system, leaky or naturally fractured rock aquifers. The standard error of estimate (SEE) was used as a performance criterion to evaluate the discrepancies between predicted and observed drawdown data in different pumping time periods. Both of the proposed metaheuristic algorithms provide accurate aquifer parameters. For all analyzed pumping tests data, the differential evolution yielded the most accurate results with an improvement in SEE values ranged from 0.2 to 50% compared to previously published results, and exhibits speed and robustness. Furthermore, a new full range numerical evaluation of the Hantush well function based on a tanh-sinh quadrature scheme has been proposed. Our results indicate that our method is accurate, since the maximum relative error was found to be equal to 0.00036%, and practical, since it is free from special functions and could be easily incorporated within an optimization technique to analyze transient time-drawdown data.
机译:泵送测试数据解释在地下水工程方面具有重要意义。它传统上通过标准类型的曲线以主观方式执行。本文基于两种算法,实际编码的遗传算法和差分演进,提出了一种自动解释时间绘制数据。该提出的方法将成群质算法与适当的分析绘制解决方案相结合,这取决于所考虑的含水层系统,泄漏或天然裂缝的岩石含水层的性质。估计的标准误差(参见)被用作性能标准,以评估在不同抽水时间段中预测和观察到的绘制数据之间的差异。两个提出的成群质算法都提供了准确的含水层参数。对于所有分析的泵送测试数据,差分进化产生了最精确的结果,与先前公布的结果相比,有关0.2〜50%的值得改善,并表现出速度和鲁棒性。此外,已经提出了基于Tanh-Sinh正交方案的汉语井功能的新全系列数值评估。我们的结果表明,我们的方法是准确的,因为发现最大相对误差等于0.00036%,并且实用,因为它没有特殊功能,并且可以在优化技术中轻松结合到分析瞬态时间缩小数据。

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