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Large-scale association analysis of climate drought and decline in groundwater quantity using Gaussian process classification (case study: 609 study area of Iran)

机译:使用高斯过程分类法对气候干旱和地下水量下降进行大规模关联分析(案例研究:伊朗609个研究区域)

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BackgroundThe level of groundwater resources is changing rapidly and this requires the discovery of newer groundwater resources. Drought is one of the most significant natural phenomena affecting different aspects of human life and environment. During the last decades, the application of artificial intelligent techniques has been recognized as effective approaches to forecast an annual precipitation rate. MethodIn this study, the association analysis of climate drought and a decline in groundwater level is addressed using Gaussian process classification (GPC) and backpropagation (BP) artificial neural network (ANN). This methodology is proposed to create a framework for decision making and reduce uncertainty in water resource management calculations, and in particular to optimize the management of groundwater drinking water sources. ResultsUnderground water levels in 609 study plains in Iran were used to predict drought over the test period, extending from 2017 to 2021. The artificial intelligence methods were implemented in the Python programming environment to achieve an annual precipitation rate. A statistical summary of the Rasterized Cells of the zoning maps was used to validate the prediction results. Considering the relationship between water quality reductions and drought in Iranian aquifers due to the occurrence of groundwater drought periods, the results were validated by analysis of the effect of climate drought using the Standardized Precipitation Index (SPI) on the occurrence of observed droughts with the Groundwater Resources Index (GRI). The results are well-illustrated by the observation of the predicted digits in the third dimension of the Gaussian distribution. ConclusionAccording to the SPI indicator, the southern regions of the country, and especially the central parts of the plain, can be considered the most affected areas by the most severe future droughts. The prediction results indicate a decrease in drought severity as part of a two-year sequence involving a recurrence of drought exacerbation and relative decline, as well as a failed state after the critical condition of aquifers.
机译:背景技术地下水资源的水平正在迅速变化,这需要发现更新的地下水资源。干旱是影响人类生活和环境各个方面的最重要的自然现象之一。在过去的几十年中,人工智能技术的应用已被公认为是预测年降水量的有效方法。方法在本研究中,使用高斯过程分类(GPC)和反向传播(BP)人工神经网络(ANN)解决了气候干旱与地下水位下降的关联分析。提出该方法以创建决策框架并减少水资源管理计算中的不确定性,尤其是优化地下水饮用水源的管理。结果伊朗609个研究平原的地下水位被用来预测测试期间(从2017年到2021年)的干旱。在Python编程环境中实施了人工智能方法,以实现年降水率。分区图的栅格化单元的统计摘要用于验证预测结果。考虑到由于地下水干旱时期引起的伊朗含水层水质下降与干旱之间的关系,使用标准降水指数(SPI)对气候干旱对地下水观测干旱的影响进行了分析,从而验证了结果资源索引(GRI)。通过观察高斯分布三维中的预测数字可以很好地说明结果。结论根据SPI指标,该国南部地区,特别是平原中部地区,被认为是未来最严重干旱造成的受影响最大的地区。预测结果表明,作为两年序列的一部分,干旱严重性降低,涉及干旱加剧和相对下降的复发,以及在含水层处于临界状态后的失败状态。

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