首页> 外文期刊>Journal of Hydrology >Stochastic inverse modelling of hydraulic conductivity fields taking into account independent stochastic structures: A 3D case study
【24h】

Stochastic inverse modelling of hydraulic conductivity fields taking into account independent stochastic structures: A 3D case study

机译:考虑独立随机结构的水力传导率场的随机反演:3D案例研究

获取原文
获取原文并翻译 | 示例
           

摘要

Major factors affecting groundwater flow through fractured rocks include the geometry of each fracture, its properties and the fracture-network connectivity together with the porosity and conductivity of the rock matrix. When modelling fractured rocks this is translated into attaining a characterization of the hydraulic conductivity (K) as adequately as possible, despite its high heterogeneity. This links with the main goal of this paper, which is to present an improvement of a stochastic inverse model, named as Gradual Conditioning (GC) method, to better characterise K in a fractured rock medium by considering different K stochastic structures, belonging to independent K statistical populations (SP) of fracture families and the rock matrix, each one with its own statistical properties. The new methodology is carried out by applying independent deformations to each SP during the conditioning process for constraining stochastic simulations to data. This allows that the statistical properties of each SPs tend to be preserved during the iterative optimization process. It is worthwhile mentioning that so far, no other stochastic inverse modelling technique, with the whole capabilities implemented in the GC method, is able to work with a domain covered by several different stochastic structures taking into account the independence of different populations. The GC method is based on a procedure that gradually changes an initial K field, which is conditioned only to K data, to approximate the reproduction of other types of information, i.e., piezometric head and solute concentration data. The approach is applied to the ?sp? Hard Rock Laboratory (HRL) in Sweden, where, since the middle nineties, many experiments have been carried out to increase confidence in alternative radionuclide transport modelling approaches. Because the description of fracture locations and the distribution of hydrodynamic parameters within them are not accurate enough, we address the domain by using a pseudo porous media approach, in which fractures are represented by high K zones. This approach has already been proven to be successful in real case studies. Results of the K conditional fields have been compared to those obtained in a scenario where the independence of the different stochastic structures was not fully considered. After performing an uncertainty assessment, we have found that when using additional conditioning data (piezometric head data) and multiple SPs the reproduction of the hydraulic head field is significantly improved and uncertainty is reduced. However, honouring the independence of different SPs does not warrant a decrease of uncertainty but in fact due to a more realistic reproduction of the statistical features uncertainty can be increased.
机译:影响地下水流过裂隙岩石的主要因素包括每条裂缝的几何形状,其性质,裂缝网络的连通性以及岩石基质的孔隙度和电导率。在对裂隙岩进行建模时,尽管它具有很高的非均质性,但可以转化为尽可能充分地表征水力传导率(K)。这与本文的主要目标相联系,该主要目标是提出一种改进的随机逆模型,称为逐步条件(GC)方法,通过考虑不同的K随机结构(属于独立的K)来更好地表征裂隙岩石介质中的K。裂缝家族和岩石基质的K个统计种群(SP),每个种群都有其自己的统计属性。通过在调节过程中对每个SP施加独立的变形来实施新方法,以将随机模拟约束到数据。这允许在迭代优化过程中倾向于保留每个SP的统计属性。值得一提的是,到目前为止,还没有其他的随机逆建模技术能够以GC方法实现的全部功能,并且考虑到不同总体的独立性,可以使用由几种不同的随机结构覆盖的域。 GC方法基于逐步改变仅以K数据为条件的初始K场的程序,以近似于其他类型信息的再现,即测压头和溶质浓度数据。该方法适用于?sp?。自90年代中期以来,瑞典的Hard Rock实验室(HRL)在这里进行了许多实验,以增加人们对替代放射性核素迁移建模方法的信心。因为裂缝位置的描述和其中的流体动力参数分布不够准确,所以我们使用伪多孔介质方法来解决该问题,在该方法中,裂缝由高K区代表。这种方法已经在实际案例研究中被证明是成功的。已将K个条件字段的结果与在未充分考虑不同随机结构的独立性的情况下获得的结果进行了比较。在执行不确定性评估后,我们发现当使用其他条件数据(测压头数据)和多个SP时,液压头场的再现性得到了显着改善,不确定性降低了。但是,尊重不同SP的独立性并不能保证减少不确定性,但是实际上,由于更真实地再现了统计特征,可以增加不确定性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号