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从渗透理论和观测数据预测水循坏特征。

Predicting Water Cycle Characteristics from Percolation Theory and Observational Data.

机构信息

Department of Physics and Department of Earth & Environmental Sciences, Wright State University, 3640 Colonel Glenn Highway, Dayton, OH 45435, USA.

Energy Geosciences Division, E. O. Lawrence Berkeley National Laboratory, University of California, 1 Cyclotron Rd., Berkeley, CA 94720, USA.

出版信息

Int J Environ Res Public Health. 2020 Jan 23;17(3):734. doi: 10.3390/ijerph17030734.

Abstract

The fate of water and water-soluble toxic wastes in the subsurface is of high importance for many scientific and practical applications. Although solute transport is proportional to water flow rates, theoretical and experimental studies show that heavy-tailed (power-law) solute transport distribution can cause chemical transport retardation, prolonging clean-up time-scales greatly. However, no consensus exists as to the physical basis of such transport laws. In percolation theory, the scaling behavior of such transport rarely relates to specific medium characteristics, but strongly to the dimensionality of the connectivity of the flow paths (for example, two- or three-dimensional, as in fractured-porous media or heterogeneous sediments), as well as to the saturation characteristics (i.e., wetting, drying, and entrapped air). In accordance with the proposed relevance of percolation models of solute transport to environmental clean-up, these predictions also prove relevant to transport-limited chemical weathering and soil formation, where the heavy-tailed distributions slow chemical weathering over time. The predictions of percolation theory have been tested in laboratory and field experiments on reactive solute transport, chemical weathering, and soil formation and found accurate. Recently, this theoretical framework has also been applied to the water partitioning at the Earth's surface between evapotranspiration, , and run-off, , known as the water balance. A well-known phenomenological model by Budyko addressed the relationship between the ratio of the actual evapotranspiration () and precipitation, , versus the aridity index, , with being the precipitation and being the potential evapotranspiration. Existing work was able to predict the global fractions of represented by and through an optimization of plant productivity, in which downward water fluxes affect soil depth, and upward fluxes plant growth. In the present work, based likewise on the concepts of percolation theory, we extend Budyko's model, and address the partitioning of run-off Q into its surface and subsurface components, as well as the contribution of interception to . Using various published data sources on the magnitudes of interception and information regarding the partitioning of , we address the variability in resulting from these processes. The global success of this prediction demonstrated here provides additional support for the universal applicability of percolation theory for solute transport as well as guidance in predicting the component of subsurface run-off, important for predicting natural flow rates through contaminated aquifers.

摘要

地下水和水溶性有毒废物的命运对许多科学和实际应用都非常重要。尽管溶质运移与水流速率成正比,但理论和实验研究表明,重尾(幂律)溶质运移分布会导致化学运移滞后,大大延长清理时间。然而,对于这种传输规律的物理基础,尚未达成共识。在渗流理论中,这种传输的标度行为很少与特定的介质特性相关,而与流动路径的连通性的维度(例如,二维或三维,如在裂隙-多孔介质或非均质地层中)以及饱和度特征(即,润湿、干燥和夹带空气)强烈相关。根据溶质运移的渗流模型与环境清理的相关性,这些预测也被证明与受传输限制的化学风化和土壤形成有关,其中重尾分布会随着时间的推移减缓化学风化。渗流理论的预测已在反应性溶质运移、化学风化和土壤形成的实验室和野外实验中得到检验,并被证明是准确的。最近,这个理论框架也被应用于地球表面水分分配,即蒸散()、、和径流量()之间的关系,称为水量平衡。Budyko 提出的一个著名的经验模型描述了实际蒸散量()与降水()与干旱指数()之间的关系,其中为降水,为潜在蒸散量。通过优化植物生产力,可以预测通过植物生长向上传输和通过土壤向下传输的水量,从而预测出全球范围内由和表示的部分。在本工作中,同样基于渗流理论的概念,我们扩展了 Budyko 的模型,并解决了径流量 Q 分配到地表水和地下水部分的问题,以及截获对的贡献。我们利用各种已发表的关于截获量的大小和有关信息的来源,以及的分配信息,来处理这些过程导致的的变化。这里展示的全球成功预测为溶质运移的渗流理论的普遍适用性提供了额外的支持,并为预测地下水含水层中受污染水流的自然流速的地下径流量提供了指导。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d38a/7037263/97aed02e2aae/ijerph-17-00734-g001.jpg

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