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首页> 外文期刊>Stochastic environmental research and risk assessment >Combining physical-based models and satellite images for the spatio-temporal assessment of soil infiltration capacity
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Combining physical-based models and satellite images for the spatio-temporal assessment of soil infiltration capacity

机译:结合基于物理的模型和卫星图像进行土壤入渗能力的时空评估

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摘要

The performance of managed artificial recharge (MAR) facilities by means of surface ponds (SP) is controlled by the temporal evolution of the global infiltration capacity I_c of topsoils. Cost-effective maintenance operations that aim to maintain controlled infiltration values during the activity of the SP require the full knowledge of the spatio-temporal variability of I_c. This task is deemed uncertain. The natural reduction in time of I_c depends on complex physical, biological and chemical reactions that clog the soil pores and has been observed to decay exponentially to an asymptotic non-zero value. Moreover, the relative influence of single clogging processes depend on some initial parameters of the soil, such as the initial infiltration capacity (I_c,0)- This property is also uncertain, as aquifers are typically heterogeneous and scarcely characterized in practical situations. We suggest a method to obtain maps of I_c using a geostatistical approach, which is suitable to be extended to engineering risk assessment concerning management of SP facilities. We propose to combine geostatistical inference and a temporally-lumped physical model to reproduce non-uniform clogging in topsoils of a SP, using field campaigns of local and large scale tests and additionally by means of satellite images as secondary information. We then postulate a power-law relationship between the parameter of the exponential law, k, and I_c,0. It is found that calibrating the two parameters of the power law model it is possible to fit the temporal evolution of total infiltration rate at the pond scale in a MAR test facility. The results can be used to design appropriate measures to selectively limit clogging during operation, extending the life of the infiltration pond.
机译:通过表层池塘(SP)管理的人工补给(MAR)设施的性能受表层土壤总体入渗能力I_c随时间的变化控制。旨在在SP活动期间维持受控的渗透值的经济有效的维护操作,需要对I_c的时空变化有全面的了解。这项任务被认为是不确定的。 I_c时间的自然减少取决于堵塞土壤孔隙的复杂的物理,生物和化学反应,并且已经观察到其呈指数衰减至渐近非零值。此外,单个堵塞过程的相对影响取决于土壤的某些初始参数,例如初始入渗能力(I_c,0)。该属性也是不确定的,因为含水层通常是异质的,在实际情况下几乎没有特征。我们建议使用地统计方法获取I_c的地图的方法,该方法适用于扩展到涉及SP设施管理的工程风险评估。我们建议将地统计学推论和时间集中的物理模型相结合,以利用局部和大规模测试的野外活动,并另外通过卫星图像作为辅助信息,来再现SP表层土壤中的非均匀堵塞。然后,我们假设指数律参数k和I_c,0之间存在幂律关系。已经发现,校准幂律模型的两个参数可以使MAR测试设备中的池塘规模总渗透率随时间变化。结果可用于设计适当的措施,以选择性地限制操作过程中的堵塞,从而延长渗透池的使用寿命。

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