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A combined geostatistical approach of data fusion and stochastic simulation for probabilistic assessment of shallow water table depth risk

机译:浅水台深度风险概率评价数据融合与随机仿真的组合地质统治方法

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摘要

In general, water table depth risks are estimated from monitoring networks that mostly provide scarce and irregular data. When jointly analysed, environmental, agricultural and geotechnical variables, treated as stochastic spatial variables, can better describe and interpret the states of a certain system subject to estimation uncertainty. Risk assessment consists essentially in calculating the frequency (probability) with which specified criteria are exceeded or fail to be met by creating multiple stochastic realizations. The aim of this paper is to propose a novel geostatistical methodology, based on the integration into one approach of multi-source data fusion and stochastic simulation, to estimate the risk of extreme (shallow) water table depth, and illustrate a demonstrative example of application of the approach to a case study in a Cerrado conservation area in Brazil. The risk of shallow water table depth was determined by using critical thresholds for water table level and a binary transformation into an indicator variable depending on whether the conditions expressed by the threshold values are met or not. Firstly, auxiliary variables were jointly, analysed to provide a delineation of the study area into homogeneous zones. Secondly, sequential indicator simulation provided a-posteriori probabilities taking into account spatial proximity. The final maps show the most probable risk category for the whole area and spatial entropy as a measure of local uncertainty. Areas nearby watershed divisors and in the north part of the region have a high risk of shallow groundwater. Informed decision-making supported by probabilistic maps and uncertainty evaluation is essential for the success of the projects of Cerrado restoration.
机译:通常,水表深度风险估计主要提供稀缺和不规则数据的监控网络。当共同分析,环境,农业和岩土地变量被视为随机空间变量时,可以更好地描述和解​​释某些系统的估计不确定性的状态。风险评估基本上由计算出超过或无法满足的频率(概率)来组成,通过创建多个随机的实现来实现指定标准的频率(概率)。本文的目的是提出一种新颖的地质统计方法,基于集成到多源数据融合和随机仿真的一种方法,估计极端(浅)水台深度的风险,并说明了应用的示范例巴西Cerrado Centration区案例研究的方法。根据使用阈值表达的条件是否满足阈值表达的条件,通过使用用于水台面水平的临界阈值和指示因子变量来确定浅水台深度的风险。首先,共同地分析辅助变量,以便将研究区域描绘成均匀区域。其次,序贯指示器仿真提供了一次性概率考虑到空间接近的概率。最后地图显示了整个区域和空间熵的最可能风险类别,作为局部不确定性的衡量标准。附近的地区流域除数和该地区北部具有高风险的地下水。概率地图和不确定性评估支持的知情决策对于Cerrado Restoration项目的成功至关重要。

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