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Evaluation of seawater composition in a vast area from the Monte Carlo simulation of georeferenced information in a Bayesian framework

机译:从贝叶斯框架中蒙特卡洛模拟蒙特卡洛模拟海水组成的评价

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摘要

The detection of composition or pollution trends of vast environmental water areas, from a river, lake or sea, requires the determination of the mean concentration of the studied component in the studied area at defined depth in, at least, two occasions. Mean concentration estimates of a large area are robust to system heterogeneity and, if expressed with uncertainty, allow assessing if observed trends are meaningful or can be attributed to the measurement process. Mean concentration values and respective uncertainty are more accurately determined if various samples are collected from the studied area and if samples coordinates are considered. The spatial representation of concentration variation and the subsequent randomization of this model, given coordinates and samples analysis uncertainty, allows an improved characterization of studied area and the optimization of the sampling process. Recently, this evaluation methodology was described and implemented in a user-friendly MS-Excel file. This tool was upgraded to allow determinations close to zero concentration and "bottom-up" uncertainty evaluations of collected samples analysis. Since concentrations cannot be negative, this prior knowledge is merged with the original measurements in a Bayesian uncertainty evaluation that improves studied area description and sampling modelling. The Bayesian assessment avoids the underestimation of concentrations distribution by assuming that negative concentrations are impossible. This tool was successfully applied to the determination of reactive phosphate concentration in a vast ocean area of the Portuguese coast. The new version of the developed tool is made available as Supplementary Material. (C) 2020 Elsevier Ltd. All rights reserved.
机译:从河流,湖泊或海洋中检测巨大的环境水域的组成或污染趋势需要确定所研究的区域中所研究的区域的平均浓度,至少有两次。大面积的平均浓度估计是对系统异质性的鲁棒性,如果用不确定性表达,允许评估观察到的趋势是有意义的,或者可以归因于测量过程。如果从研究区域收集各种样品,并且考虑样品坐标,则更精确地确定平均浓度值和各自的不确定度。给定坐标和样品分析不确定度,浓度变化的空间表示和随后的该模型随机化,允许改进研究区域的表征和采样过程的优化。最近,在用户友好的MS-Excel文件中描述并实现了该评估方法。该工具被升级以允许确定接近零集中,并“自下而上”的收集样本分析的不确定性评估。由于浓度不能为负,因此该事先知识与贝叶斯不确定性评估中的原始测量合并,从而改善了研究区域描述和采样建模。贝叶斯评估通过假设消极浓度是不可能的,避免低估浓度分布。该工具已成功应用于葡萄牙海岸广阔海洋地区的反应性磷酸盐浓度的测定。新版本的开发工具可作为补充材料提供。 (c)2020 elestvier有限公司保留所有权利。

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