This paper presents a new interaction point process that integrates geological knowledge for the purpose of automatic sources detection of multiple sources in groundwaters from hydrochemical data. The observations are considered as spatial data, that is a point cloud in a multi-dimensional space of hydrogeochemical parameters. The key hypothesis of this approach is to assume the unknown sources to be the realisation of a point process. The probability density describing the sources distribution is built in order to take into account the multi-dimensional character of the data and specific physical rules. These rules induce a source configuration able to explain the observations. This distribution is completed with prior knowledge regarding the model parameters distributions. The composition of the sources is estimated by the configuration maximising the joint proposed probability density. The method was first calibrated on synthetic data and then tested on real data from hydrothermal systems.
翻译:本文件介绍了一个新的互动点进程,将地质学知识结合起来,以便从水文化学数据中自动探测地下水的多种来源;观测被视为空间数据,即水文地球化学参数多维空间中的点云;这种方法的主要假设是假设未知来源是实现点进程。描述源分布的概率密度是为了考虑到数据的多维特性和具体的物理规则而构建的。这些规则促使一种源配置能够解释观测结果。这种配置是在事先了解模型参数分布的情况下完成的。源的构成通过配置根据拟议联合概率密度的最大化估算。该方法首先根据合成数据进行校准,然后根据热液系统的真实数据进行测试。