Reactive flows are important part of numerous technical and environmental processes. Often monitoring the flow and species concentrations within the domain is not possible or is expensive, in contrast, outlet concentration is straightforward to measure. In connection with reactive flows in porous media, the term breakthrough curve is used to denote the time dependency of the outlet concentration with prescribed conditions at the inlet. In this work we apply several machine learning methods to predict breakthrough curves from the given set of parameters. In our case the parameters are the Damk\"ohler and Peclet numbers. We perform a thorough analysis for the one-dimensional case and also provide the results for the three-dimensional case.
翻译:反应性流动是许多技术和环境过程的重要组成部分。通常,监测该区域内的流量和物种浓度是不可能的,或者费用昂贵,相反,出口集中是直接测量的。关于多孔介质的被动流动,使用“突破曲线”一词来表示出口集中的时间依赖性和入口处规定的条件。在这项工作中,我们运用了几种机器学习方法来预测特定参数组的突破曲线。在我们的案例中,参数是Damk\'ohler和Peclet数字。我们对一维情况进行了彻底分析,并为三维情况提供了结果。