When analyzing the spatio-temporal dependence in most environmental and earth sciences variables such as pollutant concentrations at different levels of the atmosphere, a special property is observed: the covariances and cross-covariances are stronger in certain directions. This property is attributed to the presence of natural forces, such as wind, which cause the transport and dispersion of these variables. This spatio-temporal dynamics prompted the use of the Lagrangian reference frame alongside any Gaussian spatio-temporal geostatistical model. Under this modeling framework, a whole new class was birthed and was known as the class of spatio-temporal covariance functions under the Lagrangian framework, with several developments already established in the univariate setting, in both stationary and nonstationary formulations, but less so in the multivariate case. Despite the many advances in this modeling approach, efforts have yet to be directed to probing the case for the use of multiple advections, especially when several variables are involved. Accounting for multiple advections would make the Lagrangian framework a more viable approach in modeling realistic multivariate transport scenarios. In this work, we establish a class of Lagrangian spatio-temporal cross-covariance functions with multiple advections, study its properties, and demonstrate its use on a bivariate pollutant dataset of particulate matter in Saudi Arabia.
翻译:在分析大多数环境和地球科学变量(如大气不同层次的污染物浓度)的时空依赖性时,观察到一种特殊的属性:在拉格兰加框架下,共变和交叉变异功能在某些方向上更加强大。这种属性归因于自然力量的存在,如风,造成这些变量的迁移和分散。这种时空动态促使使用拉格兰加的参照框架以及任何Gaussian的时空地理统计模型。在这个模型框架内,诞生了一个全新的整类,并被称为拉格兰加框架下的螺旋-时变异功能类别。这种特性归因于风等自然力量的存在,导致这些变量的迁移和分散。尽管这一模型方法取得了许多进步,但仍需要努力验证使用多种适应性,特别是在涉及若干变量的情况下。在拉格兰加框架下,多种适应性-时的会计核算将使得在单变异环境环境中已经确立了若干发展动态,在固定和非静止配方配方配方配方中,在多变异性模型中将它作为现实的变压性多变压性模型。