Functional spatio-temporal data naturally arise in many environmental and climate applications where data are collected in a three-dimensional space over time. The MATLAB D-STEM v1 software package was first introduced for modelling multivariate space-time data and has been recently extended to D-STEM v2 to handle functional data indexed across space and over time. This paper introduces the new modelling capabilities of D-STEM v2 as well as the complexity reduction techniques required when dealing with large data sets. Model estimation, validation and dynamic kriging are demonstrated in two case studies, one related to ground-level air quality data in Beijing, China, and the other one related to atmospheric profile data collected globally through radio sounding.
翻译:功能时空数据自然在许多环境和气候应用中产生,随着时间推移,在三维空间收集数据。MATLAB D-STEM v1软件包首先用于模拟多变空间时间数据,最近推广到D-STEM v2,处理跨空间和跨时间指数化的功能数据。本文介绍了D-STEM v2的新建模能力,以及处理大型数据集所需的降低复杂性技术。在两个案例研究中展示了模型估计、验证和动态推力,一个与中国北京的地面空气质量数据有关,另一个与通过无线电探测在全球收集的大气概况数据有关。