Atmospheric modelling has recently experienced a surge with the advent of deep learning. Most of these models, however, predict concentrations of pollutants following a data-driven approach in which the physical laws that govern their behaviors and relationships remain hidden. With the aid of real-world air quality data collected hourly in different stations throughout Madrid, we present a case study using a series of data-driven techniques with the following goals: (1) Find systems of ordinary differential equations that model the concentration of pollutants and their changes over time; (2) assess the performance and limitations of our models using stability analysis; (3) reconstruct the time series of chemical pollutants not measured in certain stations using delay coordinate embedding results.
翻译:最近随着深层学习的到来,大气建模经历了一次激增,但大多数这些模型都根据数据驱动的方法预测污染物的浓度,而数据驱动的方法是,规范其行为和关系的物理法则仍然被隐藏起来;在马德里各地不同站点每小时收集真实世界空气质量数据的帮助下,我们利用一系列数据驱动技术进行个案研究,其目标如下:(1) 寻找普通差异方程式系统,用以模拟污染物的浓度及其随时间变化;(2) 利用稳定性分析评估我们模型的性能和局限性;(3) 重建某些站点没有利用延迟协调嵌入结果测量的化学污染物的时间序列。