The data streaming in the Climate Adaptation Digital Twin: a fundamental piece to transform climate data into climate information

Francesc Roura-Adserias, Aina Gaya i Avila, Leo Arriola i Mikele, Miguel Andrés-Martínez, Dani Beltran Mora, Iker Gonzalez Yeregui, Katherine Grayson, Bruno De Paula Kinoshita, Rohan Ahmed, Aleksander Lacima-Nadolnik,Miguel Castrillo

crossref(2024)

引用 0|浏览0
暂无评分
摘要
In the context of advancing towards high resolution climate projections (1km, sub-hourly) and the consequently large memory requirements, we are reaching the point that not all of the data produced can be stored. In this work, we present the technical infrastructure developed in the context of the Destination Earth ClimateDT project, in order to consume the data produced by the core engines as soon as it is available,  a method known as “data streaming”. This mechanism consists of three main steps that are included in an integrated workflow: the run of the climate models themselves , the applications (which convert the model output to actionable information) and the mechanism that links both sides. This solution is designed to be scalable; different applications can be run simultaneously and with as many different variables and statistics as needed,  in order to fully utilize the output  from the digital twin. The flexibility of the workflow allows different applications to run at their optimal frequency in a seamless way. Last but not least,  the workflow integrates statistical streaming   algorithms, allowing integrated applications to generate on-demand online statistics from streamed data, minimizing the memory footprint. 
更多
查看译文
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要