|国家科技期刊平台
首页|期刊导航|Water Science and Engineering|Big data-driven water research towards metaverse

Big data-driven water research towards metaverseOACSTPCDEI

中文摘要

Although big data is publicly available on water quality parameters,virtual simulation has not yet been adequately adapted in environmental chemistry research.Digital twin is different from conventional geospatial modeling approaches and is particularly useful when systematic laboratory/field experiment is not realistic(e.g.,climate impact and water-related environmental catastrophe)or difficult to design and monitor in a real time(e.g.,pollutant and nutrient cycles in estuaries,soils,and sediments).Data-driven water research could realize early warning and disaster readiness simulations for diverse environmental scenarios,including drinking water contamination.

Minori Uchimiya;

USDA-ARS Southern Regional Research Center,1100 Allen Toussaint Boulevard,New Orleans,LA 70124,USA

水利科学

Data miningOmicsRemote sensingSensorChemoinformatics

《Water Science and Engineering》 2024 (002)

P.101-107 / 7

10.1016/j.wse.2024.02.001

评论