Ten Years of Earth and Space Science: Introduction to the Special Collection
EARTH AND SPACE SCIENCE(2025)
Amer Geophys Union | French Natl Res Inst Sustainable Dev | Univ South Carolina | Iowa State Univ | Ist Nazl Oceanog & Geofis Sperimentale | Monash Univ | Colorado State Univ | British Geol Survey | NASA | Univ Sci & Technol China | Natl Ctr Atmospher Res | Australian Natl Univ | Cornell Univ | Univ Colorado | Henan Univ
Abstract
AbstractThe journal Earth and Space Science (ESS) was founded in 2014 to offer the scientific community a new platform for the dissemination of key new data, observations, methods, instruments, and models, presented within the context of their application. Thus, the aim of the journal was (and is) to highlight the complexity and importance of experimental design, methodology, data acquisition and processing, intertwined with data interpretation. Such approach is consistent with the mission of most AGU journals, but the distinctive element for ESS is its focus on the concept of the useful impact of publication, progressively replacing that on conventional publication metrics. In this context, the journal has been, since its inception, the preferred home for studies stemming from both global and local geoscience research. This special collection contains 16 papers published in ESS, selected by the Editorial Board to highlight the aims, scope and path of evolution and growth of the journal since it inaugural issue, in 2014.
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