Back to Search Start Over

New and updated global empirical seawater property estimation routines

Authors :
Andrea J. Fassbender
Leticia Barbero
Marta Álvarez
Jonathan D. Sharp
Rik Wanninkhof
Yuichiro Takeshita
Henry C. Bittig
Brendan R. Carter
Richard A. Feely
Yuanyuan Xu
Source :
e-IEO. Repositorio Institucional Digital de Acceso Abierto del Instituto Español de Oceanografía, instname
Publication Year :
2021
Publisher :
Wiley, 2021.

Abstract

We introduce three new Empirical Seawater Property Estimation Routines (ESPERs) capable of predicting seawater phosphate, nitrate, silicate, oxygen, total titration seawater alkalinity, total hydrogen scale pH (pHT), and total dissolved inorganic carbon (DIC) from up to 16 combinations of seawater property measurements. The routines generate estimates from neural networks (ESPER_NN), locally interpolated regressions (ESPER_LIR), or both (ESPER_Mixed). They require a salinity value and coordinate information, and benefit from additional seawater measurements if available. These routines are intended for seawater property measurement quality control and quality assessment, generating estimates for calculations that require approximate values, original science, and producing biogeochemical property context from a data set. Relative to earlier LIR routines, the updates expand their functionality, including new estimated properties and combinations of predictors, a larger training data product including new cruises from the 2020 Global Data Analysis Project data product release, and the implementation of a first-principles approach for quantifying the impacts of anthropogenic carbon on DIC and pHT. We show that the new routines perform at least as well as existing routines, and, in some cases, outperform existing approaches, even when limited to the same training data. Given that additional training data has been incorporated into these updated routines, these updates should be considered an improvement over earlier versions. The routines are intended for all ocean depths for the interval from 1980 to ~2030 c.e., and we caution against using the routines to directly quantify surface ocean seasonality or make more distant predictions of DIC or pHT.<br />1,823

Details

ISSN :
15415856
Volume :
19
Database :
OpenAIRE
Journal :
Limnology and Oceanography: Methods
Accession number :
edsair.doi.dedup.....4aed469713fd2f71e0a2f09a41a8c29c
Full Text :
https://doi.org/10.1002/lom3.10461