G2TT
来源类型Scientific publication
规范类型其他
An Alternative to Static Climatologies: Robust Estimation of Open Ocean CO2 Variables and Nutrient Concentrations From T, S, and O2 Data Using Bayesian Neural Networks
Jean-PierreGattuso
发表日期2018-09
出处Frontiers in Marine Science
出版年2018
语种英语
摘要

Bittig, H.C. et al. (2018). An Alternative to Static Climatologies: Robust Estimation of Open Ocean CO2 Variables and Nutrient Concentrations From T, S, and O2 Data Using Bayesian Neural Networks. Frontiers in marine Science.

DOI: https://doi.org/10.3389/fmars.2018.00328


This work presents two new methods to estimate oceanic alkalinity (AT), dissolved inorganic carbon (CT), pH, and pCO2 from temperature, salinity, oxygen, and geolocation data. “CANYON-B” is a Bayesian neural network mapping that accurately reproduces GLODAPv2 bottle data and the biogeochemical relations contained therein. “CONTENT” combines and refines the four carbonate system variables to be consistent with carbonate chemistry. Both methods come with a robust uncertainty estimate that incorporates information from the local conditions. They are validated against independent GO-SHIP bottle and sensor data, and compare favorably to other state-of-the-art mapping methods. As “dynamic climatologies” they show comparable performance to classical climatologies on large scales but a much better representation on smaller scales (40–120 d, 500–1,500 km) compared to in situ data. The limits of these mappings are explored with pCO2 estimation in surface waters, i.e., at the edge of the domain with high intrinsic variability. In highly productive areas, there is a tendency for pCO2 overestimation due to decoupling of the O2 and C cycles by air-sea gas exchange, but global surface pCO2 estimates are unbiased compared to a monthly climatology. CANYON-B and CONTENT are highly useful as transfer functions between components of the ocean observing system (GO-SHIP repeat hydrography, BGC-Argo, underway observations) and permit the synergistic use of these highly complementary systems, both in spatial/temporal coverage and number of observations. Through easily and robotically-accessible observations they allow densification of more difficult-to-observe variables (e.g., 15 times denser AT and CT compared to direct measurements). At the same time, they give access to the complete carbonate system. This potential is demonstrated by an observation-based global analysis of the Revelle buffer factor, which shows a significant, high latitude-intensified increase between +0.1 and +0.4 units per decade. This shows the utility that such transfer functions with realistic uncertainty estimates provide to ocean biogeochemistry and global climate change research. In addition, CANYON-B provides robust and accurate estimates of nitrate, phosphate, and silicate.

主题Ocean
URLhttps://www.iddri.org/en/publications-and-events/scientific-publication/alternative-static-climatologies-robust-estimation
来源智库Institute du Developpement Durable et Relations Internationales (France)
资源类型智库出版物
条目标识符http://119.78.100.153/handle/2XGU8XDN/76327
推荐引用方式
GB/T 7714
Jean-PierreGattuso. An Alternative to Static Climatologies: Robust Estimation of Open Ocean CO2 Variables and Nutrient Concentrations From T, S, and O2 Data Using Bayesian Neural Networks. 2018.
条目包含的文件
文件名称/大小 资源类型 版本类型 开放类型 使用许可
frontiers-Marine-Sci(19KB)智库出版物 限制开放CC BY-NC-SA浏览
个性服务
推荐该条目
保存到收藏夹
导出为Endnote文件
谷歌学术
谷歌学术中相似的文章
[Jean-PierreGattuso]的文章
百度学术
百度学术中相似的文章
[Jean-PierreGattuso]的文章
必应学术
必应学术中相似的文章
[Jean-PierreGattuso]的文章
相关权益政策
暂无数据
收藏/分享
文件名: frontiers-Marine-Science-for-pub-new.jpg
格式: JPEG

除非特别说明,本系统中所有内容都受版权保护,并保留所有权利。