five

Amphibole/melt partition coefficient experiments v. 2

收藏
DataONE2022-06-21 更新2025-04-26 收录
下载链接:
https://search.dataone.org/view/sha256:d5db731f5ad801c62f7cb560ed24eedacdecccca8d22b6b4865b66dfe42dfcd8
下载链接
链接失效反馈
官方服务:
资源简介:
This updated dataset presents compiled experimental mineral/melt partitioning data for amphibole from the literature (e.g. no unpublished collections). This dataset can help users to calculate differentiation scenarios (by sorting for compositions that match the system of interest), test models or create calibration datasets for models, and facilitate experimental design and data management plans. The format of the data is oriented vertically – each column represents the data from one published experiment – including experimental conditions, source publication, analytical techniques and the composition of the starting composition, liquid, mineral or fluid and the partition coefficient for the elements analyzed. This format is inclusive, and therefore complex, and care should be taken in processing the data from this raw form. Please see the “Readme\" tab for further explanations and instructions. This data is presented in the traceDs template, a format for documenting experimental data that is available on the EarthChem website for investigator use. If you find errors in the data transcription or any omissions please contact Roger Nielsen or Gokce Ustunisik (roger.nielsen@sdsmt.edu; gokce.ustunisik@sdsmt.edu) with details of the error or a copy of the paper to be added.

本更新版数据集汇编了已发表文献中有关角闪石的矿物-熔体分配系数实验数据(未收录未公开数据集)。本数据集可协助研究人员通过筛选匹配目标体系的组分,开展岩浆分异情景模拟、模型验证或构建模型校准数据集,同时助力实验设计与数据管理方案的制定。本数据集采用纵向排版格式:每一列对应一项已发表实验的数据,涵盖实验条件、来源文献、分析技术、初始组分、熔体、矿物或流体的组成,以及被测元素的分配系数。该格式涵盖信息全面但结构复杂,处理原始格式数据时需格外谨慎。如需进一步说明与操作指引,请查阅"Readme"标签页。本数据集采用traceDs模板进行存储,该模板是EarthChem网站面向科研人员提供的实验数据记录格式。若您发现数据转录过程中存在错误或遗漏,请将错误详情或待补充的论文副本发送至Roger Nielsen或Gokce Ustunisik的邮箱(roger.nielsen@sdsmt.edu; gokce.ustunisik@sdsmt.edu)。
创建时间:
2025-03-19
5,000+
优质数据集
54 个
任务类型
进入经典数据集
二维码
社区交流群

面向社区/商业的数据集话题

二维码
科研交流群

面向高校/科研机构的开源数据集话题

数据驱动未来

携手共赢发展

商业合作