RDF models and SPARQL queries for decoupled analytics demonstration
收藏NIAID Data Ecosystem2026-03-14 收录
下载链接:
https://zenodo.org/record/7361350
下载链接
链接失效反馈官方服务:
资源简介:
This directory contains the following:
- Two sets of RDF triples using different ontologies, modeling the same "MZVAV-2" air handling unit from the data inventory by Granderson et al. [1].
- SPARQL queries for retrieving inputs to APAR [2] rules.
- SPARQL queries for discovering "data links" from the models, connecting data points to time series providers.
The models were created by manually writing the triples. For details, see included README.md
[1] J. Granderson, G. Lin, A. Harding, P. Im, Y. Chen, Building fault detection data to aid diagnostic algorithm creation and performance testing, Scientific Data. 7 (2020) 65. https://doi.org/10.1038/s41597-020-0398-6.
[2] J.M. House, H. Vaezi-Nejad, J.M. Whitcomb, An expert rule set for fault detection in air-handling units, ASHRAE Transactions. 107 (2001) 858–871.
本数据集目录包含以下内容:
- 两组基于不同本体(ontology)的RDF三元组,对Granderson等人[1]的数据清单中同一台“MZVAV-2”型空气处理机组进行建模。
- 用于检索APAR[2]规则输入参数的SPARQL查询。
- 用于从模型中挖掘“数据链路”、将数据点与时间序列数据源进行关联的SPARQL查询。
本数据集的模型均通过手动编写RDF三元组构建而成,详细信息请参阅附带的README.md文件。
[1] J. Granderson、G. Lin、A. Harding、P. Im、Y. Chen,《用于辅助诊断算法开发与性能测试的建筑故障检测数据集》,《科学数据》,7卷(2020年),第65页。https://doi.org/10.1038/s41597-020-0398-6.
[2] J.M. House、H. Vaezi-Nejad、J.M. Whitcomb,《空气处理机组故障检测专家规则集》,《ASHRAE会刊》,107卷(2001年),第858–871页。
创建时间:
2022-11-25



