Original publication: Digitizing Data to Combat Climate Change (December 2025)
Publisher: XBRL US
Source link: https://xbrl.us/home/digitizing-data-to-combat-climate-change/
Environmental regulators could improve the accessibility and usability of climate datasets by establishing a semantic data model through a taxonomy or ontology agreed upon by state and federal regulators, whereby reported data could be easily catalogued and shared. By collecting, or converting it on submission, into structured, standardized format following a single semantic data model (schema), regulators could continue to maintain their own datasets and process for data collection, but all regulatory datasets would be interoperable because they would be identically structured.
Interoperability means that regulators can share data and tools for querying, extraction and analysis (thus reducing the cost of building and maintaining applications), and can perform more robust analysis. Analyzing information from thousands of entities requires the same effort and cost as analyzing information from one entity when datasets are interoperable.
This paper describes some of the datasets currently available from the EPA and certain state environmental regulators, and explains how collecting and storing the data using a semantic data model could benefit regulators, reporting entities, and data users.