Descriptor: Five years of meteorological surface data at Oak Ridge Reserve in Tennessee
Morgan R. Steckler, Kevin R. Birdwell, Haowen Xu, Xiao-Ying Yu

TL;DR
This study provides a comprehensive, quality-assessed five-year meteorological dataset from Oak Ridge, processed with standardized techniques, to support atmospheric modeling and regional climate understanding.
Contribution
It introduces a detailed data processing workflow for meteorological data, ensuring high quality and accessibility for modeling applications.
Findings
Five years of high-quality meteorological data available
Data processing workflow is publicly accessible and reproducible
Prepared data supports atmospheric dispersion modeling
Abstract
Access to continuous, quality assessed meteorological data is critical for understanding the climatology and atmospheric dynamics of a region. Research facilities like Oak Ridge National Laboratory (ORNL) rely on such data to assess site-specific climatology, model potential emissions, establish safety baselines, and prepare for emergency scenarios. To meet these needs, on-site towers at ORNL collect meteorological data at 15-minute and hourly intervals. However, data measurements from meteorological towers are affected by sensor sensitivity, degradation, lightning strikes, power fluctuations, glitching, and sensor failures, all of which can affect data quality. To address these challenges, we conducted a comprehensive quality assessment and processing of five years of meteorological data collected from ORNL at 15-minute intervals, including measurements of temperature, pressure,…
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Taxonomy
TopicsSoil Geostatistics and Mapping · Atmospheric and Environmental Gas Dynamics
