Ecological Sensor Data Quality Assessed Using Observational Data and
Combined Uncertainties
Abstract
Delivering long-term, high quality environmental sensor data spanning
the continent is a primary goal in the National Ecological Observatory
Network’s (NEON) Instrumented Systems (IS) group. Some independent
observations collected by NEON’s Observation System (OS) measure similar
data at the same location and time as the in-situ sensors. Coinciding IS
and OS measurements facilitate supplementary data quality assessments by
vetting IS sensor data (e.g. aquatic pH probe) against corresponding OS
data (e.g. water grab sample analyzed in a lab for pH). To assess
whether IS data agree with OS measurements, we use uncertainty as a tool
to understand data quality. The uncertainty between NEON IS and OS data
follow analytical (e.g. summation in quadrature) or numerical (e.g.
Monte Carlo) approaches depending on the complexity of the IS-OS
comparison algorithms. NEON calculates the IS-OS uncertainties, and
applies the expanded uncertainty as control limits for acceptable IS-OS
data comparisons. IS-OS comparisons falling outside the
uncertainty-based control limits help to (i) explore unaccounted
uncertainty in the IS and OS data, and (ii) address issues in the data
or sample collection process as ongoing continuous improvement
strategies.