Errors and uncertainties associated with the use of unconventional
activity data for estimating CO2 emissions
Abstract
CO2 emissions from fossil fuel combustion (FFCO2) can be robustly
estimated from fuel used (as activity data, AD) and CO2 emissions
factor, due to the nature of FFCO2. Recent traffic emission changes
under the impact of the COVID-19 pandemic have been estimated using
emerging non-fuel consumption data, such as human mobility data that
tech companies reported as AD, due to the unavailability of timely fuel
statistics. The use of such unconventional activity data (UAD) might
allow us to provide emission estimates in near-real time; however, the
errors and uncertainties associated with such estimates are expected to
be larger than those of common FFCO2 inventory estimates, and thus
should be provided along with a thorough evaluation/validation of the
methodology and the resulting estimates. Here, we show the impact of
COVID-19 on traffic CO2 emissions over the first six months of 2020 in
Japan. We calculated CO2 monthly emissions using fuel consumption data
and assessed the emission changes relative to 2019. Regardless of
Japan’s soft approach to COVID-19, traffic emissions significantly
declined by 23.8% during the state of emergency in Japan (April-May).
We also compared relative emission changes among different estimates
available. Our analysis suggests that UAD-based emission estimates
during April and May could be biased by -19.6% to 12.6%. We also used
traffic count data for examining the performance of UAD as a proxy for
traffic and/or CO2 emissions. We found traffic changes are not
proportional enough to emission changes to allow emissions to be
estimated with accuracy, and moreover, the traffic-based approach failed
to capture emission seasonality. Our study highlighted the challenges
and difficulties in the use of limited non-scientific data for modeling
human activities and assessing the impact on the environment, and the
importance of a thorough error and uncertainty assessment before using
these data in policy applications.