How To
Address Data Gaps in Life Cycle Inventories:
A Case Study on Estimating CO<sub>2</sub> Emissions from Coal-Fired
Electricity Plants on a Global Scale
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Abstract
One of the major challenges in life
cycle assessment (LCA) is the
availability and quality of data used to develop models and to make
appropriate recommendations. Approximations and assumptions are often
made if appropriate data are not readily available. However, these
proxies may introduce uncertainty into the results. A regression model
framework may be employed to assess missing data in LCAs of products
and processes. In this study, we develop such a regression-based framework
to estimate CO<sub>2</sub> emission factors associated with coal power
plants in the absence of reported data. Our framework hypothesizes
that emissions from coal power plants can be explained by plant-specific
factors (predictors) that include steam pressure, total capacity,
plant age, fuel type, and gross domestic product (GDP) per capita
of the resident nations of those plants. Using reported emission data
for 444 plants worldwide, plant level CO<sub>2</sub> emission factors
were fitted to the selected predictors by a multiple linear regression
model and a local linear regression model. The validated models were
then applied to 764 coal power plants worldwide, for which no reported
data were available. Cumulatively, available reported data and our
predictions together account for 74% of the total world’s coal-fired
power generation capacity