A meta-analysis of carbon capture and storage technology assessments: Understanding the driving factors of variability in cost estimates
Journal article, 2015

The estimated cost of reducing carbon emissions through the deployment of carbon capture and storage (CCS) in power systems vary by a factor of five or more across studies published over the past 8 years. The objective of this paper is to understand the contribution of techno-economic variables and modeling assumptions to explain the large variability in the published international literature on cost of avoided CO 2 (CACO2) using statistical methods. We carry out a meta-analysis of the variations in reported CACO2 for coal and natural gas power plants with CCS. We use regression and correlation analysis to explain the variation in reported CACO2. The regression models built in our analysis have strong predictive power (R2 > 0.90) for all power plant types. We find that the parameters that have high variability and large influence on the value of CACO2 estimated are levelized cost of electricity (LCOE) penalty, capital cost of CCS, and efficiency penalty. In addition, the selection of baseline technologies and more attention and transparency around the calculation of capital costs will reduce the variability across studies to better reflect technology uncertainty and improve comparability across studies.

Power plant cost estimation

Regression analysis

Meta-analysis

Cost of carbon abatement

Carbon capture and storage

Author

O. Akbilgic

University of Calgary

University of Tennessee

G. Doluweera

University of Calgary

Canadian Energy Research Institute

Maryam Mahmoudkhani

Chalmers, Energy and Environment, Industrial Energy Systems and Technologies

J. Bergerson

University of Calgary

Applied Energy

0306-2619 (ISSN) 18729118 (eISSN)

Vol. 159 11-18

Subject Categories

Other Environmental Engineering

DOI

10.1016/j.apenergy.2015.08.056

More information

Latest update

8/19/2020