Bayesian state-space synthetic control method for deforestation baseline estimation for forest carbon credits

Carbon credits from the reducing emissions from deforestation and degradation (REDD+) projects have been criticized for issuing junk carbon credits due to invalid ex-ante baselines. Recently, the concept of ex-post baseline has been discussed to overcome the criticism, while ex-ante baseline is stil...

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Veröffentlicht in:Environmental Data Science 2024, Vol.3, Article e6
Hauptverfasser: Takahata, Keisuke, Suetsugu, Hiroshi, Fukaya, Keiichi, Shirota, Shinichiro
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Sprache:eng
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Zusammenfassung:Carbon credits from the reducing emissions from deforestation and degradation (REDD+) projects have been criticized for issuing junk carbon credits due to invalid ex-ante baselines. Recently, the concept of ex-post baseline has been discussed to overcome the criticism, while ex-ante baseline is still necessary for project financing and risk assessment. To address this issue, we propose a Bayesian state-space model that integrates ex-ante baseline projection and ex-post dynamic baseline updating in a unified manner. Our approach provides a tool for appropriate risk assessment and performance evaluation of REDD+ projects. We apply the proposed model to a REDD+ project in Brazil and show that it may have had a small, positive effect but has been overcredited. We also demonstrate that the 90% predictive interval of the ex-ante baseline includes the ex-post baseline, implying that our ex-ante estimation can work effectively.
ISSN:2634-4602
2634-4602
DOI:10.1017/eds.2024.5