De 13.00 a 14.30 h
salón 301
Abstract
Tracking CO2 emissions is key to effective climate policies and meeting decarbonization commitments. However, data on energy consumption and CO2 emissions are released annually with significant lags, posing a challenge to timely decision-making. This paper presents a panel nowcasting methodology for nowcasting the growth rate of energy consumption and CO2 emissions in the US. We estimate a panel MIDAS model of per-capita energy consumption growth using various predictors sampled at different frequencies. In a second step, panel quantile regression is used to estimate a bridge equation relating CO2 emissions to energy consumption. The resulting density nowcasts provide information about CO2 emissions growth and its uncertainty. Predictive accuracy is evaluated using a pseudo-out-of-sample study from 2009 to 2018. The most effective nowcasting model integrates information from all sampled predictors.