Title of article :
Assessment of an atmospheric transport model for annual inverse estimates of California greenhouse gas emissions
Author/Authors :
bagley, justin e. lawrence berkeley national laboratory, California, USA , jeong, seongeun lawrence berkeley national laboratory, Berkeley, USA , cui, xinguang lawrence berkeley national laboratory, Berkeley, USA , newman, sally california institute of technology, Pasadena, USA , zhang, jingsong university of california - air pollution research center - department of chemistry, California, USA , priest, chad university of california - air pollution research center - department of chemistry, California, USA , campos-pineda, mixtli university of california - air pollution research center - department of chemistry, California, USA , andrews, arlyn e. esrl, noaa, Colorado, USA , bianco, laura esrl, noaa, Colorado, USA , lloyd, matthew san jose state university - department of meteorology and climate science, San Jose, USA , lareau, neil san jose state university - department of meteorology and climate science, San Jose, USA , clements, craig san jose state university - department of meteorology and climate science, San Jose, USA , fischer, marc l. lawrence berkeley national laboratory, Berkeley, USA
From page :
1901
To page :
1918
Abstract :
Atmospheric inverse estimates of gas emissions depend on transport model predictions, hence driving a need to assess uncertainties in the transport model. In this study we assess the uncertainty in WRF-STILT (Weather Research and Forecasting and Stochastic Time-Inverted Lagrangian Transport) model predictions using a combination of meteorological and carbon monoxide (CO) measurements. WRF configurations were selected to minimize meteorological biases using meteorological measurements of winds and boundary layer depths from surface stations and radar wind profiler sites across California. We compare model predictions with CO measurements from four tower sites in California from June 2013 through May 2014 to assess the seasonal biases and random errors in predicted CO mixing ratios. In general, the seasonal mean biases in boundary layer wind speed ( ~ 0.5 m/s), direction ( ~ 15°), and boundary layer height ( ~ 200 m) were small. However, random errors were large (~1.5–3.0 m/s for wind speed, ~ 40–60° for wind direction, and ~ 300–500m for boundary layer height). Regression analysis of predicted and measured CO yielded near-unity slopes (i.e., within 1.0 ± 0.20) for the majority of sites and seasons, though a subset of sites and seasons exhibit larger (~30%) uncertainty, particularly when weak winds combined with complex terrain in the South Central Valley of California. Looking across sites and seasons, these results suggest that WRF-STILT simulations are sufficient to estimate emissions of CO to up to 15% on annual time scales across California.
Keywords :
gas emissions , transport model , WRF , STILT , carbon monoxide (CO)
Journal title :
Journal of Geophysical Research: Atmospheres
Journal title :
Journal of Geophysical Research: Atmospheres
Record number :
2729263
Link To Document :
بازگشت