Authors:
Dr. Chris McLinden | Environment and Climate Change Canada | Canada
James Smith | Environment and Climate Change Canada
Dr. Ray Nassar | Environment and Climate Change Canada
Dr. Christopher Sioris | Environment and Climate Change Canada
Dr. Debora Griffin | Environment and Climate Change Canada
Dr. Felix Vogel | Environment and Climate Change Canada
Dr. Elton Chan | Environment and Climate Change Canada
Imman Jami | Environment and Climate Change Canada
Neda Amralah | Environment and Climate Change Canada
Eric Legault-Ouellet | Environment and Climate Change Canada
Alain Malo | Environment and Climate Change Canada
Yan Liu | Alberta Environment and Parks
Dr. Cristen Adams | Alberta Environment and Parks
Through multiple mechanisms, the Government of Canada is acquiring up to 100 scenes from GHGSat, a private company that has developed and launched three commercial, high spatial resolution methane-sensing nano-satellites. GHGSat targets a location, acquires 1.6 um spectra across a 12x12 km2 scene at a 25-50 m spatial resolution using a Fabry-Perot spectrometer, and from this derives excess-methane for each pixel in the scene. If a plume is detected, GHGSat then estimates the methane emission rate and its uncertainty using an Integrated Mass Enhancement approach. Beginning with excess methane scenes, the goal of this project is to independently evaluate the quality of GHGSat observations, with a focus on understanding detection limits and emissions accuracy, and ultimately its utility for methane emissions monitoring in Canada. This paper will describe results from an initial evaluation, including quantifying the precision of the excess-methane for all scenes acquired to date, and how their precision varies with factors such as reflectivity and solar zenith angle. Precision is important as it significantly influences the emissions rate detection limit. Further, the GHGSat emissions algorithm will be implemented as completely as possible and applied to scenes with identified plumes. Alternative emissions algorithms will also be applied to understand how emissions rates vary among them and the strengths and weaknesses of each method. The final activity is generating synthetic GHGSat observations using the MLDP (Modèle Lagrangien de dispersion de particules) dispersion model run at high spatial resolution together with GHGSat instrument characteristics such as spatial resolution and calculated precision. These synthetic observations will be used to further understand GHGSat performance through different emissions estimation methodologies and detection limits, particularly at locations for which GHGSat scenes are not available.