Tree Species Mapping Around Reclaimed Oil and Gas Wells Sites Using Hyperspectral and Light Detection and Ranging (LiDAR) Remote Sensing

Authors
James Banting
Resource Date:
2016
Page Length
131

Oil and gas activities in Alberta require disturbing forested lands, among other
ecosystems, in order to extract resources.  Due to the number of oil and gas sites requiring
reclamation, monitoring can be problematic.  Remote sensing provides cost-effective,
timely, and repeatable data of these areas in support of monitoring efforts.
Support Vector Machine (SVM) and Multiple Endmember Spectral Mixture
Analysis (MESMA) were tested in order to identify tree species around reclaimed and
abandoned well sites near Cold Lake, Alberta using CHRIS satellite imagery with and
without airborne LiDAR data.  A hierarchical classification approach was employed,
which achieved an accuracy of 83.4 % when using SVM together with CHRIS imagery
and LiDAR.  This positive result indicates the ability of remote sensing to support
reclamation management and monitoring objectives within Alberta’s forested areas