TY - JOUR
T1 - Large-scale probabilistic identification of boreal peatlands using Google Earth Engine, open-access satellite data, and machine learning
AU - DeLancey, Evan Ross
AU - Kariyeva, Jahan
AU - Bried, Jason T.
AU - Hird, Jennifer N.
N1 - Funding Information:
Funding in support of this work was received from the Alberta Environment and Parks and the Government of Alberta’s Land Use Secretariat and from the Alberta Biodiversity Monitoring Institute (ABMI). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript. This work was funded by the Alberta Biodiversity Monitoring Institute (ABMI). LiDAR data was provided by the Government of Alberta. Funding in support of this work was received from the Alberta Environment and Parks and the Government of Alberta’s Land Use Secretariat. We thank our colleagues from the Alberta Environment and Parks who provided feedback that assisted the research. Thanks to Nieta World for manuscript editing and proof reading.
Publisher Copyright:
© 2019 DeLancey et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
PY - 2019/6
Y1 - 2019/6
N2 - Freely-available satellite data streams and the ability to process these data on cloud-computing platforms such as Google Earth Engine have made frequent, large-scale landcover mapping at high resolution a real possibility. In this paper we apply these technologies, along with machine learning, to the mapping of peatlands–a landcover class that is critical for preserving biodiversity, helping to address climate change impacts, and providing ecosystem services, e.g., carbon storage–in the Boreal Forest Natural Region of Alberta, Canada. We outline a data-driven, scientific framework that: compiles large amounts of Earth observation data sets (radar, optical, and LiDAR); examines the extracted variables for suitability in peatland modelling; optimizes model parameterization; and finally, predicts peatland occurrence across a large boreal area (397, 958 km2) of Alberta at 10 m spatial resolution (equalling 3.9 billion pixels across Alberta). The resulting peatland occurrence model shows an accuracy of 87% and a kappa statistic of 0.57 when compared to our validation data set. Differentiating peatlands from mineral wetlands achieved an accuracy of 69% and kappa statistic of 0.37. This data-driven approach is applicable at large geopolitical scales (e.g., provincial, national) for wetland and landcover inventories that support long-term, responsible resource management.
AB - Freely-available satellite data streams and the ability to process these data on cloud-computing platforms such as Google Earth Engine have made frequent, large-scale landcover mapping at high resolution a real possibility. In this paper we apply these technologies, along with machine learning, to the mapping of peatlands–a landcover class that is critical for preserving biodiversity, helping to address climate change impacts, and providing ecosystem services, e.g., carbon storage–in the Boreal Forest Natural Region of Alberta, Canada. We outline a data-driven, scientific framework that: compiles large amounts of Earth observation data sets (radar, optical, and LiDAR); examines the extracted variables for suitability in peatland modelling; optimizes model parameterization; and finally, predicts peatland occurrence across a large boreal area (397, 958 km2) of Alberta at 10 m spatial resolution (equalling 3.9 billion pixels across Alberta). The resulting peatland occurrence model shows an accuracy of 87% and a kappa statistic of 0.57 when compared to our validation data set. Differentiating peatlands from mineral wetlands achieved an accuracy of 69% and kappa statistic of 0.37. This data-driven approach is applicable at large geopolitical scales (e.g., provincial, national) for wetland and landcover inventories that support long-term, responsible resource management.
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U2 - 10.1371/journal.pone.0218165
DO - 10.1371/journal.pone.0218165
M3 - Article
C2 - 31206528
AN - SCOPUS:85067283097
SN - 1932-6203
VL - 14
JO - PLoS One
JF - PLoS One
IS - 6
M1 - e0218165
ER -