Creating a Permafrost Discovery Gateway - Providing Researchers and the Public with access to arctic data

Warming climate is causing rapid and significant change to permafrost in the Arctic region. Fortunately a large quantity of satellite data is available for analysis. The goal of the Permafrost Discovery Gateway is to a) enable the creation of pan-Arctic geospatial products and b) make them accessibl...

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Main Authors: Nicholson, Todd, Marini, Luigi, McHenry, Kenton, Witharana, Chandi, Udawalpola, Rajitha, Walker, Lauren, Jones, Matt, Thiessen-Bock, Robyn, Nitze, Ingmar, Wind, Gala, Jones, Chris, Liljedahl, Anna
Format: Conference Object
Language:unknown
Published: Zenodo 2021
Subjects:
Ice
Online Access:https://dx.doi.org/10.5281/zenodo.5569810
https://zenodo.org/record/5569810
id ftdatacite:10.5281/zenodo.5569810
record_format openpolar
spelling ftdatacite:10.5281/zenodo.5569810 2023-05-15T14:40:10+02:00 Creating a Permafrost Discovery Gateway - Providing Researchers and the Public with access to arctic data Nicholson, Todd Marini, Luigi McHenry, Kenton Witharana, Chandi Udawalpola, Rajitha Walker, Lauren Jones, Matt Thiessen-Bock, Robyn Nitze, Ingmar Wind, Gala Jones, Chris Liljedahl, Anna 2021 https://dx.doi.org/10.5281/zenodo.5569810 https://zenodo.org/record/5569810 unknown Zenodo https://zenodo.org/communities/gateways-2021 https://dx.doi.org/10.5281/zenodo.5569811 https://zenodo.org/communities/gateways-2021 Open Access Creative Commons Attribution 4.0 International https://creativecommons.org/licenses/by/4.0/legalcode cc-by-4.0 info:eu-repo/semantics/openAccess CC-BY permafrost arctic global warming kubernetes geospatial satellite machine learning visualization climate ConferencePaper Article 2021 ftdatacite https://doi.org/10.5281/zenodo.5569810 https://doi.org/10.5281/zenodo.5569811 2021-11-05T12:55:41Z Warming climate is causing rapid and significant change to permafrost in the Arctic region. Fortunately a large quantity of satellite data is available for analysis. The goal of the Permafrost Discovery Gateway is to a) enable the creation of pan-Arctic geospatial products and b) make them accessible to both scientists and the public through visualization and analysis tools. To achieve the development of large geospatial data we are building a science gateway to manage hybrid machine learning pipelines using both Cloud and HPC Resources. Part of this pipeline takes high resolution satellite imagery and maps permafrost thaw features across the Arctic region. This novel high performance image analysis framework, Mapping application for Arctic Permafrost Land Environment (MAPLE), detects ice wedge polygons from very high resolution optical imagery data archived at the Polar Geospatial Center, in three steps. The first step is image preprocessing, the second is DLCNN (Deep Learning Convolutional Neural Network) prediction, followed by a third post-processing step. The first and third steps have CPU implementations, but the DLCNN requires GPU resources. Furthermore we create geospatial datasets of lake area change, fire scars and retrogressive thaw slumps, which occurred over the past 20 years across the Arctic permafrost region. These datasets are based on Landsat, which are pre-processed through Google Earth Engine and further analyzed using machine learning and geospatial data analysis in an automated processing pipeline. For visualization, we incorporate Cesium as a 3D tile-based Imagery Viewer that allows exploration of pan-Arctic, sub-meter map products over time and can be exported as publication-quality map images. We also incorporate the Fluid Earth Viewer to enable global and regional visualization of Arctic data products over time. A third visualization tool will include the 2D-4D graph plotting of the big geospatial data. We host data on an instance of Clowder using a Kubernetes cluster hosted on NCSA Radiant Openstack. We have adapted existing workflows (MAPLE and the analysis of data from Google Earth engine) as Clowder information extractors. Jobs that do not require GPU resources are executed in the local Clowder cluster, while those that require GPU resources are submitted to external clusters , such as XSEDE Bridges2, and the results uploaded back to the Clowder instance. We are in the process of automating the data ingestion and processing step. Together, these components provide a starting environment to support permafrost science. Our long term goal is to apply lessons learned from implementing these solutions for specific use cases to other research questions around the study of the Arctic region. Conference Object Arctic Global warming Ice permafrost wedge* DataCite Metadata Store (German National Library of Science and Technology) Arctic
institution Open Polar
collection DataCite Metadata Store (German National Library of Science and Technology)
op_collection_id ftdatacite
language unknown
topic permafrost
arctic
global warming
kubernetes
geospatial
satellite
machine learning
visualization
climate
spellingShingle permafrost
arctic
global warming
kubernetes
geospatial
satellite
machine learning
visualization
climate
Nicholson, Todd
Marini, Luigi
McHenry, Kenton
Witharana, Chandi
Udawalpola, Rajitha
Walker, Lauren
Jones, Matt
Thiessen-Bock, Robyn
Nitze, Ingmar
Wind, Gala
Jones, Chris
Liljedahl, Anna
Creating a Permafrost Discovery Gateway - Providing Researchers and the Public with access to arctic data
topic_facet permafrost
arctic
global warming
kubernetes
geospatial
satellite
machine learning
visualization
climate
description Warming climate is causing rapid and significant change to permafrost in the Arctic region. Fortunately a large quantity of satellite data is available for analysis. The goal of the Permafrost Discovery Gateway is to a) enable the creation of pan-Arctic geospatial products and b) make them accessible to both scientists and the public through visualization and analysis tools. To achieve the development of large geospatial data we are building a science gateway to manage hybrid machine learning pipelines using both Cloud and HPC Resources. Part of this pipeline takes high resolution satellite imagery and maps permafrost thaw features across the Arctic region. This novel high performance image analysis framework, Mapping application for Arctic Permafrost Land Environment (MAPLE), detects ice wedge polygons from very high resolution optical imagery data archived at the Polar Geospatial Center, in three steps. The first step is image preprocessing, the second is DLCNN (Deep Learning Convolutional Neural Network) prediction, followed by a third post-processing step. The first and third steps have CPU implementations, but the DLCNN requires GPU resources. Furthermore we create geospatial datasets of lake area change, fire scars and retrogressive thaw slumps, which occurred over the past 20 years across the Arctic permafrost region. These datasets are based on Landsat, which are pre-processed through Google Earth Engine and further analyzed using machine learning and geospatial data analysis in an automated processing pipeline. For visualization, we incorporate Cesium as a 3D tile-based Imagery Viewer that allows exploration of pan-Arctic, sub-meter map products over time and can be exported as publication-quality map images. We also incorporate the Fluid Earth Viewer to enable global and regional visualization of Arctic data products over time. A third visualization tool will include the 2D-4D graph plotting of the big geospatial data. We host data on an instance of Clowder using a Kubernetes cluster hosted on NCSA Radiant Openstack. We have adapted existing workflows (MAPLE and the analysis of data from Google Earth engine) as Clowder information extractors. Jobs that do not require GPU resources are executed in the local Clowder cluster, while those that require GPU resources are submitted to external clusters , such as XSEDE Bridges2, and the results uploaded back to the Clowder instance. We are in the process of automating the data ingestion and processing step. Together, these components provide a starting environment to support permafrost science. Our long term goal is to apply lessons learned from implementing these solutions for specific use cases to other research questions around the study of the Arctic region.
format Conference Object
author Nicholson, Todd
Marini, Luigi
McHenry, Kenton
Witharana, Chandi
Udawalpola, Rajitha
Walker, Lauren
Jones, Matt
Thiessen-Bock, Robyn
Nitze, Ingmar
Wind, Gala
Jones, Chris
Liljedahl, Anna
author_facet Nicholson, Todd
Marini, Luigi
McHenry, Kenton
Witharana, Chandi
Udawalpola, Rajitha
Walker, Lauren
Jones, Matt
Thiessen-Bock, Robyn
Nitze, Ingmar
Wind, Gala
Jones, Chris
Liljedahl, Anna
author_sort Nicholson, Todd
title Creating a Permafrost Discovery Gateway - Providing Researchers and the Public with access to arctic data
title_short Creating a Permafrost Discovery Gateway - Providing Researchers and the Public with access to arctic data
title_full Creating a Permafrost Discovery Gateway - Providing Researchers and the Public with access to arctic data
title_fullStr Creating a Permafrost Discovery Gateway - Providing Researchers and the Public with access to arctic data
title_full_unstemmed Creating a Permafrost Discovery Gateway - Providing Researchers and the Public with access to arctic data
title_sort creating a permafrost discovery gateway - providing researchers and the public with access to arctic data
publisher Zenodo
publishDate 2021
url https://dx.doi.org/10.5281/zenodo.5569810
https://zenodo.org/record/5569810
geographic Arctic
geographic_facet Arctic
genre Arctic
Global warming
Ice
permafrost
wedge*
genre_facet Arctic
Global warming
Ice
permafrost
wedge*
op_relation https://zenodo.org/communities/gateways-2021
https://dx.doi.org/10.5281/zenodo.5569811
https://zenodo.org/communities/gateways-2021
op_rights Open Access
Creative Commons Attribution 4.0 International
https://creativecommons.org/licenses/by/4.0/legalcode
cc-by-4.0
info:eu-repo/semantics/openAccess
op_rightsnorm CC-BY
op_doi https://doi.org/10.5281/zenodo.5569810
https://doi.org/10.5281/zenodo.5569811
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