DataSheet2_Evaluation of Remote Mapping Techniques for Earthquake-Triggered Landslide Inventories in an Urban Subarctic Environment: A Case Study of the 2018 Anchorage, Alaska Earthquake.docx
Earthquake-induced landslide inventories can be generated using field observations but doing so can be challenging if the affected landscape is large or inaccessible after an earthquake. Remote sensing data can be used to help overcome these limitations. The effectiveness of remotely sensed data to...
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Online Access: | https://doi.org/10.3389/feart.2021.673137.s002 https://figshare.com/articles/dataset/DataSheet2_Evaluation_of_Remote_Mapping_Techniques_for_Earthquake-Triggered_Landslide_Inventories_in_an_Urban_Subarctic_Environment_A_Case_Study_of_the_2018_Anchorage_Alaska_Earthquake_docx/14760768 |
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ftfrontimediafig:oai:figshare.com:article/14760768 2023-05-15T18:28:40+02:00 DataSheet2_Evaluation of Remote Mapping Techniques for Earthquake-Triggered Landslide Inventories in an Urban Subarctic Environment: A Case Study of the 2018 Anchorage, Alaska Earthquake.docx S. N. Martinez L. N. Schaefer K. E. Allstadt E. M. Thompson 2021-06-10T05:15:14Z https://doi.org/10.3389/feart.2021.673137.s002 https://figshare.com/articles/dataset/DataSheet2_Evaluation_of_Remote_Mapping_Techniques_for_Earthquake-Triggered_Landslide_Inventories_in_an_Urban_Subarctic_Environment_A_Case_Study_of_the_2018_Anchorage_Alaska_Earthquake_docx/14760768 unknown doi:10.3389/feart.2021.673137.s002 https://figshare.com/articles/dataset/DataSheet2_Evaluation_of_Remote_Mapping_Techniques_for_Earthquake-Triggered_Landslide_Inventories_in_an_Urban_Subarctic_Environment_A_Case_Study_of_the_2018_Anchorage_Alaska_Earthquake_docx/14760768 CC BY 4.0 CC-BY Solid Earth Sciences Climate Science Atmospheric Sciences not elsewhere classified Exploration Geochemistry Inorganic Geochemistry Isotope Geochemistry Organic Geochemistry Geochemistry not elsewhere classified Igneous and Metamorphic Petrology Ore Deposit Petrology Palaeontology (incl. Palynology) Structural Geology Tectonics Volcanology Geology not elsewhere classified Seismology and Seismic Exploration Glaciology Hydrogeology Natural Hazards Quaternary Environments Earth Sciences not elsewhere classified Evolutionary Impacts of Climate Change NDVI amplitude change detection DEM differencing image thresholding Google Earth Engine (GEE) urban Dataset 2021 ftfrontimediafig https://doi.org/10.3389/feart.2021.673137.s002 2021-06-16T23:02:30Z Earthquake-induced landslide inventories can be generated using field observations but doing so can be challenging if the affected landscape is large or inaccessible after an earthquake. Remote sensing data can be used to help overcome these limitations. The effectiveness of remotely sensed data to produce landslide inventories, however, is dependent on a variety of factors, such as the extent of coverage, timing, and data quality, as well as environmental factors such as atmospheric interference (e.g., clouds, water vapor) or snow and vegetation cover. With these challenges in mind, we use a combination of field observations and remote sensing data from multispectral, light detection and ranging (lidar), and synthetic aperture radar (SAR) sensors to produce a ground failure inventory for the urban areas affected by the 2018 magnitude (M w ) 7.1 Anchorage, Alaska earthquake. The earthquake occurred during late November at high latitude (∼61°N), and the lack of sunlight, persistent cloud cover, and snow cover that occurred after the earthquake made remote mapping challenging for this event. Despite these challenges, 43 landslides were manually mapped and classified using a combination of the datasets mentioned previously. Using this manually compiled inventory, we investigate the individual performance and reliability of three remote sensing techniques in this environment not typically hospitable to remotely sensed mapping. We found that differencing pre- and post-event normalized difference vegetation index maps and lidar worked best for identifying soil slumps and rapid soil flows, but not as well for small soil slides, soil block slides and rock falls. The SAR-based methods did not work well for identifying any landslide types because of high noise levels likely related to snow. Some landslides, especially those that resulted in minor surface displacement, were identifiable only from the field observations. This work highlights the importance of the rapid collection of field observations and provides guidance ... Dataset Subarctic Alaska Frontiers: Figshare Anchorage |
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Open Polar |
collection |
Frontiers: Figshare |
op_collection_id |
ftfrontimediafig |
language |
unknown |
topic |
Solid Earth Sciences Climate Science Atmospheric Sciences not elsewhere classified Exploration Geochemistry Inorganic Geochemistry Isotope Geochemistry Organic Geochemistry Geochemistry not elsewhere classified Igneous and Metamorphic Petrology Ore Deposit Petrology Palaeontology (incl. Palynology) Structural Geology Tectonics Volcanology Geology not elsewhere classified Seismology and Seismic Exploration Glaciology Hydrogeology Natural Hazards Quaternary Environments Earth Sciences not elsewhere classified Evolutionary Impacts of Climate Change NDVI amplitude change detection DEM differencing image thresholding Google Earth Engine (GEE) urban |
spellingShingle |
Solid Earth Sciences Climate Science Atmospheric Sciences not elsewhere classified Exploration Geochemistry Inorganic Geochemistry Isotope Geochemistry Organic Geochemistry Geochemistry not elsewhere classified Igneous and Metamorphic Petrology Ore Deposit Petrology Palaeontology (incl. Palynology) Structural Geology Tectonics Volcanology Geology not elsewhere classified Seismology and Seismic Exploration Glaciology Hydrogeology Natural Hazards Quaternary Environments Earth Sciences not elsewhere classified Evolutionary Impacts of Climate Change NDVI amplitude change detection DEM differencing image thresholding Google Earth Engine (GEE) urban S. N. Martinez L. N. Schaefer K. E. Allstadt E. M. Thompson DataSheet2_Evaluation of Remote Mapping Techniques for Earthquake-Triggered Landslide Inventories in an Urban Subarctic Environment: A Case Study of the 2018 Anchorage, Alaska Earthquake.docx |
topic_facet |
Solid Earth Sciences Climate Science Atmospheric Sciences not elsewhere classified Exploration Geochemistry Inorganic Geochemistry Isotope Geochemistry Organic Geochemistry Geochemistry not elsewhere classified Igneous and Metamorphic Petrology Ore Deposit Petrology Palaeontology (incl. Palynology) Structural Geology Tectonics Volcanology Geology not elsewhere classified Seismology and Seismic Exploration Glaciology Hydrogeology Natural Hazards Quaternary Environments Earth Sciences not elsewhere classified Evolutionary Impacts of Climate Change NDVI amplitude change detection DEM differencing image thresholding Google Earth Engine (GEE) urban |
description |
Earthquake-induced landslide inventories can be generated using field observations but doing so can be challenging if the affected landscape is large or inaccessible after an earthquake. Remote sensing data can be used to help overcome these limitations. The effectiveness of remotely sensed data to produce landslide inventories, however, is dependent on a variety of factors, such as the extent of coverage, timing, and data quality, as well as environmental factors such as atmospheric interference (e.g., clouds, water vapor) or snow and vegetation cover. With these challenges in mind, we use a combination of field observations and remote sensing data from multispectral, light detection and ranging (lidar), and synthetic aperture radar (SAR) sensors to produce a ground failure inventory for the urban areas affected by the 2018 magnitude (M w ) 7.1 Anchorage, Alaska earthquake. The earthquake occurred during late November at high latitude (∼61°N), and the lack of sunlight, persistent cloud cover, and snow cover that occurred after the earthquake made remote mapping challenging for this event. Despite these challenges, 43 landslides were manually mapped and classified using a combination of the datasets mentioned previously. Using this manually compiled inventory, we investigate the individual performance and reliability of three remote sensing techniques in this environment not typically hospitable to remotely sensed mapping. We found that differencing pre- and post-event normalized difference vegetation index maps and lidar worked best for identifying soil slumps and rapid soil flows, but not as well for small soil slides, soil block slides and rock falls. The SAR-based methods did not work well for identifying any landslide types because of high noise levels likely related to snow. Some landslides, especially those that resulted in minor surface displacement, were identifiable only from the field observations. This work highlights the importance of the rapid collection of field observations and provides guidance ... |
format |
Dataset |
author |
S. N. Martinez L. N. Schaefer K. E. Allstadt E. M. Thompson |
author_facet |
S. N. Martinez L. N. Schaefer K. E. Allstadt E. M. Thompson |
author_sort |
S. N. Martinez |
title |
DataSheet2_Evaluation of Remote Mapping Techniques for Earthquake-Triggered Landslide Inventories in an Urban Subarctic Environment: A Case Study of the 2018 Anchorage, Alaska Earthquake.docx |
title_short |
DataSheet2_Evaluation of Remote Mapping Techniques for Earthquake-Triggered Landslide Inventories in an Urban Subarctic Environment: A Case Study of the 2018 Anchorage, Alaska Earthquake.docx |
title_full |
DataSheet2_Evaluation of Remote Mapping Techniques for Earthquake-Triggered Landslide Inventories in an Urban Subarctic Environment: A Case Study of the 2018 Anchorage, Alaska Earthquake.docx |
title_fullStr |
DataSheet2_Evaluation of Remote Mapping Techniques for Earthquake-Triggered Landslide Inventories in an Urban Subarctic Environment: A Case Study of the 2018 Anchorage, Alaska Earthquake.docx |
title_full_unstemmed |
DataSheet2_Evaluation of Remote Mapping Techniques for Earthquake-Triggered Landslide Inventories in an Urban Subarctic Environment: A Case Study of the 2018 Anchorage, Alaska Earthquake.docx |
title_sort |
datasheet2_evaluation of remote mapping techniques for earthquake-triggered landslide inventories in an urban subarctic environment: a case study of the 2018 anchorage, alaska earthquake.docx |
publishDate |
2021 |
url |
https://doi.org/10.3389/feart.2021.673137.s002 https://figshare.com/articles/dataset/DataSheet2_Evaluation_of_Remote_Mapping_Techniques_for_Earthquake-Triggered_Landslide_Inventories_in_an_Urban_Subarctic_Environment_A_Case_Study_of_the_2018_Anchorage_Alaska_Earthquake_docx/14760768 |
geographic |
Anchorage |
geographic_facet |
Anchorage |
genre |
Subarctic Alaska |
genre_facet |
Subarctic Alaska |
op_relation |
doi:10.3389/feart.2021.673137.s002 https://figshare.com/articles/dataset/DataSheet2_Evaluation_of_Remote_Mapping_Techniques_for_Earthquake-Triggered_Landslide_Inventories_in_an_Urban_Subarctic_Environment_A_Case_Study_of_the_2018_Anchorage_Alaska_Earthquake_docx/14760768 |
op_rights |
CC BY 4.0 |
op_rightsnorm |
CC-BY |
op_doi |
https://doi.org/10.3389/feart.2021.673137.s002 |
_version_ |
1766211233657126912 |