Timely prediction potential of landslide early warning systems with multispectral remote sensing: a conceptual approach tested in the Sattelkar, Austria

<p>While optical remote sensing has demonstrated its capabilities for landslide detection and monitoring, spatial and temporal demands for landslide early warning systems (LEWSs) had not been met until recently. We introduce a novel conceptual approach to structure and quantitatively assess le...

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Main Authors: D. Hermle, M. Keuschnig, I. Hartmeyer, R. Delleske, M. Krautblatter
Format: Article
Language:English
Published: Copernicus Publications 2021-09-01
Series:Natural Hazards and Earth System Sciences
Online Access:https://nhess.copernicus.org/articles/21/2753/2021/nhess-21-2753-2021.pdf
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spelling doaj-57a561ddfb804211bb0049c725a762592021-09-08T11:54:10ZengCopernicus PublicationsNatural Hazards and Earth System Sciences1561-86331684-99812021-09-01212753277210.5194/nhess-21-2753-2021Timely prediction potential of landslide early warning systems with multispectral remote sensing: a conceptual approach tested in the Sattelkar, AustriaD. Hermle0M. Keuschnig1I. Hartmeyer2R. Delleske3M. Krautblatter4Landslide Research Group, Technical University of Munich, Munich, GermanyGEORESEARCH, Forschungsgesellschaft mbH, Puch, AustriaGEORESEARCH, Forschungsgesellschaft mbH, Puch, AustriaGEORESEARCH, Forschungsgesellschaft mbH, Puch, AustriaLandslide Research Group, Technical University of Munich, Munich, Germany<p>While optical remote sensing has demonstrated its capabilities for landslide detection and monitoring, spatial and temporal demands for landslide early warning systems (LEWSs) had not been met until recently. We introduce a novel conceptual approach to structure and quantitatively assess lead time for LEWSs. We analysed “time to warning” as a sequence: (i) time to collect, (ii) time to process and (iii) time to evaluate relevant optical data. The difference between the time to warning and “forecasting window” (i.e. time from hazard becoming predictable until event) is the lead time for reactive measures. We tested digital image correlation (DIC) of best-suited spatiotemporal techniques, i.e. 3 m resolution PlanetScope daily imagery and 0.16 m resolution unmanned aerial system (UAS)-derived orthophotos to reveal fast ground displacement and acceleration of a deep-seated, complex alpine mass movement leading to massive debris flow events. The time to warning for the UAS/PlanetScope totals 31/21 h and is comprised of time to (i) collect – 12/14 h, (ii) process – 17/5 h and (iii) evaluate – 2/2 h, which is well below the forecasting window for recent benchmarks and facilitates a lead time for reactive measures. We show optical remote sensing data can support LEWSs with a sufficiently fast processing time, demonstrating the feasibility of optical sensors for LEWSs.</p>https://nhess.copernicus.org/articles/21/2753/2021/nhess-21-2753-2021.pdf
collection DOAJ
language English
format Article
sources DOAJ
author D. Hermle
M. Keuschnig
I. Hartmeyer
R. Delleske
M. Krautblatter
spellingShingle D. Hermle
M. Keuschnig
I. Hartmeyer
R. Delleske
M. Krautblatter
Timely prediction potential of landslide early warning systems with multispectral remote sensing: a conceptual approach tested in the Sattelkar, Austria
Natural Hazards and Earth System Sciences
author_facet D. Hermle
M. Keuschnig
I. Hartmeyer
R. Delleske
M. Krautblatter
author_sort D. Hermle
title Timely prediction potential of landslide early warning systems with multispectral remote sensing: a conceptual approach tested in the Sattelkar, Austria
title_short Timely prediction potential of landslide early warning systems with multispectral remote sensing: a conceptual approach tested in the Sattelkar, Austria
title_full Timely prediction potential of landslide early warning systems with multispectral remote sensing: a conceptual approach tested in the Sattelkar, Austria
title_fullStr Timely prediction potential of landslide early warning systems with multispectral remote sensing: a conceptual approach tested in the Sattelkar, Austria
title_full_unstemmed Timely prediction potential of landslide early warning systems with multispectral remote sensing: a conceptual approach tested in the Sattelkar, Austria
title_sort timely prediction potential of landslide early warning systems with multispectral remote sensing: a conceptual approach tested in the sattelkar, austria
publisher Copernicus Publications
series Natural Hazards and Earth System Sciences
issn 1561-8633
1684-9981
publishDate 2021-09-01
description <p>While optical remote sensing has demonstrated its capabilities for landslide detection and monitoring, spatial and temporal demands for landslide early warning systems (LEWSs) had not been met until recently. We introduce a novel conceptual approach to structure and quantitatively assess lead time for LEWSs. We analysed “time to warning” as a sequence: (i) time to collect, (ii) time to process and (iii) time to evaluate relevant optical data. The difference between the time to warning and “forecasting window” (i.e. time from hazard becoming predictable until event) is the lead time for reactive measures. We tested digital image correlation (DIC) of best-suited spatiotemporal techniques, i.e. 3 m resolution PlanetScope daily imagery and 0.16 m resolution unmanned aerial system (UAS)-derived orthophotos to reveal fast ground displacement and acceleration of a deep-seated, complex alpine mass movement leading to massive debris flow events. The time to warning for the UAS/PlanetScope totals 31/21 h and is comprised of time to (i) collect – 12/14 h, (ii) process – 17/5 h and (iii) evaluate – 2/2 h, which is well below the forecasting window for recent benchmarks and facilitates a lead time for reactive measures. We show optical remote sensing data can support LEWSs with a sufficiently fast processing time, demonstrating the feasibility of optical sensors for LEWSs.</p>
url https://nhess.copernicus.org/articles/21/2753/2021/nhess-21-2753-2021.pdf
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