Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Towards A Global Landslide Forecast

View through CrossRef
<p>Numerical weather models are used in a variety of applications, including a growing body of landslide hazard assessment models. Heretofore, these applications have not included global landslide forecasts but this remains an important gap in better understanding the future spatiotemporal impact that landslides can have on populations and infrastructure. We explore the feasibility of using a precipitation forecast within the Landslide Hazard Assessment for Situational Awareness (LHASA) v2.0 model, which is designed to provide estimates of potential landslide hazard for rainfall triggers. Data on precipitation, soil moisture, and snow mass is available from NASA’s Goddard Earth Observing System Forward Processing product (GEOS-FP), which provides global scale products in both forecast and assimilation modes. These variables are incorporated into the LHASA Forecast model by replacing satellite rainfall estimates from the Integrated Multi-satellitE Retrievals for Global Precipitation Measurement (IMERG) with forecasted rainfall from GEOS-FP. The LHASA Forecast model also uses soil moisture and snow mass estimates from GEOS-FP rather than soil moisture and snow mass data from the Soil Moisture Active-Passive (SMAP) level 4 product. The LHASA Forecast model was run retrospectively at a daily scale with forecasted precipitation with up to a 3 day lead time. Results are compared with the LHASA v2.0 model that uses SMAP and IMERG data. Analysis of the LHASA Forecast system was conducted in several different ways. First, performance was assessed with categorical and continuous statics to determine how closely the forecasted probabilities match that of the LHASA v2.0 nowcast landslide probabilities. The outputs of LHASA v2.0 and LHASA Forecast are also compared for several high impact rainfall events that triggered landslides to determine the skill in identifying the potential high hazard areas. Preliminary results suggest that for large precipitation events (e.g. tropical storms), the same general hazard areas are identified; however, this can vary largely by geography and precipitation regime, owing to differences in spatial resolution and phase errors of the forecasted precipitation. This presentation outlines the preliminary work to address forecasted landslide hazard globally and discusses next steps towards improving landslide forecast skill.</p><p> </p>
Title: Towards A Global Landslide Forecast
Description:
<p>Numerical weather models are used in a variety of applications, including a growing body of landslide hazard assessment models.
Heretofore, these applications have not included global landslide forecasts but this remains an important gap in better understanding the future spatiotemporal impact that landslides can have on populations and infrastructure.
We explore the feasibility of using a precipitation forecast within the Landslide Hazard Assessment for Situational Awareness (LHASA) v2.
0 model, which is designed to provide estimates of potential landslide hazard for rainfall triggers.
Data on precipitation, soil moisture, and snow mass is available from NASA’s Goddard Earth Observing System Forward Processing product (GEOS-FP), which provides global scale products in both forecast and assimilation modes.
These variables are incorporated into the LHASA Forecast model by replacing satellite rainfall estimates from the Integrated Multi-satellitE Retrievals for Global Precipitation Measurement (IMERG) with forecasted rainfall from GEOS-FP.
The LHASA Forecast model also uses soil moisture and snow mass estimates from GEOS-FP rather than soil moisture and snow mass data from the Soil Moisture Active-Passive (SMAP) level 4 product.
The LHASA Forecast model was run retrospectively at a daily scale with forecasted precipitation with up to a 3 day lead time.
Results are compared with the LHASA v2.
0 model that uses SMAP and IMERG data.
Analysis of the LHASA Forecast system was conducted in several different ways.
First, performance was assessed with categorical and continuous statics to determine how closely the forecasted probabilities match that of the LHASA v2.
0 nowcast landslide probabilities.
The outputs of LHASA v2.
0 and LHASA Forecast are also compared for several high impact rainfall events that triggered landslides to determine the skill in identifying the potential high hazard areas.
Preliminary results suggest that for large precipitation events (e.
g.
tropical storms), the same general hazard areas are identified; however, this can vary largely by geography and precipitation regime, owing to differences in spatial resolution and phase errors of the forecasted precipitation.
This presentation outlines the preliminary work to address forecasted landslide hazard globally and discusses next steps towards improving landslide forecast skill.
</p><p> </p>.

Related Results

Meteorological drivers of seasonal motion at the Barry Arm Landslide, Prince William Sound, Alaska
Meteorological drivers of seasonal motion at the Barry Arm Landslide, Prince William Sound, Alaska
Global climate change creates geologic hazard cascades as the cryosphere experiences warming. The rapid retreat of Barry Glacier, a tidewater glacier in Prince William Sound, Alask...
Using satellite soil moisture and rainfall in the Landslide Hazard Assessment for Situational Awareness system
Using satellite soil moisture and rainfall in the Landslide Hazard Assessment for Situational Awareness system
<p>The Landslide Hazard Assessment for Situational Awareness system (LHASA) gives a global view of landslide hazard in nearly real time. Currently, it is being upgrad...
Landslide hydro-meteorological thresholds in Rwanda
Landslide hydro-meteorological thresholds in Rwanda
<p>For the development of regional landslide early warning systems, empirical-statistical thresholds are of crucial importance. The thresholds indicate the meteorolog...
Comparing the performance of Machine Learning Methods in landslide susceptibility modelling
Comparing the performance of Machine Learning Methods in landslide susceptibility modelling
Landslide phenomena are considered as one of the most significant geohazards with a great impact on the man-made and natural environment. If one search the scientific literature, t...
Landslide risk for the territory of Bulgaria by administrative districts
Landslide risk for the territory of Bulgaria by administrative districts
An assessment of the landslide risk (Rls) for the territory of Bulgaria by administrative districts has been made by combining the vulnerability (V) and landslide hazard (Hls) maps...
Guidelines Of Indicator Based Landslide Vulnerability Analysis and Risk Classification for Critical Infrastructure in Malaysia
Guidelines Of Indicator Based Landslide Vulnerability Analysis and Risk Classification for Critical Infrastructure in Malaysia
Landslide is considered as the natural hazards that can cause harms to the environment, economy,and critical infrastructure. Damage to the critical infrastructure will further disr...

Back to Top