Javascript must be enabled to continue!
Predicting seasonal landslide activity with Bayesian inference
View through CrossRef
<p>Improving landslide prediction in time is key to reducing damage and fatalities in areas susceptible to landsliding. While most landslide early warning research has focused on establishing hydro-meteorological landslide thresholds on hourly to daily timescales, few studies globally have attempted to model or predict landslide seasonality. We use probabilistic models based on two intuitive metrics &#8212; counts of landslides and presence or absence of landslides &#8212; to predict landslide activity at monthly resolution. Our focus area is the Pacific Northwest region of the United States, which has one of the highest densities of landsliding in the country, and where seasonal landslide activity has been recognized but hardly quantified. We use Bayesian inference to combine data from five landslide inventories from the region with varying spatial and temporal coverage, data density, and reporting protocols to learn the regional pattern of seasonal landslide activity. Results of logistic and negative binomial regression show that the landslide season in the Pacific Northwest begins in November and is marked by credible increases in the probability of landsliding, average landslide intensity, and inter-annual variability. Landslide activity is highest between November and February, decreases from March through May, and stays low between June and October. Inter-annual variability in landslide activity is higher in winter than in summer months. These flexible models could be easily adapted to learn diverse seasonal patterns from other regions of the world, such as the East Asian Summer Monsoon peak observed in Japan or the Atlantic hurricane season fall peak seen in the Caribbean. Our results also show that Bayesian multi-level models are a promising way to combine data from multiple, seemingly incompatible landslide inventories from a single region with potentially wide-ranging future applications.</p>
Title: Predicting seasonal landslide activity with Bayesian inference
Description:
<p>Improving landslide prediction in time is key to reducing damage and fatalities in areas susceptible to landsliding.
While most landslide early warning research has focused on establishing hydro-meteorological landslide thresholds on hourly to daily timescales, few studies globally have attempted to model or predict landslide seasonality.
We use probabilistic models based on two intuitive metrics &#8212; counts of landslides and presence or absence of landslides &#8212; to predict landslide activity at monthly resolution.
Our focus area is the Pacific Northwest region of the United States, which has one of the highest densities of landsliding in the country, and where seasonal landslide activity has been recognized but hardly quantified.
We use Bayesian inference to combine data from five landslide inventories from the region with varying spatial and temporal coverage, data density, and reporting protocols to learn the regional pattern of seasonal landslide activity.
Results of logistic and negative binomial regression show that the landslide season in the Pacific Northwest begins in November and is marked by credible increases in the probability of landsliding, average landslide intensity, and inter-annual variability.
Landslide activity is highest between November and February, decreases from March through May, and stays low between June and October.
Inter-annual variability in landslide activity is higher in winter than in summer months.
These flexible models could be easily adapted to learn diverse seasonal patterns from other regions of the world, such as the East Asian Summer Monsoon peak observed in Japan or the Atlantic hurricane season fall peak seen in the Caribbean.
Our results also show that Bayesian multi-level models are a promising way to combine data from multiple, seemingly incompatible landslide inventories from a single region with potentially wide-ranging future applications.
</p>.
Related Results
Landslide size matters: a new spatial predictive paradigm
Landslide size matters: a new spatial predictive paradigm
<p>The standard definition of landslide hazard requires the estimation of where, when (or how frequently) and how large a given landslide event may be. The geomorphol...
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...
Analysis Landslide Hazard in Banjarmangu Sub District, Banjarnegara District
Analysis Landslide Hazard in Banjarmangu Sub District, Banjarnegara District
The objective of the research is to find the most suitable soil conservation practice that may be applied to control landslide hazard. In order to achieve that objective, some rese...
Landslide hazard zone mapping using Information Value model: the case of Gidole Landslide, Southern Ethiopia
Landslide hazard zone mapping using Information Value model: the case of Gidole Landslide, Southern Ethiopia
<p>Landslide hazard is becoming serious environmental constraints for the developmental activities in the highlands of Ethiopia. With the current infrastructure devel...
Annual displacements, strain partitioning and pore pressure variation in the Triesenberg Earthflow
Annual displacements, strain partitioning and pore pressure variation in the Triesenberg Earthflow
<p>Large landslide complexes in flysch are among the largest landslides on earth. These landslides often feature a rotational landslide at the head, the weathering an...
Improving Spatial Agreement in Machine Learning-Based Landslide Susceptibility Mapping
Improving Spatial Agreement in Machine Learning-Based Landslide Susceptibility Mapping
Despite yielding considerable degrees of accuracy in landslide predictions, the outcomes of different landslide susceptibility models are prone to spatial disagreement; and therefo...
Investigation of planar sliding deformation and analysis of the damage mechanism of a rocky landslide in Yaoping triggered by highway excavation in Hubei, China
Investigation of planar sliding deformation and analysis of the damage mechanism of a rocky landslide in Yaoping triggered by highway excavation in Hubei, China
During projects to build roads in China's mountainous areas, which are often characterized by the poor stability of rocky slopes, cases of deformation damage occur frequently. Beca...
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...

