AbstractIn Indonesia, tsunamis are frequent events. In 2000–2016, there were 44 tsunami events in Indonesia, with financial losses reaching 43.38 trillion. In 2018, a tsunami occurred in the Sunda Strait due to the eruption of the Anak Krakatau Volcano, which caused many fatalities and much building damage. This study aimed to detect the building damage in the Labuan District, Banten Province. Machine learning methods were used to detect building damage using random forest with object-based techniques. No previous research has combined selected predictors into scenarios; hence, the novelty of this study is combining various random forest predictors to identify the extent of building damage using 14 predictor scenarios. In addition, field su...
Disaster resilience is a topic of increasing importance for policy makers in the context of climate ...
Quantification of building vulnerability to earthquake and tsunami hazards is a key component for th...
Tsunamis generated by undersea earthquakes can cause severe damage. It is essential to quickly asses...
Previous applications of machine learning in remote sensing for the identification of damaged buildi...
This study aims to develop a software framework for modeling of tsunami vulnerability using DEM and ...
Tsunami is a term for disaster where the seawater rises to the land caused by the great earthquake w...
This work presents a detailed analysis of building damage recognition, employing multi-source data f...
AbstractThis article presents a novel approach to estimate multi-hazard loss in a post-event situati...
We developed tsunami fragility functions using three sources of damage data from the 2018 Sulawesi t...
Over the last few decades, deforestation and climate change have caused increasing number of forest ...
The current trend of urbanization leads to an increase of seismic vulnerability in earthquake prone ...
Previous applications of machine learning in remote sensing for the identification of broken buildin...
In the second half of the 20th and beginning of the 21st century the amount of natural disasters has...
Although supervised machine learning classification techniques have been successfully applied to det...
Unreinforced masonry (URM) structures comprise a majority of the global built heritage. The masonry ...
Disaster resilience is a topic of increasing importance for policy makers in the context of climate ...
Quantification of building vulnerability to earthquake and tsunami hazards is a key component for th...
Tsunamis generated by undersea earthquakes can cause severe damage. It is essential to quickly asses...
Previous applications of machine learning in remote sensing for the identification of damaged buildi...
This study aims to develop a software framework for modeling of tsunami vulnerability using DEM and ...
Tsunami is a term for disaster where the seawater rises to the land caused by the great earthquake w...
This work presents a detailed analysis of building damage recognition, employing multi-source data f...
AbstractThis article presents a novel approach to estimate multi-hazard loss in a post-event situati...
We developed tsunami fragility functions using three sources of damage data from the 2018 Sulawesi t...
Over the last few decades, deforestation and climate change have caused increasing number of forest ...
The current trend of urbanization leads to an increase of seismic vulnerability in earthquake prone ...
Previous applications of machine learning in remote sensing for the identification of broken buildin...
In the second half of the 20th and beginning of the 21st century the amount of natural disasters has...
Although supervised machine learning classification techniques have been successfully applied to det...
Unreinforced masonry (URM) structures comprise a majority of the global built heritage. The masonry ...
Disaster resilience is a topic of increasing importance for policy makers in the context of climate ...
Quantification of building vulnerability to earthquake and tsunami hazards is a key component for th...
Tsunamis generated by undersea earthquakes can cause severe damage. It is essential to quickly asses...