Monitoring cliff erosion with LiDAR surveys and Bayesian network-based data analysis

CC BY Logo DOI

Cliff coasts are dynamic environments that can retreat very quickly. However, the short-term changes and factors contributing to cliff coast erosion have not received as much attention as dune coasts. In this study, three soft-cliff systems in the southern Baltic Sea were monitored with the use of terrestrial laser scanner technology over a period of almost two years to generate a time series of thirteen topographic surveys. Digital elevation models constructed for those surveys allowed the extraction of several geomorphological indicators describing coastal dynamics. Combined with observational and modeled datasets on hydrological and meteorological conditions, descriptive and statistical analyses were performed to evaluate cliff coast erosion. A new statistical model of short-term cliff erosion was developed by using a non-parametric Bayesian network approach. The results revealed the complexity and diversity of the physical processes influencing both beach and cliff erosion. Wind, waves, sea levels, and precipitation were shown to have different impacts on each part of the coastal profile. At each level, different indicators were useful for describing the conditional dependency between storm conditions and erosion. These results are an important step toward a predictive model of cliff erosion.

Tytuł
Monitoring cliff erosion with LiDAR surveys and Bayesian network-based data analysis
Twórca
Terefenko Paweł ORCID 0000-0002-5081-8615
Słowa kluczowe
cliff coastlines; time-series analysis; terrestrial laser scanner; southern Baltic Sea; non-parametric Bayesian network; wybrzeże klifowe; analizy czasowe; naziemny skaning laserowy; południowy Bałtyk; nieparametryczne statystyka bayesowska
Współtwórca
Paprotny Dominik
Giza Andrzej ORCID 0000-0002-5459-9261
Morales-Nápoles Oswaldo
Kubicki Adam
Walczakiewicz Szymon ORCID 0000-0002-4875-8027
Data
2019
Typ zasobu
artykuł
Identyfikator zasobu
DOI 10.3390/rs11070843
Źródło
Remote Sensing, 2019, vol. 11 iss. 7, [br. s.], 843
Język
angielski
Prawa autorskie
CC BY CC BY
Kategorie
Publikacje pracowników US
Data udostępnienia25 lis 2021, 14:37:23
Data mod.1 mar 2022, 12:54:08
DostępPubliczny
Aktywnych wyświetleń0