2023
DOI: 10.3389/fenvs.2023.1140834
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Landslide susceptibility mapping using O-CURE and PAM clustering algorithms

Abstract: Landslide susceptibility mapping (LSM) is a crucial step during landslide assessment and environmental management. Clustering algorithms can construct effective models for LSM. However, a random selection of important parameters, inconsideration of uncertain data, noise data, and large datasets can limit the implementation of clustering in LSM, resulting in low and unreliable performance results. Thus, to address these problems, this study proposed an optimized clustering algorithm named O-CURE, which combines… Show more

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Cited by 6 publications
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“…There may be statistical covariance between the initially selected collapse evaluation indicators, which can lead to the vulnerability model not being able to accurately analyse the true relationship between the evaluation indicators and collapses. Before building the model, this paper uses tolerance (TOL) and variance inflation factor (VIF) to test for factor covariance to ensure that the indicators are independent of each other [39]. The VIF is calculated as follows:…”
Section: Multicollinearity Analysis Of Evaluation Indicators and Resultsmentioning
confidence: 99%
“…There may be statistical covariance between the initially selected collapse evaluation indicators, which can lead to the vulnerability model not being able to accurately analyse the true relationship between the evaluation indicators and collapses. Before building the model, this paper uses tolerance (TOL) and variance inflation factor (VIF) to test for factor covariance to ensure that the indicators are independent of each other [39]. The VIF is calculated as follows:…”
Section: Multicollinearity Analysis Of Evaluation Indicators and Resultsmentioning
confidence: 99%