2018
DOI: 10.5194/nhess-18-1187-2018
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State fusion entropy for continuous and site-specific analysis of landslide stability changing regularities

Abstract: Abstract. Stability analysis is of great significance to landslide hazard prevention, especially the dynamic stability. However, many existing stability analysis methods are difficult to analyse the continuous landslide stability and its changing regularities in a uniform criterion due to the unique landslide geological conditions. Based on the relationship between displacement monitoring data, deformation states and landslide stability, a state fusion entropy method is herein proposed to derive landslide inst… Show more

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Cited by 7 publications
(5 citation statements)
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“…The SCM is invented under this context of random and fuzzy features of the dam break risk system. It describes the concept of clouds, reflects the randomness and fuzziness of concepts in natural language, and realizes the conversion between qualitative and quantitative information (D. Liu et al, 2018). In the process of group decision-making, the traditional method is only a simple algebraic operation of an expert's ratings, which could not reflect the disagreements of different experts and the concentration of opinions.…”
Section: Weight-calculating Model Based On Scm-improved Entropy Methodsmentioning
confidence: 99%
See 1 more Smart Citation
“…The SCM is invented under this context of random and fuzzy features of the dam break risk system. It describes the concept of clouds, reflects the randomness and fuzziness of concepts in natural language, and realizes the conversion between qualitative and quantitative information (D. Liu et al, 2018). In the process of group decision-making, the traditional method is only a simple algebraic operation of an expert's ratings, which could not reflect the disagreements of different experts and the concentration of opinions.…”
Section: Weight-calculating Model Based On Scm-improved Entropy Methodsmentioning
confidence: 99%
“…The analytic hierarchy process (AHP) is faced with the difficulty of consistency checking when dealing with the conditions of multiple factors (more than nine) (Su et al, 2016). When previous studies used the data of SCM to calculate weights, they had neglected the entropy when applying the SCM to convert subjective opinions, resulting in the imperfection of information utilization (Mithas et al, 2011;Wan et al, 2015). These mentioned defects all lead to lack of scientificity in the calculation of weight.…”
Section: Introductionmentioning
confidence: 99%
“…Correspondingly, the primary objective of landslide prediction in quantitative terms is to simulate and predict landslide displacement data using prediction models, establish threshold criteria, and ultimately achieve accurate landslide forecasting (Kirschbaum et al, 2010;Fan et al, 2019a;Yang et al, 2019;Guzzetti et al, 2020;Zhang et al, 2022c). The landslide displacement prediction is a key component of early warning systems that emphasizes the ease of access, quantification, and reliability of displacement monitoring data (Du et al, 2013;Manconi and Giordan, 2015;Liu et al, 2018;Yan et al, 2021). Global Navigation Satellite System (GNSS) technology is an effective and direct method in landslide evolution analysis, which can be used to monitor the surface displacement of landslides (Lian et al, 2014;Li et al, 2017;Huang et al, 2022).…”
Section: Parameters For Landslide Predictionmentioning
confidence: 99%
“…A variety of data-driven models have had significant developments in recent years (Kayacan et al 2010;Liu et al 2014;Zhou et al 2016;Liu et al 2018;Reichenbach et al 2018). Among data-driven models, machine learning (ML) methods are widely applied for landslide displacement predictions and have achieved good performances (Zhou et al, 2018a).…”
Section: Introductionmentioning
confidence: 99%