2023
DOI: 10.5194/egusphere-2023-25
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Landslide initiation thresholds in data sparse regions: Application to landslide early warning criteria in Sitka, Alaska, USA

Abstract: Abstract. Probabilistic models to inform landslide early warning systems often rely on rainfall totals observed during past events with landslides. However, these models are generally developed for broad regions using large catalogs, with dozens, hundreds, or even thousands of landslide occurrences. This study evaluates strategies for training landslide forecasting models with a scanty record of landslide-triggering events, which is a typical limitation in remote, sparsely populated regions. We train and evalu… Show more

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“…rzmc estimates from satellitebased data assimilation, as in Felsberg et al, 2021;Stanley et al, 2021), the predictors could be preprocessed differently, e.g. into daily or 3-hourly rainfall maximum (Patton et al, 2023), monthly rainfall (Luna and Korup, 2022), antecedent soil moisture (Mirus et al, 2018), soil moisture changes (Wicki et al, 2020), or short-and long-term anomaly val- ues. Furthermore different combinations of the predictors could be tested, e.g.…”
Section: Discussionmentioning
confidence: 99%
“…rzmc estimates from satellitebased data assimilation, as in Felsberg et al, 2021;Stanley et al, 2021), the predictors could be preprocessed differently, e.g. into daily or 3-hourly rainfall maximum (Patton et al, 2023), monthly rainfall (Luna and Korup, 2022), antecedent soil moisture (Mirus et al, 2018), soil moisture changes (Wicki et al, 2020), or short-and long-term anomaly val- ues. Furthermore different combinations of the predictors could be tested, e.g.…”
Section: Discussionmentioning
confidence: 99%