Landslides are notoriously difficult to predict. Deep neural networks (DNNs) models are more accurate than statistical models. However, they are uninterpretable, making it difficult to extract mechanistic information about landslide controls in the modeled region. We developed an explainable AI (XAI) model to assess landslide susceptibility that is computationally simple and features high accuracy. We validated it on three different regions of eastern Himalaya that are highly susceptible to landslides. SNNs are computationally much simpler than DNNs, yet achieve similar performance while offering insights regarding the relative importance of landslide control factors in each region. Our analysis highlighted the importance of: 1) the product of slope and precipitation rate and 2) topographic aspects that contribute to high susceptibility in landslide areas. These identified controls suggest that strong slope-climate couplings, along with microclimates, play more dominant roles in eastern Himalayan landslides. The model outperforms physically-based stability and statistical models.
翻译:众所周知,山崩是难以预测的。深神经网络(DNN)模型比统计模型更准确。但是,这些模型无法解释,因此难以获取模型区域滑坡控制方面的机械信息。我们开发了一个可解释的AI(XAI)模型,用于评估滑坡易感性,该模型计算简单,具有很高的准确性。我们在喜马拉雅东部三个极易滑坡的不同地区验证了这一模型。SNNN在计算上比DNN要简单得多,但取得类似的性能,同时对每个区域的滑坡控制因素的相对重要性提出了见解。我们的分析强调了以下几个方面的重要性:1)斜坡和降水率的产物,以及2)有助于滑坡地区高度易感的地形方面。这些查明的控制措施表明,强大的斜坡-气候结合与微气候在喜马拉雅山滑坡东部发挥更主要作用。模型比基于物理的稳定性和统计模型要强。