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Mine landslide susceptibility assessment using IVM, ANN and SVM models considering the contribution of affecting factors

机译:使用IVM,ANN和SVM模型的矿山滑坡敏感性评估,考虑影响因素的贡献

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摘要

The fragile ecological environment near mines provide advantageous conditions for the development of landslides. Mine landslide susceptibility mapping is of great importance for mine geo-environment control and restoration planning. In this paper, a total of 493 landslides in Shangli County, China were collected through historical landslide inventory. 16 spectral, geomorphic and hydrological predictive factors, mainly derived from Landsat 8 imagery and Global Digital Elevation Model (ASTER GDEM), were prepared initially for landslide susceptibility assessment. Predictive capability of these factors was evaluated by using the value of variance inflation factor and information gain ratio. Three models, namely artificial neural network (ANN), support vector machine (SVM) and information value model (IVM), were applied to assess the mine landslide sensitivity. The receiver operating characteristic curve (ROC) and rank probability score were used to validate and compare the comprehensive predictive capabilities of three models involving uncertainty. Results showed that ANN model achieved higher prediction capability, proving its advantage of solve nonlinear and complex problems. Comparing the estimated landslide susceptibility map with the ground-truth one, the high-prone area tends to be located in the middle area with multiple fault distributions and the steeply sloped hill.
机译:矿山附近脆弱的生态环境为滑坡的发展提供了有利条件。矿山滑坡敏感性图对于矿山地质环境控制和恢复规划具有重要意义。本文通过历史滑坡清查,共采集了上栗县493个滑坡。首先准备了16个频谱,地貌和水文预测因子,主要来自Landsat 8影像和全球数字高程模型(ASTER GDEM),用于滑坡敏感性评估。通过使用方差膨胀因子和信息增益比的值来评估这些因子的预测能力。运用三个模型,分别是人工神经网络(ANN),支持向量机(SVM)和信息价值模型(IVM)来评估矿山滑坡的敏感性。接收机工作特性曲线(ROC)和秩概率得分用于验证和比较涉及不确定性的三个模型的综合预测能力。结果表明,人工神经网络模型具有较高的预测能力,证明了其解决非线性和复杂问题的优势。将估算的滑坡敏感性图与地面真实性图进行比较,高易发区往往位于具有多个断层分布和陡峭斜坡的中部地区。

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