首页> 外文会议>Asian conference on remote sensing;ACRS >INTEGRATING RULE-BASED ALGORITHMS WITH FUZZY RULE INDUCTION ON REGIONAL LANDSLIDE SUSCEPTIBILITY MODELING
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INTEGRATING RULE-BASED ALGORITHMS WITH FUZZY RULE INDUCTION ON REGIONAL LANDSLIDE SUSCEPTIBILITY MODELING

机译:基于规则的算法与模糊规则诱导的区域滑坡敏感性建模集成

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This study integrates Decision Tree (DT) and Particle Swarm Optimization (PSO) algorithms with Fuzzy Rule Induction (FRI) operator respectively (called DT-FRI and PSO-FRI) to assess landslide susceptibility according to existing rainfall-induced and shallow landslide events. The constructed landslide susceptibility models are applied to classify and verify occurrence samples. In this study, two strategies are applied for the model verification, i.e. space- and time-robustness. The former is to separate samples into training and check data based on a single event. The latter is to predict (classify) later landslide events with a landslide susceptibility model which is constructed from earlier events. Eleven geospatial factors are considered, including topographic, vegetative, environmental, geological and man-made information. The landslide inventory and factors are overlapped to obtain the training and check data for modeling and verification. Experimental results show that applying the conventional DT algorithm can reach high modeling accuracy respectively based on the space-robustness strategy but both have poor performance to predict (classify) consequent events (time-robustness). After integrating with FRI, the prediction (classification) results are significantly improved, especially using PSO-FRI models.
机译:这项研究将决策树(DT)和粒子群优化(PSO)算法分别与模糊规则归纳(FRI)运算符(称为DT-FRI和PSO-FRI)相结合,以根据现有的降雨诱发和浅层滑坡事件评估滑坡敏感性。所构建的滑坡敏感性模型被用于分类和验证事故样本。在这项研究中,模型验证采用了两种策略,即空间鲁棒性和时间鲁棒性。前者是根据单个事件将样本分为训练和检查数据。后者是利用从较早事件构造的滑坡敏感性模型来预测(分类)较晚的滑坡事件。考虑了11个地理空间因素,包括地形,植物,环境,地质和人为信息。重叠滑坡清单和因子以获得训练和检查数据,以进行建模和验证。实验结果表明,基于空间鲁棒性策略,应用常规DT算法可以分别达到较高的建模精度,但对后续事件(时间鲁棒性)的预测(分类)性能均较差。与FRI集成后,尤其是使用PSO-FRI模型时,预测(分类)结果得到了显着改善。

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