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Hazard zoning for spatial planning using GIS-based landslide susceptibility assessment: a new hybrid integrated data-driven and knowledge-based model

机译:基于GIS的滑坡敏感性评估的空间规划危险区划:一种新的混合集成数据驱动和基于知识的模型

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摘要

The popular use of geographical information system (GIS) technology in landslide assessment ensures good, accurate and fast results with less cost and manages mass movements and identifies safe areas for the development of new settlements. In the literature, different methods have been applied in landslide susceptibility assessment using various models. In these studies, the methods are either expert knowledge-based or data-driven approaches. These two approaches produce different outcomes based on their specific characteristics. Thus, the simultaneous use of a set of methods using fusion techniques at the decision-level improves the results. This study aims to investigate and identify a landslide zonation model by combining different methods in GIS and integrate the results (incorporated in the decision level) to achieve optimum accuracy. In this study, landslide hazard mapping was performed using knowledge-based models such as simple additive weighting (SAW) and fuzzy gamma operator and data-driven models namely radial basis function link network (RBFLN) and probabilistic neural network (PNN). Evaluation results indicate that data-driven methods have better performance than knowledge-based methods based on expert opinion. The SAW method also has a better result than other knowledge-based methods, such as fuzzy gamma. The assessment results of the randomly selected landslide control points indicate that PNN, SAW, RBFLN and fuzzy gamma have accuracies of 82.3, 69.62, 65.39 and 61.26% in landslide zoning, respectively. Meanwhile, weighted mean, maximum, median and minimum were used to incorporate the results in decision-level fusion; results show improved accuracies of 70.53, 83.5, 67.39 and 60.27% for each criterion, respectively.
机译:地理信息系统(GIS)技术在滑坡评估中的流行使用确保了良好,准确和快速的结果,成本较低,管理大规模运动,并确定了新定居点的安全领域。在文献中,使用各种模型,在滑坡易感性评估中应用了不同的方法。在这些研究中,该方法是基于知识的或数据驱动的方法。这两种方法基于其特定特征产生不同的结果。因此,在决策级别在决策级别使用融合技术的同时使用一组方法改善了结果。本研究旨在通过结合GIS中的不同方法来研究和识别滑坡区划模型,并将结果(结合在决策水平中)以达到最佳精度。在本研究中,使用基于知识的模型进行滑坡危险映射,例如简单的添加剂加权(SAW)和模糊伽马操作者和数据驱动模型即径向基函数链路网络(RBFLN)和概率神经网络(PNN)。评估结果表明,数据驱动方法具有比基于知识的方法更好的性能,基于专家意见。 SAW方法还具有比其他基于知识的方法更好的结果,例如模糊伽玛。随机选择的滑坡控制点的评估结果表明,PNN,SAW,RBFLN和模糊伽玛分别具有82.3,69.62,65.39和61.26%的山体滑坡分区的准确度。同时,使用加权平均值,最大,中值和最小值来纳入决策级融合的结果;结果分别显示了每个标准的70.53,83.5,67.39和60.27%的精度。

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