A Review on Landslide Susceptibility Mapping in Malaysia: Recent Trend and Approaches

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Abstract

The accelerating economic growth has assisted rapid urban development and expansion of construction sites into the landslide-vulnerable zones in Malaysia. Thus landslide susceptibility mapping has now become an important part of project designing work for landslide zone areas. There are several models that are used for susceptibility mapping, especially in the peninsular region. Every model has its own set of selected computing variables and characteristics to generate a map. To date, there is no single method applicable to assess and predict all landslides, as there are variations of geomorphological conditions set by the nature. This paper has reviewed recent research publications on landslide susceptibility mapping in Malaysia. Results show that there are 16 models that are being used to describe landslide risk mapping and among them, the Fuzzy model, Neural Network combined with Fuzzy logic, evidential belief function model, probability analysis (e.g. Weights-of-Evidence, and regression), and Support Vector Machine models are proved to be effective even in the areas with limited information. It is observed that most of the susceptible models use curvature, slope angles, distance from drainage, altitude, slope gradient, road distance, aspects as variable factors, and prolonged rainfall as the prime triggering factors. Furthermore, it is observed that the maximum number of research has been conducted in Cameron Highlands (28%) and Penang (20%), because of their high frequencies of landslide occurring and vulnerabilities. Sabah and Sarawak are covered by a negligible number of susceptibility research. Further, a comparison study between the selected models presents the limitations of each model and their benefits and some suggestions are also made based on the author's recommendations works.
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马来西亚滑坡易感性制图研究综述:最新趋势与方法
加速的经济增长有助于马来西亚迅速的城市发展和建筑工地扩大到易发生山体滑坡的地区。因此,滑坡易感性填图已成为滑坡带地区工程设计工作的重要组成部分。有几种模型用于易感性制图,特别是在半岛地区。每个模型都有自己的一组选定的计算变量和特征来生成地图。迄今为止,由于自然界的地貌条件不同,没有单一的方法可以评估和预测所有的滑坡。本文综述了马来西亚滑坡易感性制图的最新研究成果。结果表明,滑坡风险映射有16种模型,其中模糊模型、结合模糊逻辑的神经网络模型、证据信念函数模型、概率分析(如证据权重和回归)和支持向量机模型在信息有限的地区也能有效地描述滑坡风险映射。观察到,大多数易感模型以曲率、坡角、离水系距离、海拔、坡度、道路距离、坡度等为可变因素,以长时间降雨为主要触发因素。此外,据观察,金马仑高原(28%)和槟城(20%)进行的研究最多,因为它们的滑坡发生频率高,脆弱性大。沙巴和沙捞越的易感性研究可以忽略不计。在此基础上,对所选模型进行了比较研究,分析了各模型的局限性和各自的优点,并在作者推荐作品的基础上提出了一些建议。
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