混合使用基于遗传随机森林和自注意的 CNN-LSTM 算法绘制印度 Darjiling 和 Kurseong 的滑坡易发性地图

IF 2.9 Q2 GEOGRAPHY, PHYSICAL
Armin Moghimi , Chiranjit Singha , Mahdiyeh Fathi , Saied Pirasteh , Ali Mohammadzadeh , Masood Varshosaz , Jian Huang , Huxiong Li
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引用次数: 0

摘要

山体滑坡是印度西孟加拉邦,尤其是大吉岭和库尔松地区普遍存在的自然灾害,造成了严重的社会经济和物质后果。本研究旨在开发一种混合模型,将基于遗传的随机森林(GA-RF)和新颖的基于自注意力的卷积神经网络和长短期记忆(SA-CNN-LSTM)整合在一起,用于精确绘制滑坡易损性地图(LSM),并生成这些地区的滑坡易损性建设地图。为此,我们编制了一个包含 1830 个历史数据点的数据库,将滑坡清单作为因变量,将来自遥感 (RS) 和地理信息系统 (GIS) 图层的 32 个地理环境参数作为自变量。这些参数包括地形、气候、水文、土壤特性、地形分布、雷达特征和人为影响等特征。我们的混合模型表现出卓越的性能,AUC 为 0.92,RMSE 为 0.28,优于独立的 SA-CNN-LSTM、GA-RF、RF、MLP 和 TreeBagger 模型。值得注意的是,坡度、全球人为改造(gHM)、组合极化指数(CPI)、与溪流和道路的距离以及土壤侵蚀成为该地区 LSM 的关键图层。我们的研究结果表明,约 30% 的研究区域具有较高或极高的滑坡易发性,20% 为中等易发性,50% 为较低或极低易发性。244,552 个建筑脚印的脆弱性建筑地图显示了不同的滑坡风险水平,其中很大一部分(27.74%)处于高至极高风险。我们的模型突出显示了东北部和南部地区道路沿线的高风险区。这些见解可以加强大吉岭和库尔松的山体滑坡风险管理,为未来损害鉴定的可持续战略提供指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybridizing genetic random forest and self-attention based CNN-LSTM algorithms for landslide susceptibility mapping in Darjiling and Kurseong, India

Landslides are a prevalent natural hazard in West Bengal, India, particularly in Darjeeling and Kurseong, resulting in substantial socio-economic and physical consequences. This study aims to develop a hybrid model, integrating a Genetic-based Random Forest (GA-RF) and a novel Self-Attention based Convolutional Neural Network and Long Short-term Memory (SA-CNN-LSTM), for accurate landslide susceptibility mapping (LSM) and generate landslide vulnerability-building map in these regions. To achieve this, we compiled a database with 1830 historical data points, incorporating a landslide inventory as the dependent variable and 32 geo-environmental parameters from Remote Sensing (RS) and Geographic Information Systems (GIS) layers as independent variables. These parameters include features like topography, climate, hydrology, soil properties, terrain distribution, radar features, and anthropogenic influences. Our hybrid model exhibited superior performance with an AUC of 0.92 and RMSE of 0.28, outperforming standalone SA-CNN-LSTM, GA-RF, RF, MLP, and TreeBagger models. Notably, slope, Global Human Modification (gHM), Combined Polarization Index (CPI), distances to streams and roads, and soil erosion emerged as key layers for LSM in the region. Our findings identified around 30% of the study area as having high to very high landslide susceptibility, 20% as moderate, and 50% as low to very low. The vulnerability-building map for 244,552 building footprints indicated varying landslide risk levels, with a significant proportion (27.74%) at high to very high risk. Our model highlighted high-risk zones along roads in the northeastern and southern areas. These insights can enhance landslide risk management in Darjeeling and Kurseong, guiding sustainable strategies for future damage qualification.

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来源期刊
Quaternary Science Advances
Quaternary Science Advances Earth and Planetary Sciences-Earth-Surface Processes
CiteScore
4.00
自引率
13.30%
发文量
16
审稿时长
61 days
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