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Mapping the susceptibility to landslides based on the deep belief network: a case study in Sichuan Province, China

机译:基于深度信仰网络映射对滑坡的敏感性:中国四川省的案例研究

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摘要

A dataset of landslides from Sichuan Province in China, containing 1551 historical individual landslides, is a result of two teams' effort in the past few years to map the susceptibility to landslides. Considering complex internal relations among the triggering factors, logistic regression (LR) and shallow neural networks, such as back-propagation neural network (BPNN), are often limited. In this paper, we make a straightforward development that the deep belief network (DBN) based on deep learning technology is introduced to map the regional susceptibility to landslides. Seven factors with respect to geomorphology, geology and hydrology are considered and verified through the collinearity test. A DBN model containing three pre-trained layers of restricted Boltzmann machines by stochastic gradient descent method is configured to obtain the susceptibility to landslides. Susceptibility results evaluated by DBN model are compared with those by LR and BPNN in the receive operator characteristic (ROC) analysis, showing that DBN has a better prediction precision, with a lower rate of false alarms and fake alarms. The case study also indicates different sensitivities of the triggering factors to the landslide susceptibility, that the factors of altitude, distance to drainage network and average annual rainfall have significant impact in mapping the susceptibility to landslides in the region. This research will contribute to a better-performance model for regional-scale mapping for the susceptibility to landslides, in particular, at the area where triggering factors show complex relations and relative independence.
机译:中国四川省山体滑坡数据集,含有1551个历史个人山体滑坡,是过去几年的两支球队的努力,以绘制对滑坡的易感性。考虑到触发因素的复杂内部关系,逻辑回归(LR)和浅神经网络(例如反向传播神经网络(BPNN))通常有限。在本文中,我们开始发展,即基于深度学习技术的深度信仰网络(DBN)引入了对山体滑坡的区域易感性。通过共同性测试考虑并验证了关于地貌,地质和水文的七种因素。通过随机梯度下降方法包含包含三个预测的Boltzmann机器的三层的DBN模型,被配置为获得对山体滑坡的易感性。通过DBN模型评估的易感性结果与LR和BPNN中的RR和BPNN进行比较,显示DBN具有更好的预测精度,具有较低的误报和假警报。案例研究还表明了触发因素对滑坡易感性的不同敏感性,即海拔高度,与排水网络的距离和平均年降雨量的因素对绘制该地区的山体滑坡的敏感性产生重大影响。该研究将有助于为区域规模绘图提供更好的性能模型,特别是对滑坡的易感性,特别是在触发因素显示复杂关系和相对独立的地区。

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