基于深度学习的卫星滑坡易感性预测智能系统

A. Giuseppi, Leonardo Pio Lo Porto, Andrea Wrona, Danilo Menegatti
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引用次数: 0

摘要

山体滑坡是一种严重的自然灾害,由于气候变化和人类活动,其发生频率和严重程度都在增加。山体滑坡的后果是严重的,可能导致房屋、基础设施的破坏和供水的污染,也对当地生态系统产生严重影响,破坏自然栖息地。本文研究了基于自组织神经网络的智能系统在基于卫星数据的地形滑坡易感性评价中的应用。该系统在Lombardia和Abruzzo的数据上得到了验证,这两个意大利地区特别容易受到滑坡现象的影响。结果表明,CNN模型能够以较高的精度正确识别滑坡发生,这表明CNN能够在局部尺度上提供准确的敏感性映射,并且超越了文献中现有解决方案的性能。
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Landslide Susceptibility Prediction from Satellite Data through an Intelligent System based on Deep Learning
Landslides are critical natural hazards whose frequency and severity are increasing due to climate change and human activities. The consequences of landslides are severe and can lead to the destruction of homes, infrastructures and the contamination of water supplies, with severe impact also on the local ecosystems and the disruption of natural habitats. This article examines the application of an ad-hoc neural network-based intelligent system to evaluate the landslide susceptibility of the terrain on the basis of satellite data. The proposed system is validated on data from Lombardia and Abruzzo, two Italian regions that have been particularly subject to the landslide phenomenon. Results indicate that the CNN model is able to correctly identify landslide occurrences with high accuracy, demonstrating that CNNs are capable of providing accurate susceptibility mapping at a local scale and surpassing the performance of existing solutions available in the literature.
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