基于多类深度学习分类模型的滑坡现场地震记录标注方法

IF 5.7 Q1 ENVIRONMENTAL SCIENCES
Jiaxin Jiang , David Murray , Vladimir Stankovic , Lina Stankovic , Clement Hibert , Stella Pytharouli , Jean-Philippe Malet
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引用次数: 0

摘要

近年来,随着滑坡发生的频率和强度的增加,人们越来越多地研究如何及时检测导致这些灾害的潜在地下过程。机器学习的最新进展引入了算法,用于对与滑坡相关的地震事件进行分类,例如地震、岩崩和较小的地震。然而,深度学习算法的不透明、“黑箱”性质引起了地球科学家和最终用户对可靠性和可解释性的担忧,他们对采用这些模型犹豫不决。利用最近关于在人工智能(AI)决策过程中嵌入人类的建议,特别是训练和验证,我们提出了一种方法,该方法通过可解释的人工智能(XAI)工具,特别是分层相关传播(LRP)支持的多类卷积神经网络(CNN),结合数据标记,验证和重新标记。为确保可复制,提供了一份培训活动目录作为补充材料。来自法国地震和大地测量网(rsamsif)数据集的评估,在法国阿尔卑斯山收集,证明了所提出方法的有效性,岩落的召回率/灵敏度为97.3%,地震的召回率/灵敏度为68.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A human-on-the-loop approach for labelling seismic recordings from landslide site via a multi-class deep-learning based classification model

A human-on-the-loop approach for labelling seismic recordings from landslide site via a multi-class deep-learning based classification model
With the increased frequency and intensity of landslides in recent years, there is growing research on timely detection of the underlying subsurface processes that contribute to these hazards. Recent advances in machine learning have introduced algorithms for classifying seismic events associated with landslides, such as earthquakes, rockfalls, and smaller quakes. However, the opaque, “black box” nature of deep learning algorithms has raised concerns of reliability and interpretability by Earth scientists and end-users, hesitant to adopt these models. Leveraging on recent recommendations on embedding humans in the Artificial Intelligence (AI) decision making process, particularly training and validation, we propose a methodology that incorporates data labelling, verification, and re-labelling through a multi-class convolutional neural network (CNN) supported by Explainable Artificial Intelligence (XAI) tools, specifically, Layer-wise Relevance Propagation (LRP). To ensure reproducibility, a catalogue of training events is provided as supplementary material. Evaluation from the French Seismologic and Geodetic Network (Résif) dataset, gathered in the Alps in France, demonstrate the effectiveness of the proposed methodology, achieving a recall/sensitivity of 97.3% for rockfalls and 68.4% for quakes.
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