Short-term displacement prediction for newly established monitoring slopes based on transfer learning

IF 4.6 3区 地球科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY
China Geology Pub Date : 2024-04-25 DOI:10.31035/cg2024053
Yuan Tian , Yang-landuo Deng , Ming-zhi Zhang , Xiao Pang , Rui-ping Ma , Jian-xue Zhang
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引用次数: 0

Abstract

This study makes a significant progress in addressing the challenges of short-term slope displacement prediction in the Universal Landslide Monitoring Program, an unprecedented disaster mitigation program in China, where lots of newly established monitoring slopes lack sufficient historical deformation data, making it difficult to extract deformation patterns and provide effective predictions which plays a crucial role in the early warning and forecasting of landslide hazards. A slope displacement prediction method based on transfer learning is therefore proposed. Initially, the method transfers the deformation patterns learned from slopes with relatively rich deformation data by a pre-trained model based on a multi-slope integrated dataset to newly established monitoring slopes with limited or even no useful data, thus enabling rapid and efficient predictions for these slopes. Subsequently, as time goes on and monitoring data accumulates, fine-tuning of the pre-trained model for individual slopes can further improve prediction accuracy, enabling continuous optimization of prediction results. A case study indicates that, after being trained on a multi-slope integrated dataset, the TCN-Transformer model can efficiently serve as a pre-trained model for displacement prediction at newly established monitoring slopes. The three-day average RMSE is significantly reduced by 34.6% compared to models trained only on individual slope data, and it also successfully predicts the majority of deformation peaks. The fine-tuned model based on accumulated data on the target newly established monitoring slope further reduced the three-day RMSE by 37.2%, demonstrating a considerable predictive accuracy. In conclusion, taking advantage of transfer learning, the proposed slope displacement prediction method effectively utilizes the available data, which enables the rapid deployment and continual refinement of displacement predictions on newly established monitoring slopes.

基于迁移学习的新建监测斜坡短期位移预测
在中国史无前例的减灾项目--"世界滑坡监测计划 "中,大量新建监测边坡缺乏足够的历史变形数据,难以提取变形规律并进行有效预测,这在滑坡灾害预警预报中起着至关重要的作用。因此,本文提出了一种基于迁移学习的边坡位移预测方法。起初,该方法通过基于多边坡综合数据集的预训练模型,将从变形数据相对丰富的边坡中学到的变形模式转移到有用数据有限甚至没有数据的新建监测边坡上,从而实现对这些边坡的快速有效预测。随后,随着时间的推移和监测数据的积累,针对单个边坡对预训练模型进行微调可进一步提高预测精度,从而不断优化预测结果。一项案例研究表明,TCN-Transformer 模型在多斜坡综合数据集上经过训练后,可以有效地作为预训练模型,用于新建监测斜坡的位移预测。与仅根据单个斜坡数据训练的模型相比,三天的平均均方根误差(RMSE)显著降低了 34.6%,而且还成功预测了大部分变形峰值。基于目标新监测斜坡累积数据的微调模型进一步降低了 37.2% 的三日均方根误差,显示了相当高的预测精度。总之,利用迁移学习的优势,所提出的边坡位移预测方法有效地利用了现有数据,实现了对新建监测边坡位移预测的快速部署和不断完善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
China Geology
China Geology GEOLOGY-
CiteScore
7.80
自引率
11.10%
发文量
275
审稿时长
16 weeks
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