基于半监督增量学习策略的地震诱发滑坡预测

IF 3.7 2区 工程技术 Q3 ENGINEERING, ENVIRONMENTAL
Ying Zeng, Yingbin Zhang, Jing Liu
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引用次数: 0

摘要

针对地震应急响应领域面临的复杂挑战,创新性地引入了半监督增量学习(SSIL)策略,巧妙地将基于物理的分析方法的快速响应特性与数据驱动方法的数据挖掘能力相结合。该框架依托Newmark方法构建半监督学习基础,并通过增量算法不断吸收新数据,迭代优化机器学习(ML)模型,在资源有限的条件下表现出优异的信息提取性能和数据融合能力。该研究应用贝叶斯优化(BO)算法来调整各种机器学习模型的参数,如卷积神经网络(CNN)和支持向量机(SVM)。显著增强了模型的灵活性和预测精度,从而提倡在机器学习模型标准化过程中加入BO。此外,本文创新性地提出了一种新的滑坡敏感性区间频率比指数(LSIFRs)评价准则,该准则直接映射了区域滑坡风险敏感性,可作为滑坡敏感性预测(LSP)精度的尺度。结果表明,本文提出的sil策略是满足震后应急响应需求的理想解决方案。综合评价模型性能后发现,经过BO增强的SSIL-BOSVM模型在实际应用中具有显著的实用性和效率,其ROC曲线下面积(AUC)为0.884,LSIFRs值为0.416。该模型可为今后的地震应急管理和灾后重建工作提供技术支持和数据支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Earthquake-induced landslide prediction using a semi-supervised incremental learning strategy

Focusing on the complex challenges faced in the field of earthquake emergency response, this paper innovatively introduces a semi-supervised incremental learning (SSIL) strategy, which skillfully integrates the fast response characteristics of the physics-based analytical method with the data mining capabilities of the data-driven method. The framework relies on the Newmark method to build the semi-supervised learning foundation, and iteratively optimizes the machine learning (ML) model by continuously absorbing new data through the incremental algorithm, which demonstrates excellent information extraction performance and data fusion capability under resource-limited conditions. The study applies Bayesian optimization (BO) algorithms to tune the parameters of various machine learning models, such as Convolutional Neural Network (CNN) and Support Vector Machine (SVM). which significantly enhances the flexibility and prediction accuracy of the models, thus advocating the inclusion of BO in the process of standardizing machine learning models. In addition, this paper innovatively proposes a new evaluation criterion for Landslide Sensitivity Interval Frequency Ratios Index (LSIFRs), which directly maps the regional landslide risk sensitivity and can be used as a scale for landslide sensitivity prediction (LSP) accuracy. The results show that the SSIL strategy proposed in this paper is an ideal solution to meet the needs of post-earthquake emergency response. After a comprehensive assessment of the model performance, it was found that the SSIL-BOSVM model, which underwent BO enhancement, demonstrated significant utility and efficiency in practical applications, with a high area under the ROC curve (AUC) of 0.884 and an LSIFRs value of 0.416. The model can serve in future earthquake emergency management and post-disaster reconstruction work with technical support and data support.

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来源期刊
Bulletin of Engineering Geology and the Environment
Bulletin of Engineering Geology and the Environment 工程技术-地球科学综合
CiteScore
7.10
自引率
11.90%
发文量
445
审稿时长
4.1 months
期刊介绍: Engineering geology is defined in the statutes of the IAEG as the science devoted to the investigation, study and solution of engineering and environmental problems which may arise as the result of the interaction between geology and the works or activities of man, as well as of the prediction of and development of measures for the prevention or remediation of geological hazards. Engineering geology embraces: • the applications/implications of the geomorphology, structural geology, and hydrogeological conditions of geological formations; • the characterisation of the mineralogical, physico-geomechanical, chemical and hydraulic properties of all earth materials involved in construction, resource recovery and environmental change; • the assessment of the mechanical and hydrological behaviour of soil and rock masses; • the prediction of changes to the above properties with time; • the determination of the parameters to be considered in the stability analysis of engineering works and earth masses.
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