多年冻土区铁路路桥过渡段工程病害风险评价

IF 3 3区 地球科学 Q2 GEOGRAPHY, PHYSICAL Permafrost and Periglacial Processes Pub Date : 2021-12-15 DOI:10.1002/ppp.2135
Saize Zhang, F. Niu, Shi Wang, Y. Sun, Jinchang Wang, Tian-Tian Dong
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引用次数: 6

摘要

路桥过渡段是多年冻土区铁路病害多发地区之一。疾病风险评估可为ebts的维持提供指导。本文结合青藏铁路沿线工程地质条件、气候特征和路堤结构类型,以2010 - 2019年青藏铁路沿线病害清查数据为基础,采用logistic回归(LR)、支持向量机(SVM)和基于组合权值的同性关系分析(GRA)对多年冻土区青藏铁路沿线ebts进行病害风险评估。结果表明,LR和SVM模型比GRA模型具有更好的EBTS疾病预测能力,并且SVM模型比LR模型可以在相对较大的区域内选择更多的疾病样本。基于SVM和LR模型,ebts的风险水平分为四类:低‐(29.9%)、中‐(39.6%)、高‐(22.1%)和极高(8.4%)风险。最后,我们选择了272个高风险和极高风险的ebts,用于多年冻土区QTR维护期间的关键观测。研究结果可为多年冻土区铁路建设风险评估提供参考。
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Risk assessment of engineering diseases of embankment–bridge transition section for railway in permafrost regions
The embankment–bridge transition section (EBTS) is one of the zones where railway diseases occur frequently in permafrost regions. Disease risk assessment of EBTSs can provide guidance for maintenance. In this study, considering the engineering geological conditions, climate characteristics, and embankment structure types along the Qinghai–Tibet Railway (QTR) as well as based on the disease inventory of the QTR from 2010 to 2019, the logistic regression (LR), support vector machine (SVM), and combination‐weight‐based gay relation analysis (GRA) were used for disease risk assessment of the EBTSs along the QTR in permafrost regions. The results indicate that the LR and SVM models have a better capability for EBTS disease prediction than the GRA model, and the SVM model can select more disease samples in relatively larger regions than the LR model. Based on the SVM and LR models, the risk level of EBTSs is divided into four classes: low‐ (29.9%), moderate‐ (39.6%), high‐ (22.1%), and very high (8.4%) risk. Finally, we selected 272 EBTSs in high‐ and very‐high‐risk classes for key observation during the maintenance of the QTR in permafrost regions. This study provides a reference for the risk assessment of railways built in permafrost regions using data‐driven methods.
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来源期刊
CiteScore
9.70
自引率
8.00%
发文量
43
审稿时长
>12 weeks
期刊介绍: Permafrost and Periglacial Processes is an international journal dedicated to the rapid publication of scientific and technical papers concerned with earth surface cryogenic processes, landforms and sediments present in a variety of (Sub) Arctic, Antarctic and High Mountain environments. It provides an efficient vehicle of communication amongst those with an interest in the cold, non-glacial geosciences. The focus is on (1) original research based on geomorphological, hydrological, sedimentological, geotechnical and engineering aspects of these areas and (2) original research carried out upon relict features where the objective has been to reconstruct the nature of the processes and/or palaeoenvironments which gave rise to these features, as opposed to purely stratigraphical considerations. The journal also publishes short communications, reviews, discussions and book reviews. The high scientific standard, interdisciplinary character and worldwide representation of PPP are maintained by regional editorial support and a rigorous refereeing system.
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