Key Laboratory of New Technology for Construction of Cities in Mountain Area, Ministry of Education; National Joint Engineering Research Center of Geohazards Prevention in the Reservoir Areas; School of Civil Engineering, Chongqing University, Chongqing 400045, China.
Key Laboratory of New Technology for Construction of Cities in Mountain Area, Ministry of Education; National Joint Engineering Research Center of Geohazards Prevention in the Reservoir Areas; School of Civil Engineering, Chongqing University, Chongqing 400045, China.
J Environ Manage. 2023 Sep 15;342:118177. doi: 10.1016/j.jenvman.2023.118177. Epub 2023 May 20.
Preparation of pipeline risk zoning is essential for pipeline construction and safe operation. Landslides are one of the main sources of risk to the safe operations of oil and gas pipelines in mountainous areas. This work aims to propose a quantitative assessment model of landslide-induced long-distance pipeline risk by analyzing historical landslide hazard data along oil and gas pipelines. Using the Changshou-Fuling-Wulong-Nanchuan (CN) gas pipeline dataset, two independent assessments were carried out: landslide susceptibility assessment and pipeline vulnerability assessment. Firstly, the study combined the recursive feature elimination and particle swarm optimization-AdaBoost method (RFE-PSO-AdaBoost) to develop a landslide susceptibility mapping model. The RFE method was used to select the conditioning factors, while PSO was used to tune the hyper-parameters. Secondly, considering the angular relationship between the pipelines and landslides, and the segmentation of the pipelines using the fuzzy clustering (FC), the CRITIC method (FC-CRITIC) was combined to develop a pipeline vulnerability assessment model. Accordingly, a pipeline risk map was obtained based on pipeline vulnerability and landslide susceptibility assessment. The study results show that almost 35.3% of the slope units were in extremely high susceptibility zones, 6.68% of the pipelines were in extremely high vulnerability areas, the southern and eastern pipelines segmented in the study area were located in high risk areas and coincided well with the distribution of landslides. The proposed hybrid machine learning model for landslide-oriented risk assessment of long-distance pipelines can provide a scientific and reasonable risk classification for new planning or in service pipelines to avoid landslide-oriented risk and ensure their safe operation in mountainous areas.
管道路由风险分区准备对于管道建设和安全运行至关重要。滑坡是山区油气管道安全运行的主要风险源之一。本工作旨在通过分析油气管道沿线历史滑坡灾害数据,提出一种基于滑坡的长输管道风险定量评估模型。利用长寿-涪陵-武隆-南川(CN)输气管道数据集,进行了两次独立评估:滑坡易发性评估和管道脆弱性评估。首先,研究结合递归特征消除和粒子群优化-Adaboost 方法(RFE-PSO-AdaBoost),开发了滑坡易发性制图模型。RFE 方法用于选择条件因素,而 PSO 用于调整超参数。其次,考虑到管道与滑坡的角度关系,以及使用模糊聚类(FC)对管道进行分段,结合 CRITIC 方法(FC-CRITIC)开发了管道脆弱性评估模型。据此,根据管道脆弱性和滑坡易发性评估,获得了管道风险图。研究结果表明,近 35.3%的斜坡单元处于极高易发性区,6.68%的管道处于极高脆弱性区,研究区分段的南部和东部管道处于高风险区,与滑坡分布吻合较好。该研究提出的长输管道面向滑坡风险评估的混合机器学习模型可为新规划或在役管道提供科学合理的风险分类,以避免面向滑坡的风险,确保其在山区的安全运行。