盾构隧道沉降的自调谐推理模型——以台北捷运松山线为例

Min-Yuan Cheng, Akhmad F. K. Khitam, Nan-Chieh Wang
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引用次数: 0

摘要

在城市空间中修建隧道通常采用盾构法。由于与地下建设有关的许多不确定因素,需要适当的监测系统来防止灾害的发生。本研究以台北市地铁松山线CG291号标尺的沉降监测资料为研究对象,探讨影响因子与沉降结果的相关关系。提出了一种基于共生生物搜索-最小二乘支持向量机(SOS-LSSVM)的推理模型,并对采集到的数据进行了训练。此外,由于本研究使用的数据集包含的警报级别的数据远远少于安全级别的数据,因此数据集的类别不平衡,这可能会影响分类的准确性。本文还采用了概率分布数据平衡抽样方法来提高预测精度。结果表明,与其他四种基于人工智能的推理模型相比,SOS-LSSVM具有最有利的准确性。因此,该模型可为隧道设计和施工提供预警参考。
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Self-Tuning Inference Model for Settlement in Shield Tunneling: A Case Study of the Taipei Mass Rapid Transit System’s Songshan Line
Constructing tunnels in urban spaces usually uses shield tunneling. Because of numerous uncertainties related to underground construction, appropriate monitoring systems are required to prevent disasters from happening. This study collected the settlement monitoring data for Tender CG291 of the Songshan Line of the Taipei Mass Rapid Transit (MRT) system and considered that influential factors were examined to identify the correlations between predictor variables and settlement outcomes. An inference model based on symbiotic organisms search-least squares support vector machine (SOS-LSSVM) was proposed and trained on the collected data. Moreover, because the dataset used for this study contained far less data at the alert level than at the safe level, the class of the dataset was imbalanced, which could compromise the classification accuracy. This study also employed the probability distribution data balance sampling methods to enhance the forecast accuracy. The results showed that the SOS-LSSVM exhibited the most favorable accuracy compared to four other artificial intelligence-based inference models. Therefore, the proposed model can serve as an early warning reference in tunnel design and construction work.
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