基于机器学习的地铁施工地面沉降立交桥位移分析

IF 2.1 Q3 ENVIRONMENTAL SCIENCES Urban science (Basel, Switzerland) Pub Date : 2023-09-24 DOI:10.3390/urbansci7040100
Roman Shults, Mykola Bilous, Azhar Ormambekova, Toleuzhan Nurpeissova, Andrii Khailak, Andriy Annenkov, Rustem Akhmetov
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引用次数: 0

摘要

现代城市充满了复杂而庞大的工程结构,它们的几何形状、大小、操作条件和施工技术各不相同。在工程结构的生命周期中,结构受到施工荷载、环境荷载和功能荷载的影响。这些建筑包括桥梁和立交桥。这些构筑物发生位移的主要原因是地面沉降。本文讨论了一个特殊的案例,即道路立交桥的地理空间监测受到新地铁线路建设引起的外部载荷的影响。本研究探讨了地理空间监测数据的机器学习数据分析和预测方法。监测数据采用机器人全站仪自动采集,频率为30分钟,平均每天采集一次。回归分析和神经网络回归与机器学习在地理空间监测数据上进行了测试。除了确定的空间位移外,还使用了其他参数。这些参数包括掘进机位置、降水水平、温度变化和沉降系数。研究的主要成果是建立了一套立交桥位移预测模型,并提出了正确选择预测模型和一套参数和超参数的建议。所提出的模型和建议应被视为现代城市岩土监测不可缺少的一部分。
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Analysis of Overpass Displacements Due to Subway Construction Land Subsidence Using Machine Learning
Modern cities are full of complex and substantial engineering structures that differ by their geometry, sizes, operating conditions, and technologies used in their construction. During the engineering structures’ life cycle, they experience the effects of construction, environmental, and functional loads. Among those structures are bridges and road overpasses. The primary reason for these structures’ displacements is land subsidence. The paper addresses a particular case of geospatial monitoring of a road overpass that is affected by external loads invoked by the construction of a new subway line. The study examines the methods of machine learning data analysis and prediction for geospatial monitoring data. The monitoring data were gathered in automatic mode using a robotic total station with a frequency of 30 min, and were averaged daily. Regression analysis and neural network regression with machine learning have been tested on geospatial monitoring data. Apart from the determined spatial displacements, additional parameters were used. These parameters were the position of the tunnel boring machines, precipitation level, temperature variation, and subsidence coefficient. The primary output of the study is a set of prediction models for displacements of the overpass, and the developed recommendations for correctly choosing the prediction model and a set of parameters and hyperparameters. The suggested models and recommendations should be considered an indispensable part of geotechnical monitoring for modern cities.
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来源期刊
CiteScore
4.30
自引率
0.00%
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审稿时长
11 weeks
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