论文标题
迈向基于AI的桥梁冲刷的预警系统
Towards an AI-based Early Warning System for Bridge Scour
论文作者
论文摘要
冲浪是世界许多地方桥梁故障的第一大原因。考虑到现有的经验方程缺乏冲刷深度估计的可靠性以及作为物理现象的SCOR的复杂性和不确定性,因此必须开发更可靠的解决方案来进行冲洗风险评估。这项研究介绍了一种新型的AI方法,以基于从Sonar和安装在Bridge Piers的舞台传感器获得的实时监视数据进行早期预测。长期术语记忆网络(LSTMS)是一种成功用于其他领域预测时间序列的突出的深度学习算法,使用了从阿拉斯加冲洗监测计划中获得的11年以上,已开发和培训了11年以上。对于三个案例研究的桥梁,显示了AI模型在SCOUR预测中的能力。结果表明,LSTM可以通过冲刷和填充周期来捕获桥墩周围流动和河床变化的时间和季节性模式,并可以在提前7天之前就可以为即将到来的冲刷深度提供合理的预测。预计拟议的解决方案可以由运输部门实施,用于开发新兴的基于AI的预警系统,从而实现高级桥梁冲洗管理。
Scour is the number one cause of bridge failure in many parts of the world. Considering the lack of reliability in existing empirical equations for scour depth estimation and the complexity and uncertainty of scour as a physical phenomenon, it is essential to develop more reliable solutions for scour risk assessment. This study introduces a novel AI approach for early forecast of scour based on real-time monitoring data obtained from sonar and stage sensors installed at bridge piers. Long-short Term Memory networks (LSTMs), a prominent Deep Learning algorithm successfully used for time-series forecasting in other fields, were developed and trained using river stage and bed elevation readings for more than 11 years obtained from Alaska scour monitoring program. The capability of the AI models in scour prediction is shown for three case-study bridges. Results show that LSTMs can capture the temporal and seasonal patterns of both flow and river bed variations around bridge piers, through cycles of scour and filling and can provide reasonable predictions of upcoming scour depth as early as seven days in advance. It is expected that the proposed solution can be implemented by transportation authorities for development of emerging AI-based early warning systems, enabling superior bridge scour management.