Nie Lei, Wang Wei, Deng Lu, He Wei
College of Civil Engineering, Hunan University, Changsha 410082, China.
Key Laboratory for Damage Diagnosis of Engineering Structures of Hunan Province, Hunan University, Changsha 410082, China.
Sensors (Basel). 2022 Feb 17;22(4):1580. doi: 10.3390/s22041580.
Fatigue of steel bridges is a major concern for bridge engineers. Previous fatigue-based weight-limiting method of steel bridges is founded on the Palmgren-Miner's rule and S-N curves, which overlook the effect of existing cracks on the fatigue life of in-service steel bridges. In the present study, based on the theory of linear elastic fracture mechanics, a framework combining the artificial neural networks and Monte Carlo simulations is proposed to analyze the fatigue reliability of steel bridges with the effects of cracks and truck weight limits considered. Using the framework, a new method of setting the gross vehicle weight limit for in-service steel bridges with cracks is proposed. The influences of four key parameters, including the average daily truck traffic, the gross vehicle weight limit, the violation rate, and the detected crack size, on the fatigue reliability of a steel bridge are analyzed quantitatively with the new framework. Results show that the suggested framework can enhance the fatigue reliability assessment process in terms of accuracy and efficiency. The method of setting gross vehicle weight limits can effectively control the fatigue failure probability to be within 2.3% according to the desired remaining service time and the detected crack size.
钢桥疲劳是桥梁工程师主要关注的问题。以往基于疲劳的钢桥限重方法是基于帕尔姆格伦-迈纳法则和S-N曲线,这些方法忽略了既有裂缝对在用钢桥疲劳寿命的影响。在本研究中,基于线弹性断裂力学理论,提出了一种结合人工神经网络和蒙特卡罗模拟的框架,用于分析考虑裂缝和卡车重量限制影响的钢桥疲劳可靠性。利用该框架,提出了一种为有裂缝的在用钢桥设置车辆总重限制的新方法。采用新框架定量分析了日均卡车交通量、车辆总重限制、违规率和检测到的裂缝尺寸这四个关键参数对钢桥疲劳可靠性的影响。结果表明,所提出的框架在准确性和效率方面能够改进疲劳可靠性评估过程。根据期望的剩余服役时间和检测到的裂缝尺寸,设置车辆总重限制的方法能够有效地将疲劳失效概率控制在2.3%以内。