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Stochastic process model of vehicle loads based on structural health monitoring data and maximum prediction of general renewal processes

机译:基于结构健康监测数据和一般更新过程的最大预测的车辆载荷随机过程模型

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Vehicle loads are the most important live load on bridges. It's significant to study the maximum vehicle load in serving period for bridge design, maintenance and safety-evaluation. Stochastic process, such as Possion process or Erlang process, is a powerful model for understanding vehicle loads. While Possion process or Erlang process is only fit for vehicle load acting on one specific bridge, but not fit for the complex vehicle load cases. In this paper, the general gamma process model are used to calculate vehicle load maximum CDF for both loose status and dense status, and maximum CDF prediction method for general renewal processes are put forward to study vehicle load maximum and it's CDF. The numerical results show good agreement with the Yangtze River bridge health monitoring in-field data, which prove the suitability and practicability of the numerical simulation, and provide a reference for the actual project.
机译:车辆负荷是桥梁上最重要的活载。研究桥梁设计,维护和安全评估的服务时期的最大车辆负荷是很重要的。随机过程,如可能过程或Erlang过程,是理解车辆负荷的强大模型。虽然可能过程或Erlang工艺仅适用于在一个特定桥上的车载负载,但不适合复杂的车辆载荷盒。在本文中,通用伽玛工艺模型用于计算既有松散状态和密集状态的车辆负荷最大CDF,并提出了一般更新过程的最大CDF预测方法,以研究车辆负荷最大值,也是CDF。数值结果表明,与长江桥梁健康监测现场数据的良好吻合,这证明了数值模拟的适用性和实用性,并为实际项目提供了参考。

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