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首页> 外文期刊>International Journal for Numerical Methods in Engineering >Estimation of cable safety factors of suspension bridges using artificial neural network-based inverse reliability method
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Estimation of cable safety factors of suspension bridges using artificial neural network-based inverse reliability method

机译:基于人工神经网络的逆可靠性方法估算悬索桥的安全系数

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摘要

The design of the main cables of suspension bridges is based on the verification of the rules defined by standard specifications, where cable safety factors are introduced to ensure safety. However, the current bridge design standards have been developed to ensure structural safety by defining a target reliability index. In other words, the structural reliability level is specified as a target to be satisfied by the designer. Thus, calibration of cable safety factors is needed to guarantee the specified reliability of main cables. This study proposes an efficient and accurate algorithm to solve the calibration problem of cable safety factors of suspension bridges. Uncertainties of the structure and load parameters are incorporated in the calculation model. The proposed algorithm integrates the concepts of the inverse reliability method, non-linear finite element method, and artificial neural networks method. The accuracy and efficiency of this method with reference to an example long-span suspension bridge are studied and numerical results have validated its superiority over the conventional deterministic method or inverse reliability method with Gimsing's simplified approach. Finally, some important parameters in the proposed method are also discussed. Copyright (c) 2006 John Wiley & Sons, Ltd.
机译:悬索桥的主要电缆的设计基于对标准规范定义的规则的验证,其中引入了电缆安全系数以确保安全。但是,目前的桥梁设计标准已经通过定义目标可靠性指标来确保结构安全。换句话说,将结构可​​靠性等级指定为设计者要满足的目标。因此,需要对电缆安全系数进行校准,以确保主电缆具有指定的可靠性。本文提出了一种有效,准确的算法来解决悬索桥电缆安全系数的标定问题。计算模型中包含结构和载荷参数的不确定性。该算法融合了逆可靠性方法,非线性有限元方法和人工神经网络方法的概念。以一个大跨度悬索桥为例,研究了该方法的准确性和效率,数值结果证明了该方法优于传统确定性方法或采用Gimsing简化方法的逆可靠性方法的优越性。最后,还讨论了所提出方法中的一些重要参数。版权所有(c)2006 John Wiley&Sons,Ltd.

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