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Closed Form Solution for Deflection of Flexible Composite Bridges

机译:柔性复合桥梁偏转的封闭式溶液

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Simply supported steel-concrete composite beams are widely used in bridge construction. Deflection is the significant parameter for serviceability limit state of bridges. A lot of computational effort is required for finite element analysis of bridges considering flexibility of shear connectors and shear leg effects. Neural network is presented for prediction of deflections, at service load, in simply supported steel-concrete composite bridges incorporating flexibility of shear connectors and shear lag effect. The training, testing and validation data sets for neural network are generated using finite element models. The finite element models have been developed using ABAQUS software. These models have been validated with available experimental results. Closed form solution is also proposed based on the developed neural network. The use of the neural network requires a computational effort almost equal to that required for the simple beam analysis (neglecting flexibility of shear connectors and shear lag effect). The neural network has been validated for number of bridges and the errors are found to be small. The network/closed form solution can be used for rapid prediction of deflection for everyday design.
机译:简单地支撑的钢混凝土复合梁广泛用于桥梁结构。偏转是桥梁的可维护性限制状态的重要参数。考虑剪切连接器的灵活性和剪切腿部效应的桥梁有限元分析需要大量的计算工作。在简单地支撑的钢混凝土复合桥中,呈现神经网络以预测偏转,其包括剪切连接器的柔韧性和剪切滞后效果。使用有限元模型生成神经网络的培训,测试和验证数据集。有限元模型已经使用ABAQUS软件开发。这些模型已被验证,可用实验结果。还基于发发的神经网络提出封闭式溶液。神经网络的使用需要几乎等于简单光束分析所需的计算工作(忽略剪切连接器的灵活性和剪切滞后效果)。神经网络已被验证桥梁数量,并且发现错误很小。网络/封闭式溶液可用于快速预测日常设计的偏转。

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