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Evaluation of bearing capacity of medium-small span old bridges based on GANN

机译:基于GANN的中小跨度旧桥梁承载力评价

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Based on the complementation of advantages and disadvantages of genetic algorithms (GA) and neural network (NN), a new hybrid genetic algorithms and neural network model (GANN) is presented in this paper. In this model, the relationship model is established by error back propagation network (BP), the connection weights and thresholds of BP are optimized by GA, and then the precision of model is increased by BP. It not only avoids the deficiency of BP and GA, but also gives full play to the global searching capacity of the GA and local searching capacity of BP network. Aiming at decreasing the high-expenditure and heavy-workload of loading test of bridges, the new hybrid GANN bearing capacity evaluation model of medium-small span old bridge was established. In this model, the bearing capacity was evaluated by 8 easily measured damage indexes, and the calibration coefficient of the bridge bearing capacity (η) was used as the evaluation output index directly. After an evaluation analysis of bearing capacity, the result indicates that the evaluation model is scientific, accurate, available and convenient.
机译:基于遗传算法(GA)和神经网络(NN)的优点和缺点的互补,本文提出了一种新的混合遗传算法和神经网络模型(GANN)。在该模型中,通过误差反向传播网络(BP)建立了关系模型,通过GA优化了BP的连接权重和阈值,然后通过BP增加了模型的精度。它不仅避免了BP和GA的缺点,而且还可以充分发挥GA和BP网络的GA和本地搜索能力的全球搜索能力。旨在降低桥梁的高支出和重型工作量,建立了中小小跨度旧桥的新型混合甘蓝承载能力评价模型。在该模型中,承载能力通过8易测量的损伤指数评估,桥轴承容量(η)的校准系数直接使用作为评估输出指数。在轴承能力评估分析后,结果表明评估模型是科学,准确,可用方便的。

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