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Cable tension prediction of Hongfeng Lake cable-stayed bridge using BP neural network

机译:BP神经网络洪峰湖斜拉桥电缆张力预测

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Due to the funds problem, it is impossible to have acceleration sensors installed on bridge’s every cable. In order to get each cable’s tension, a three-layer BP neural network model is presented and the neural network with a number of measured data is trained. Using this neural network model, the cable tension can be predicted without any acceleration sensor installed. Then, the neural network model is certificated by using the measured data. By comparison with measured data and the predicted data, the predicted cable tensions by the neural network are credible.
机译:由于资金问题,在桥梁的每根电缆上都不可能拥有加速度传感器。为了获得每个电缆的张力,提出了一种三层BP神经网络模型,并且训练了具有多个测量数据的神经网络。使用该神经网络模型,可以预测电缆张力而无需安装任何加速度传感器。然后,通过使用测量数据证书,神经网络模型是认证的。通过与测量数据和预测数据的比较,神经网络的预测电缆紧张局势可信。

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