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A Method for Predicting Ultimate Bearing Capacity of Bolts Based on PSO-RBF Neural Network

机译:基于PSO-RBF神经网络的螺栓极限承载力预测方法

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The test of bearing capacity of bolt is very important for bolt quality test. Improper parameter of radial basis function (RBF) neural network may lead to large network convergence error and worse generalization capacity. Particle swarm optimization (PSO) is used to optimize the parameters in the study of improved RBF neural network. First, eigenvector respecting the bearing capacity of bolt is chosen as input of RBF neural network. The output of RBF neural network is the ultimate bearing capacity of bolt and the number of hidden layer nodes is determined by the subtraction clustering algorithm; Second, the initial center and width of the hidden layer is determined by K-means and PSO algorithm is introduced to optimize the the hidden layer centers and widths of RBF neural network. The weight between hidden layer and output layer is obtained by the least squares method; finally, a PSO-RBF neural network model is established to predict ultimate bearing capacity of bolts. In practical project cases, PSO-RBF neural network enhances the detection precision.
机译:螺栓承载能力的测试对于螺栓质量测试非常重要。径向基函数的不当参数(RBF)神经网络可能导致大量的网络融合误差和更差的泛化容量。粒子群优化(PSO)用于优化改进RBF神经网络研究中的参数。首先,选为螺栓承载能力的特征向量作为RBF神经网络的输入。 RBF神经网络的输出是螺栓的最终承载能力,并且隐藏层节点的数量由减法聚类算法确定;其次,隐藏层的初始中心和宽度由K-Means和PSO算法引入,以优化RBF神经网络的隐藏层中心和宽度。隐藏层和输出层之间的重量通过最小二乘法获得;最后,建立了PSO-RBF神经网络模型,以预测螺栓的最终承载能力。在实际项目案例中,PSO-RBF神经网络增强了检测精度。

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