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The Prediction of Pile Foundation Buried Depth Based on BP Neural Network Optimized by Quantum Particle Swarm Optimization

机译:基于BP神经网络优化量子粒子群优化的桩基埋藏深度预测

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Due to the fluctuation of the bearing stratum and the distinct properties of the soil layer, the buried depth of the pile foundation will differ from each other as well. In practical construction, since the designed pile length is not definitely consistent with the actual pile length, masses of piles will be required to be cut off or supplemented, resulting in huge cost waste and potential safety hazards. Accordingly, the prediction of pile foundation buried depth is of great significance in construction engineering. In this paper, a nonlinear model based on coordinates and buried depth of piles was established by the BP neural network to predict the samples to be evaluated, the consequence of which indicated that the BP neural network was easily trapped in local extreme value, and the error reached 31%. Afterwards, the QPSO algorithm was proposed to optimize the weights and thresholds of the BP network, which showed that the minimum error of QPSO-BP was merely 9.4% in predicting the depth of bearing stratum and 2.9% in predicting the buried depth of pile foundation. Besides, this paper compared QPSO-BP with three other robust models referred to as FWA-BP, PSO-BP, and BP by three statistical tests (RMSE, MAE, and MAPE). The accuracy of the QPSO-BP algorithm was the highest, which demonstrated the superiority of QPSO-BP in practical engineering.
机译:由于轴承层的波动和土层的不同性质,桩基的埋深也会彼此不同。在实际结构中,由于设计的桩长绝对与实际桩长度一致,因此需要切断或补充桩的质量,从而造成巨大的成本浪费和潜在的安全危险。因此,桩基埋深的预测在施工工程方面具有重要意义。本文通过BP神经网络建立了基于坐标和埋藏深度的非线性模型,以预测要评估的样本,其结果表明BP神经网络很容易被困在局部极值中,以及错误达到31%。之后,提出了QPSO算法来优化BP网络的权重和阈值,这表明QPSO-BP的最小误差仅仅是预测轴承层深度的9.4%,预测桩基埋藏深度的2.9% 。此外,本文将QPSO-BP与三种其他强大的模型相比,其中三种统计测试(RMSE,MAE和MAPE)被称为FWA-BP,PSO-BP和BP。 QPSO-BP算法的准确性最高,这表明了实际工程中QPSO-BP的优越性。

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