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Displacement Back Analysis for a High Slope of the Dagangshan Hydroelectric Power Station Based on BP Neural Network and Particle Swarm Optimization

机译:基于BP神经网络和粒子群算法的大岗山水电站高边坡位移反分析。

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摘要

The right bank high slope of the Dagangshan Hydroelectric Power Station is located in complicated geological conditions with deep fractures and unloading cracks. How to obtain the mechanical parameters and then evaluate the safety of the slope are the key problems. This paper presented a displacement back analysis for the slope using an artificial neural network model (ANN) and particle swarm optimization model (PSO). A numerical model was established to simulate the displacement increment results, acquiring training data for the artificial neural network model. The backpropagation ANN model was used to establish a mapping function between the mechanical parameters and the monitoring displacements. The PSO model was applied to initialize the weights and thresholds of the backpropagation (BP) network model and determine suitable values of the mechanical parameters. Then the elastic moduli of the rock masses were obtained according to the monitoring displacement data at different excavation stages, and the BP neural network model was proved to be valid by comparing the measured displacements, the displacements predicted by the BP neural network model, and the numerical simulation using the back-analyzed parameters. The proposed model is useful for rock mechanical parameters determination and instability investigation of rock slopes.
机译:大港山水电站右岸高边坡处于地质条件复杂,裂缝深,卸荷裂缝大的地方。如何获得力学参数,然后评估边坡的安全性是关键问题。本文利用人工神经网络模型(ANN)和粒子群优化模型(PSO)对边坡进行了位移反分析。建立了数值模型来模拟位移增量结果,获得了人工神经网络模型的训练数据。反向传播的ANN模型用于建立机械参数和监测位移之间的映射函数。应用PSO模型初始化反向传播(BP)网络模型的权重和阈值,并确定合适的机械参数值。然后根据监测的位移数据在不同开挖阶段获得岩体的弹性模量,通过比较实测位移,BP神经网络模型预测的位移和BP神经网络模型,证明BP神经网络模型是有效的。使用反向分析的参数进行数值模拟。所提出的模型对于确定岩石力学参数和对边坡失稳进行研究很有用。

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