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Application of BP neural network and genetic algorithm in stress prediction of anchor bolt

机译:BP神经网络和遗传算法在锚杆应力预测中的应用

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摘要

The bearing capacity detection of anchor bolt system is very important for the supporting effect evaluation. In this paper, back propagation neural network(BPNN) and genetic algorithm(GA) were used to predict the pull force of free bolt. Acoustic stress wave signals of free bolt were collected under different pull forces and analyzed in time domain and frequency domain. The wave velocity, fundamental and secondary frequency of acoustic stress wave signals were selected as inputs of BPNN. The weights and thresholds of BPNN were optimized by GA to avoid local solution. 8 sets of data were used to test the stress prediction effect of BPNN after training. The results indicates that the BPNN optimized by GA can achieve small errors when compared to basic BPNN.
机译:锚杆系统的承载力检测对支撑效果评估非常重要。本文采用反向传播神经网络(BPNN)和遗传算法(GA)来预测自由螺栓的拉力。在不同的拉力下采集自由螺栓的声应力波信号,并在时域和频域进行分析。选择声应力波信号的波速,基波和次级频率作为BPNN的输入。遗传算法对BPNN的权重和阈值进行了优化,以避免局部求解。训练后使用8组数据测试BPNN的压力预测效果。结果表明,与基本BPNN相比,GA优化的BPNN可以实现较小的误差。

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