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Research for Optimizing Rock Mass Mechanical Parameter Based on Improved Neural Network

机译:基于改进神经网络的岩体力学参数优化研究

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In order to optimizing the rock mass mechanical parameters of Xi-Luodu hydropower station, the neural network is improved by coupling the partial least-squares regression. And so the coupling method has best explaining ability to the system, Solving the problem that neural network model is not stable and the calculation velocity is slow, and overcoming the bad effect of the many layers relativity among variables in system modeling. The results show that the improved neural network is the superiority to the only one method. The input layers of neural network decrease from 4 to 2, so to simplize network construction and strengthen network stability. The concise is 0.0002 when calculating times are less than 500, and 96% of forecast errors are less than 20%, and all predict errors are no more than 1%. So the improved CMAC neural network can provide a good idea to optimize rock mass mechanical parameters.
机译:为了优化Xi-Luodu水电站的岩体力学参数,通过耦合局部最小二乘回归来改善神经网络。因此,耦合方法最佳地解释了系统的能力,解决神经网络模型不稳定的问题,并且计算速度慢,克服了系统建模中变量中许多层次相对性的不良效果。结果表明,改进的神经网络是唯一一种方法的优势。神经网络的输入层从4到2减小,从而简化网络施工并加强网络稳定性。计算时间小于500时,简洁是0.0002,96%的预测误差小于20%,并且所有预测误差都不超过1%。因此,改进的CMAC神经网络可以提供优化岩石质量机械参数的好主意。

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