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Rbf Neural Networks for Function Approximation in Dynamic Modelling

机译:动态建模中用于函数逼近的Rbf神经网络

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The paper demonstrates the comparison of Monte Carlo simulation algorithm with neural network enhancement in the reliability case study. With regard to process dynamics, we attempt to evaluate the tank system unreliability related to the initiative input parameters setting. The neural network is used in equation coefficients calculation, which is executed in each transient state. Due to the neural networks, for some of the initial component settings we can achieve the results of computation faster than in classical way of coefficients calculating and substituting into the equation.
机译:本文在可靠性案例研究中证明了蒙特卡罗模拟算法与神经网络增强的比较。关于过程动力学,我们尝试评估与主动输入参数设置有关的储罐系统不可靠性。神经网络用于方程系数计算,在每个瞬态下执行。由于有了神经网络,对于某些初始分量设置,我们可以比经典的系数计算和代入方程式的方法更快地获得计算结果。

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