核电厂对角神经控制器的验证与验证

C. Ku, K.Y. Lee, R. Edwards
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引用次数: 1

摘要

提出了一种基于自适应学习率的对角递归神经网络(DRNN)进行大范围最优反应堆温度控制的新方法。通常的前馈神经网络(FNN)的缺点是它是一个静态映射,需要大量的神经元和较长的训练时间。通常基于经验试错方案的固定学习率很慢,而且不能保证收敛。动态反向传播算法与自适应学习率相结合,保证了更快的收敛速度。采用了一种具有改进反应器温度响应的最优控制律的参考模型来训练神经控制器和神经辨识器。应用于改善反应堆温度性能时,证明了该基于drnn的控制系统具有快速收敛性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Validation and verification of diagonal neural controller for nuclear power plant
A new approach for wide-range optimal reactor temperature control using diagonal recurrent neural networks (DRNN) with an adaptive learning rate scheme is presented. The drawback of the usual feedforward neural network (FNN) is that it is a static mapping and requires a large number of neurons and takes a long training time. The usual fixed learning rate based on an empirical trial and error scheme is slow and does not guarantee convergence. The dynamic backpropagation algorithm coupled with an adaptive learning rate guarantees even faster convergence. A reference model which incorporates an optimal control law with improved reactor temperature response is used for training of the neurocontroller and neuroidentifier. Rapid convergence of this DRNN-based control system is demonstrated when applied to improve reactor temperature performance.<>
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