对处于扰动状态下的预分馏塔的仿真结果表明,该算法可以有效地解决一类多神经网络模型的在线参数辨识问题。
Simulation results of a disturbed pre-fractionator show that this algorithm can be used to solve on-line parameters-recognized problem of a kind of multi- neural networks model effectively.
本文研究一类非线性神经网络自适应控制系统,提出一种基于双误差——辨识误差和跟踪误差的新控制方案。
A class of nonlinear neural network adaptive control systems is studied and a new design concept based on double errors was proposed in this paper.
然后介绍了如何使用模糊聚类算法和等价的前馈神经网络从样本数据中辨识离散的TS模型。
Then we introduce how to identify the TS model from sample data using fuzzy clustering algorithm and equivalent feedforward neural network.
辨识器采用RBF神经网络结构和最近邻聚类算法,实现了对系统逆动力学模型的动态辨识。
The system identifier based on RBF neural network which applies nearest neighbor clustering algorithm realizes the identification of the inverse dynamic system model.
对处于扰动状态下的预分馏塔的仿真结果表明,该算法可以有效地解决一类多神经网络模型的在线参数辨识问题。
Simulation results of a disturbed pre-fractionator show that this algorithm can be used to solve on-line parameters-recognized problem of a kind of multi- neural …
实例表明,神经网络是用于复杂非线性系统聚类与辨识的有效方法,并可望在煤矿开采领域其它聚类及辨识问题中得以推广应用。
Results shown that the ANN is an effective methods for the cluster and identification of complicated non-linear system. And it has a good prospect for solving other cluster an...
实例表明,神经网络是用于复杂非线性系统聚类与辨识的有效方法,并可望在煤矿开采领域其它聚类及辨识问题中得以推广应用。
Results shown that the ANN is an effective methods for the cluster and identification of complicated non-linear system. And it has a good prospect for solving other cluster an...
应用推荐