Hammerstein模型,Hammerstein model
1)Hammerstein modelHammerstein模型
1.Determinating Hammerstein model structure of exhaust gas oxygen sensor;废气氧传感器Hammerstein模型结构的确定
2.A model-predictive control method based on hybrid neural networks for nonlinear systems described by Hammerstein model;具有Hammerstein模型描述的非线性系统的基于混合神经网络的预测控制
3.Predictive functional control based on wavelet function and Hammerstein model基于小波基函数和Hammerstein模型的预测函数控制
英文短句/例句

1.Hammerstein Model-Based Nonlinear Predictive Control Using AQPSO一种基于Hammerstein模型和AQPSO的预测控制算法
2.Identification of Hammerstein Model Based on Quantum-behaved Patical Swarm Optimization基于QPSO的混凝投药过程Hammerstein模型辨识
3.RBF Neural Network Based on RBF Nearal Network基于RBF神经网络的Hammerstein模型辨识
4.Identification method of a class Hammerstein model in largest industry system大工业系统中一类Hammerstein模型辨识法
5.An Effective Algorithm Based on Hammerstein Digital Predistortion Model一种基于Hammerstein模型的数字预失真算法
6.Methodology of the Structural Behavioral Modeling for Analog Circuits Based on Hammerstein Method基于Hammerstein模型的模拟电路结构级行为建模技术
7.A New Model of Power Electronic Device基于Hammerstein模型的DC/DC变换器建模方法研究
8.Predictive functional control based on wavelet function and Hammerstein model基于小波基函数和Hammerstein模型的预测函数控制
9.Generalized Predictive Control of Nonlinear System Based on Immune Genetic Algorithm and Hammerstein Models基于IGA和Hammerstein模型的非线性系统广义预测控制
10.Research on Grade Transition Control of Propylene Polymerization in Dual-loop Reactor Based on Hammerstein Model基于Hammerstein模型的双环管聚丙烯装置牌号切换控制研究
11.Auxiliary Model Based Least Squares Identification for Hammerstein OEMA SystemsHammerstein OEMA系统的辅助模型最小二乘辨识
12.Linearization for Doherty RF Power Amplifiers Using AugmentedHammerstein Dynamic Nonlinear Models改进型Hammerstein动态非线性模型的Doherty射频功放线性化
13.Nonlinear Predictive Control and Its Simulation Study Based on Hammerstein/Wiener Models;基于Hammerstein/Wiener模型的非线性预测控制及其仿真研究
14.Vertical Quench Furnace Hammerstein Fault Predicting Model Based on Least Squares Support Vector Machine and Its Application基于LS-SVM的淬火炉Hammerstein故障预测模型应用研究
15.Solving Hammerstein Integral Equations by Multiwavelets Galerkin Method解Hammerstein型积分方程的多小波Galerkin方法(英文)
16.Linear Boundary Value Problems of Second Order Hammerstein Type Integro-differential-difference Equation二阶Hammerstein型线性边值问题的积分微分差分方程
17.The Method of L-quasi-upper-lower Solution to Cauchy Problems of Hammerstein Style Integrodifferential Equations in Abstract Space;Banach空间中Hammerstein型积分微分方程初值问题的一种拟上下解法
18.SUCCESSIYE SOLUTIONS OF NONLINEAR HAMMERSTEIN INTEGRAL EQUATIONSIN BANACH SPACES AND APPLICATIONS;Banach空间中非线性Hammerstein型积分方程的迭代求解及其应用
相关短句/例句

Hammerstein modelsHammerstein模型
1.Nonlinear predictive functional control using Hammerstein models;基于Hammerstein模型的非线性预测函数控制
2.Study on Nonlinear Predictive Control of Hammerstein Models;Hammerstein模型非线性预测控制的研究
3.New identification method of nonlinear systems based on Hammerstein models;基于Hammerstein模型描述的非线性系统辨识新方法
3)Wiener-Hammerstein modelWiener-Hammerstein模型
1.New method for identification of Wiener-Hammerstein model;一种辨识Wiener-Hammerstein模型的新方法
2.The complex Wiener-Hammerstein model(WHM) was adopted to describe the input-output relationship of unknown HPA and a power series model with memory(PSMWM) was used to approximate the HPA expressed by WHM in base-band.应用基带里的复数Wiener-Hammerstein模型(WHM)描述未知HPA的输入输出关系,并用一个有记忆的幂级数模型(PSMWM)去近似这个HPA,进而通过赤池情报量准则(AIC)来确定有记忆幂级数模型的阶数,应用递推最小二乘法在线估计HPA特性的参数。
4)Hammerstein-Wiener ModelHammerstein-Wiener模型
1.Hammerstein-Wiener model identified by least-squares-support-vector machine and its application;Hammerstein-Wiener模型最小二乘向量机辨识及其应用
2.On the basis of studying the structure nature of Hammerstein-Wiener model, a new identification method using a hybrid neural network is introduced.本文针对Hammerstein-Wiener模型的结构特征,在多层前馈神经网络模型基础上,引入线性神经元,提出一种混合神经网络模型对Hammerstein-Wiener模型进行同步辨识,给出了相应的辨识算法,仿真结果表明了该方法的有效性。
5)multiple Hammerstein models多Hammerstein模型
6)piecewise Hammerstein model分段Hammerstein模型
延伸阅读

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