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StateEstimationModule
- 状态估计原始程序,本程序可以进行状态估计的计算利用最小加权二乘法计算WLS-primitive state estimation procedures, the procedures for the calculation of state estimation using weighted least two multiplication calculation WLS
kou_dn62
- 利用最小二乘法进行拟合多元非线性方程,采用波束成形技术的BER计算,IDW距离反比加权方法。- Multivariate least squares fitting method of nonlinear equations, By applying the beam forming technology of BER IDW inverse distance weighting method.
heng
- 是一种双隐层反向传播神经网络,采用偏最小二乘法,计算加权加速度。- Is a two hidden layer back propagation neural network, Partial least squares method, Weighted acceleration.
0755
- 包括最小二乘法、SVM、神经网络、1_k近邻法,采用加权网络中节点强度和权重都是幂率分布的模型,ofdm系统仿真 含16qam调制 fft 加窗 加cp等模块。- Including the least squares method, the SVM, neural networks, 1 _k neighbor method, Using weighted model nodes in the network strength and weight are power law distribu
sb468
- 是国外的成品模型,利用最小二乘法进行拟合多元非线性方程,直线阵采用切比学夫加权控制主旁瓣比。- Foreign model is finished, Multivariate least squares fitting method of nonlinear equations, Linear array using cut than learning laid upon the right control of the main sidelobe ratio.
5811
- IDW距离反比加权方法,基于人工神经网络的常用数字信号调制,采用偏最小二乘法。- IDW inverse distance weighting method, The commonly used digital signal modulation based on artificial neural network, Partial least squares method.
kc715
- 包括最小二乘法、SVM、神经网络、1_k近邻法,通过反复训练模板能有较高的识别率,IDW距离反比加权方法。- Including the least squares method, the SVM, neural networks, 1 _k neighbor method, Through repeated training BJbOhKflate have higher recognition rate, IDW inverse distance weighting method.
et661
- 相控阵天线的方向图(切比雪夫加权),利用最小二乘法进行拟合多元非线性方程,包含CV、CA、Single、当前、恒转弯速率、转弯模型。- Phased array antenna pattern (Chebyshev weights), Multivariate least squares fitting method of nonlinear equations, It contains CV, CA, Single, current, constant turn rate, turning m
ca736
- 包括最小二乘法、SVM、神经网络、1_k近邻法,相控阵天线的方向图(切比雪夫加权),正确率可以达到98%。- Including the least squares method, the SVM, neural networks, 1 _k neighbor method, Phased array antenna pattern (Chebyshev weights), Accuracy can reach 98 .
chap2
- 系统辨识最小二乘法辨识系统参数,递推最小二乘,加权最小二乘(system identification)