Jump to content

File:MUSIC MVDR.png

Page contents not supported in other languages.
This is a file from the Wikimedia Commons
From Wikipedia, the free encyclopedia

Original file (1,342 × 647 pixels, file size: 112 KB, MIME type: image/png)

Summary

Description
English: Spatial frequencies estimation (source code).
Русский: Оценка пространтвенных частот (исходный код).
Date
Source Own work
Author Kirlf
PNG development
InfoField
 
This plot was created with Matplotlib.
Source code
InfoField

Python code

"""
Developed by Vladimir Fadeev
(https://github.com/kirlf)
Kazan, 2017 / 2020
Python 3.7
"""
import numpy as np
import matplotlib.pyplot as plt

"""
Received signal model:
X = A*S + W

where 
A = [a(theta_1) a(theta_2) ... a(theta_d)] 
is the matrix of steering vectors 
(dimension is M x d, 

M is the number of sensors, 

d is the number of signal sources),

A steering vector represents the set of phase delays 
a plane wave experiences, evaluated at a set of array elements (antennas). 

The phases are specified with respect to an arbitrary origin.
theta is Direction of Arrival (DoA), 

S = 1/sqrt(2) * (X + iY)
is the transmit (modulation) symbols matrix 
(dimension is d x T, 

T is the number of snapshots)
(X + iY) is the complex values of the signal envelope,

W = sqrt(N0/2)*(G1 + jG2)
is additive noise matrix (AWGN)
(dimension is M x T),

N0 is the noise spectral density,

G1 and G2 are the random Gaussian distributed values.
"""

M = 10 # number of sensors 
SNR = 10 # Signal-to-Noise ratio (dB) 
d = 3 # number sources of EM waves
N = 50 # number of snapshots

""" Signal matrix """

S = ( np.sign(np.random.randn(d,N)) + 1j * np.sign(np.random.randn(d,N)) ) / np.sqrt(2) # QPSK

""" Noise matrix 

Common formula:
AWGN = sqrt(N0/2)*(G1 + jG2), 

where G1 and G2 - independent Gaussian processes.
Since Es(symbol energy) for QPSK is 1 W, noise spectral density: 
	
N0 = (Es/N)^(-1) = SNR^(-1) [W] (let SNR = Es/N0); 

or in logarithmic scale::
	
SNR_dB = 10log10(SNR) -> N0_dB = -10log10(SNR) = -SNR_dB [dB]; 

We have SNR in logarithmic (in dBs), convert to linear:

SNR = 10^(SNR_dB/10) -> sqrt(N0) = (10^(-SNR_dB/10))^(1/2) = 10^(-SNR_dB/20) 
"""

W = ( np.random.randn(M,N) + 1j * np.random.randn(M,N) ) / np.sqrt(2) * 10**(-SNR/20) # AWGN

mu_R = 2*np.pi / M  # standard beam width

resolution_cases = ((-1., 0, 1.), (-0.5, 0, 0.5), (-0.3, 0, 0.3)) # resolutions 
for idxm, c in enumerate(resolution_cases):

    """ DoA (spatial frequencies) """
    mu_1 = c[0]*mu_R
    mu_2 = c[1]*mu_R
    mu_3 = c[2]*mu_R

    """ Steering vectors """
    a_1 = np.exp(1j*mu_1*np.arange(M))
    a_2 = np.exp(1j*mu_2*np.arange(M))
    a_3 = np.exp(1j*mu_3*np.arange(M))

    A = (np.array([a_1, a_2, a_3])).T # steering matrix 
    
    """ Received signal """
    X = np.dot(A,S) + W 

    """ Rxx """
    R = np.dot(X,np.matrix(X).H)

    U, Sigma, Vh = np.linalg.svd(X, full_matrices=True)
    U_0 = U[:,d:] # noise sub-space

    thetas = np.arange(-90,91)*(np.pi/180) # azimuths
    mus = np.pi*np.sin(thetas) # spatial frequencies
    
    a = np.empty((M, len(thetas)), dtype = complex)
    for idx, mu in enumerate(mus):
        a[:,idx] = np.exp(1j*mu*np.arange(M))

    # MVDR:
    S_MVDR = np.empty(len(thetas), dtype = complex)
    for idx in range(np.shape(a)[1]):
        a_idx =  (a[:, idx]).reshape((M, 1))
        S_MVDR[idx] = 1 / (np.dot(np.matrix(a_idx).H, np.dot(np.linalg.pinv(R),a_idx)))

    # MUSIC:
    S_MUSIC = np.empty(len(thetas), dtype = complex)
    for idx in range(np.shape(a)[1]):
        a_idx =  (a[:, idx]).reshape((M, 1))
        S_MUSIC[idx] = np.dot(np.matrix(a_idx).H,a_idx)\
        / (np.dot(np.matrix(a_idx).H, np.dot(U_0,np.dot(np.matrix(U_0).H,a_idx))))

    plt.subplots(figsize=(10, 5), dpi=150)
    plt.semilogy(thetas*(180/np.pi), np.real( (S_MVDR / max(S_MVDR))), color='green', label='MVDR')
    plt.semilogy(thetas*(180/np.pi), np.real((S_MUSIC/ max(S_MUSIC))), color='red', label='MUSIC')
    plt.grid(color='r', linestyle='-', linewidth=0.2)
    plt.xlabel('Azimuth angles (degrees)')
    plt.ylabel('Power (pseudo)spectrum (normalized)')
    plt.legend()
    plt.title('Case #'+str(idxm+1))
    plt.show()

""" References
1. Haykin, Simon, and KJ Ray Liu. Handbook on array processing and sensor networks. Vol. 63. John Wiley & Sons, 2010. pp. 102-107
2. Hayes M. H. Statistical digital signal processing and modeling. – John Wiley & Sons, 2009.
3. Haykin, Simon S. Adaptive filter theory. Pearson Education India, 2008. pp. 422-427
4. Richmond, Christ D. "Capon algorithm mean-squared error threshold SNR prediction and probability of resolution." IEEE Transactions on Signal Processing 53.8 (2005): 2748-2764.
5. S. K. P. Gupta, MUSIC and improved MUSIC algorithm to esimate dorection of arrival, IEEE, 2015.
"""

Licensing

I, the copyright holder of this work, hereby publish it under the following license:
w:en:Creative Commons
attribution share alike
This file is licensed under the Creative Commons Attribution-Share Alike 4.0 International license.
You are free:
  • to share – to copy, distribute and transmit the work
  • to remix – to adapt the work
Under the following conditions:
  • attribution – You must give appropriate credit, provide a link to the license, and indicate if changes were made. You may do so in any reasonable manner, but not in any way that suggests the licensor endorses you or your use.
  • share alike – If you remix, transform, or build upon the material, you must distribute your contributions under the same or compatible license as the original.

Captions

The frequency estimation based on MUSIC and MVDR algorithms.

Items portrayed in this file

depicts

18 February 2019

114,951 byte

647 pixel

1,342 pixel

image/png

75107edff05fce426ccb911cfb2c3350748aa8cf

File history

Click on a date/time to view the file as it appeared at that time.

Date/TimeThumbnailDimensionsUserComment
current05:41, 18 February 2019Thumbnail for version as of 05:41, 18 February 20191,342 × 647 (112 KB)KirlfUser created page with UploadWizard

The following page uses this file:

Global file usage

The following other wikis use this file:

Metadata