Active Noise Cancellation System

Post on 09-Feb-2016

113 views 2 download

Tags:

description

Active Noise Cancellation System. Students: Jessica Arbona & Christopher Brady Advisors: Dr. Yufeng Lu. Outline. Goal Adaptive Filters What is an adaptive filter? Four Typical Application of Adaptive Filter How Adaptive Filters works Ultrasound Data Data Collection Filter Results - PowerPoint PPT Presentation

Transcript of Active Noise Cancellation System

Active Noise Cancellation System

Students:Jessica Arbona & Christopher Brady

Advisors:Dr. Yufeng Lu

Outline Goal Adaptive Filters

What is an adaptive filter? Four Typical Application of Adaptive Filter How Adaptive Filters works

Ultrasound Data Data Collection Filter Results

Speech Data Filter Simulation

Summary Future Plans

Goal

The goal of the project is to design and implement an active noise cancellation

system using an adaptive filter.

What is an Adaptive Filter?

An adaptive filter is a filter that self-adjusts its transfer function according to an optimization algorithm driven by

an error signal.

Four Typical Applications of Adaptive Filter

Adaptive System Identification Adaptive Noise Cancellation

Adaptive Prediction Adaptive Inverse

How Adaptive Filters Works

Cost Function

Wiener-Hopf equation

Least Mean Square (LMS) Recursive Least Square (RLS)

dXXXopt rRf 1

)}({ 2 neEJ

LMS implementation

Widrow-Hoff LMS Algorithm

)()(2)( nXnen

)(2

)()1( nnfnf

)()()()1( nXnenfnf

Convergence of LMS

)0(320XXrL

RLS implementation

)()()()1( nXnXnRnR TXXXX

)1()1()1( 1 nrnRnf dXXX

)()()()1( nXndnrnr dXdX

Ultrasound Data Processing

Ultrasonic Measurement System

Hardware

Variable.m

Xilinx’s block- ROM

Loading the Variables

Hardware Design without Adaptive Filter

Preliminary Results

Hardware Simulation Software Simulation

Hardware SimulationXtremeDSP- Virtex 4

Preliminary Results

Hardware Design with Adaptive Filter

Hardware Design of the Adaptive Filter

Tap

XtremeDSP Development Kit – Virtex-4 Edition

Key Features:•Xilinx Devices•Two Independent DAC Channels•Support for external clock, on board oscillator

Progressive Results of the Input Signal [x] & Output Signal

[y]XtremeDSP- Virtex 4 Simulation

Speech Data Processing

MATLAB simulation with L = 10 LMS RLS

MATLAB simulation with L = 7 RLS

Speech Data

Recorded Voice SignalRecorded Engine Noise

05.0

10LkHzf s 5.22

Noise and Desired signal

Figure 1: Desired Signal

Figure 2: Noise Signal

Figure 3: Reference Signal

Spectral Analysis of Noise and Desired

Figure 4: Spectrum of Desired Signal

Figure 5: Spectrum of Noise Signal

Figure 6: Spectrum of Reference Signal

LMS filter coefficients

Desired and Recovered signal from LMS

Figure 7: Desired Signal and Recovered Signal

Figure 8: Spectrum of Desired and Recovered Signals

RLS Filter Coefficients with L = 10

Desired and Recovered signal from RLS

with L = 10

Figure 9: Desired Signal and Recovered Signal Figure 10: Spectrum of Desired and Recovered

Signals

RLS Filter Coefficients with L = 7

Desired and Recovered from RLS withL = 7

Figure 11: Desired Signal and Recovered Signal

Figure 12: Spectrum of Desired and Recovered Signals

Summary

To Be complete How mu changes the

system performance Comparison of

Different FIR filter structure

Implement on SignalWave board

Hardware calculation for mu value

RLS hardware implementation

Completed Speech data

simulation LMS RLS

LMS hardware implementation.

ScheduleFall Schedule

Date Milestone

  Jessica Christopher

Thursday, November 17 Different FIR Form / Proposal Work on Mu value / Proposal

Thursday, December 1 Different FIR Form Work on Mu value

Spring Schedule

Date Milestone

  Jessica Christopher

Thursday, January 19 Signal Wave Board Research on Acoustic Noise Suppression

Thursday, January 26    

Thursday, February 2 Hardware Calculation for Mu Design and Simulate Noise Suppression System

Thursday, February 9    

Thursday, February 16 RLS hardware Design with Matrix Inversion  

Thursday, February 23   Testing of Noise Suppression System

Thursday, March 1    

Thursday, March 8 Implementation Noise Suppression System

Thursday, March 22    

Thursday, March 29    

Thursday, April 5    

Thursday, April 12 Preparing for Final Report

Thursday, April 19    

Thursday, April 26    

Reference

[1] D. Monroe, I. S. Ahn, and Y. Lu, “Adaptive filtering and target detection for ultrasonic backscattered signal”, IEEE International Conference on Electro/Information Technology, May 20-22, 2010, Normal, Illinois.

QUESTIONS?