A New Variable Threshold and Dynamic Step Size Based Active Noise Control System for Improving Performance

Similar documents
A FEEDFORWARD ACTIVE NOISE CONTROL SYSTEM FOR DUCTS USING A PASSIVE SILENCER TO REDUCE ACOUSTIC FEEDBACK

ACTIVE NOISE CONTROL ON HIGH FREQUENCY NARROW BAND DENTAL DRILL NOISE: PRELIMINARY RESULTS

VLSI Circuit Design for Noise Cancellation in Ear Headphones

ADAPTIVE ACTIVE NOISE CONTROL SYSTEM FOR SECONDARY PATH FLUCTUATION PROBLEM

Performance Analysis of Feedforward Adaptive Noise Canceller Using Nfxlms Algorithm

EFFECTS OF PHYSICAL CONFIGURATIONS ON ANC HEADPHONE PERFORMANCE

A New Method For Active Noise Control Systems With Online Acoustic Feedback Path Modeling

Evaluating the Performance of MLP Neural Network and GRNN in Active Cancellation of Sound Noise

Active Noise Cancellation Headsets

Active Noise Cancellation System Using DSP Prosessor

Proposed Active Noise control System by using FPGA

EXPERIMENTS ON PERFORMANCES OF ACTIVE-PASSIVE HYBRID MUFFLERS

AN IMPROVED ANC SYSTEM WITH APPLICATION TO SPEECH COMMUNICATION IN NOISY ENVIRONMENT

ACTIVE NOISE CONTROL FOR SMALL-DIAMETER EXHAUSTION SYSTEM

3rd International Conference on Machinery, Materials and Information Technology Applications (ICMMITA 2015)

A SYSTEM IMPLEMENTATION OF AN ACTIVE NOISE CONTROL SYSTEM COMBINED WITH PASSIVE SILENCERS FOR IMPROVED NOISE REDUCTION IN DUCTS SUMMARY INTRODUCTION

A REVIEW OF ACTIVE NOISE CONTROL ALGORITHMS TOWARDS A USER-IMPLEMENTABLE AFTERMARKET ANC SYSTEM. Marko Stamenovic

Comparative Study of Different Algorithms for the Design of Adaptive Filter for Noise Cancellation

A Low-Power Broad-Bandwidth Noise Cancellation VLSI Circuit Design for In-Ear Headphones

Performance Analysis of gradient decent adaptive filters for noise cancellation in Signal Processing

Keywords Decomposition; Reconstruction; SNR; Speech signal; Super soft Thresholding.

DESIGN AND IMPLEMENTATION OF ADAPTIVE ECHO CANCELLER BASED LMS & NLMS ALGORITHM

x ( Primary Path d( P (z) - e ( y ( Adaptive Filter W (z) y( S (z) Figure 1 Spectrum of motorcycle noise at 40 mph. modeling of the secondary path to

Active Noise Cancellation System using low power for Ear Headphones

We are IntechOpen, the world s leading publisher of Open Access books Built by scientists, for scientists. International authors and editors

Keywords: Adaptive filtering, LMS algorithm, Noise cancellation, VHDL Design, Signal to noise ratio (SNR), Convergence Speed.

Eigenvalue equalization applied to the active minimization of engine noise in a mock cabin

Application of Affine Projection Algorithm in Adaptive Noise Cancellation

Design and Implementation on a Sub-band based Acoustic Echo Cancellation Approach

Adaptive Noise Reduction Algorithm for Speech Enhancement

Acoustic Echo Cancellation using LMS Algorithm

LMS and RLS based Adaptive Filter Design for Different Signals

A Diffusion Strategy for the Multichannel Active Noise Control System in Distributed Network

Implementation of Active Noise Cancellation in a Duct

VLSI Implementation of Separating Fetal ECG Using Adaptive Line Enhancer

Active noise control at a moving virtual microphone using the SOTDF moving virtual sensing method

Speech Enhancement Based On Noise Reduction

Analysis on Extraction of Modulated Signal Using Adaptive Filtering Algorithms against Ambient Noises in Underwater Communication

Penetration-free acoustic data transmission based active noise control

ROBUST CONTROL DESIGN FOR ACTIVE NOISE CONTROL SYSTEMS OF DUCTS WITH A VENTILATION SYSTEM USING A PAIR OF LOUDSPEAKERS

works must be obtained from the IEE

FOURIER analysis is a well-known method for nonparametric

Fixed Point Lms Adaptive Filter Using Partial Product Generator

Active Noise Control Using Functional Link Artificial Neural Network (FLANN)

A New Approach for Speech Enhancement Based On Singular Value Decomposition and Wavelet Transform

Adaptive Noise Cancellation using Multirate Technique

SUBOPTIMAL MULTICHANNEL ADAPTIVE ANC SYSTEM. Krzysztof Czyż, Jarosław Figwer

Performance Comparison of ZF, LMS and RLS Algorithms for Linear Adaptive Equalizer

Noise Reduction Technique for ECG Signals Using Adaptive Filters

A VSSLMS ALGORITHM BASED ON ERROR AUTOCORRELATION

Evaluation of a Multiple versus a Single Reference MIMO ANC Algorithm on Dornier 328 Test Data Set

Simple Feedback Structure of Active Noise Control in a Duct

Implementation of decentralized active control of power transformer noise

DESIGNING AN ALGORITHM USING ACTIVE NOISE CANCELLATION FOR DEVELOPMENT OF A HEADPHONE IN HEAVY NOISE INDUSTRY

Design of an Electronic Muffler - A DSP Based Capstone Design Project

Online Active Noise Control System Design and Implementation

Active control for adaptive sound zones in passenger train compartments

Active Noise Control: A Tutorial Review

Feedback Active Noise Control in a Crew Rest Compartment Mock-Up

Disturbance Rejection Using Self-Tuning ARMARKOV Adaptive Control with Simultaneous Identification

Digitally controlled Active Noise Reduction with integrated Speech Communication

Multirate DSP, part 3: ADC oversampling

Acoustical Active Noise Control

Eigenvalue equalization filtered-x algorithm for the multichannel active noise control of stationary and nonstationary signals

EXPERIMENTAL INVESTIGATIONS OF DIFFERENT MICROPHONE INSTALLATIONS FOR ACTIVE NOISE CONTROL IN DUCTS

Active Control of Modulated Sounds in a Duct

Faculty of science, Ibn Tofail Kenitra University, Morocco Faculty of Science, Moulay Ismail University, Meknès, Morocco

FPGA Implementation Of LMS Algorithm For Audio Applications

Active Noise Cancellation in Audio Signal Processing

Design and Implementation of Adaptive Echo Canceller Based LMS & NLMS Algorithm

SELECTIVE TIME-REVERSAL BLOCK SOLUTION TO THE STEREOPHONIC ACOUSTIC ECHO CANCELLATION PROBLEM

A Novel Hybrid Technique for Acoustic Echo Cancellation and Noise reduction Using LMS Filter and ANFIS Based Nonlinear Filter

Implementation of Optimized Proportionate Adaptive Algorithm for Acoustic Echo Cancellation in Speech Signals

ADAPTIVE NOISE CANCELLING IN HEADSETS

Analysis of LMS Algorithm in Wavelet Domain

ACTIVE VIBRATION CONTROL OF GEAR TRANSMISSION SYSTEM

Effect of the Audio Amplifier s Distortion on Feedforward Active Noise Control

Employing Active Noise Control Problems in Education of Electrical Engineering Students

Active noise control at a moving virtual microphone using the SOTDF moving virtual sensing method

Wavelet Speech Enhancement based on the Teager Energy Operator

Unidirectional Sound Signage for Speech Frequency Range Using Multiple-Loudspeaker Reproduction System

Quantized Coefficient F.I.R. Filter for the Design of Filter Bank

GPS Position Estimation Using Integer Ambiguity Free Carrier Phase Measurements

Use of random noise for on-line transducer modeling in an adaptive active attenuation system a)

Noise Reduction using Adaptive Filter Design with Power Optimization for DSP Applications

Design and Simulation of Two Channel QMF Filter Bank using Equiripple Technique.

Innovative Approach Architecture Designed For Realizing Fixed Point Least Mean Square Adaptive Filter with Less Adaptation Delay

A Three-Microphone Adaptive Noise Canceller for Minimizing Reverberation and Signal Distortion

Hardware Implementation of Adaptive Algorithms for Noise Cancellation

NEURO-ACTIVE NOISE CONTROL USING A DECOUPLED LINEAIUNONLINEAR SYSTEM APPROACH

REDUCING THE NEGATIVE EFFECTS OF EAR-CANAL OCCLUSION. Samuel S. Job

SUPERVISED SIGNAL PROCESSING FOR SEPARATION AND INDEPENDENT GAIN CONTROL OF DIFFERENT PERCUSSION INSTRUMENTS USING A LIMITED NUMBER OF MICROPHONES

Acoustic echo cancellers for mobile devices

Noise Cancellation using Least Mean Square Algorithm

Robust Auxiliary-Noise-Power Scheduling in Active Noise Control Systems With Online Secondary Path Modeling

An Effective Implementation of Noise Cancellation for Audio Enhancement using Adaptive Filtering Algorithm

Design of an Active Noise Control System Using Combinations of DSP and FPGAs

A Computational Efficient Method for Assuring Full Duplex Feeling in Hands-free Communication

Implementation of active noise control in a multi-modal spray dryer exhaust stack

Cancellation of Unwanted Audio to Support Interactive Computer Music

Transcription:

A New Variable hreshold and Dynamic Step Size Based Active Noise Control System for Improving Performance P.Babu Department of ECE K.S.Rangasamy College of echnology iruchengode, amilnadu, India. A.Krishnan Department of ECE K.S.Rangasamy College of echnology iruchengode, amilnadu, India Abstract Several approaches have been introduced in literature for active noise control (ANC) systems. Since FxLMS algorithm appears to be the best choice as a controller filter, researchers tend to improve performance of ANC systems by enhancing and modifying this algorithm. In this paper, modification is done in the existing FxLMS algorithm that provides a new structure for improving the tracking performance and convergence rate. he secondary signal y(n) is dynamic thresholded by Wavelet transform to improve tracking. he convergence rate is improved by dynamically varying the step size of the error signal. Keywords - active noise control, FxLMS algorithm, wavelet transform, dynamic threshold, dynamic step size. I. INRODUCION Acoustic noise problems become more and more evident as increased numbers of industrial equipment such as engines, blowers, fans, transformers, and compressors are in use. he traditional approach to acoustic noise control uses passive techniques such as enclosures, barriers, and silencers to attenuate the undesired noise [1], [2]. hese passive silencers are valued for their high attenuation over a broad frequency range; however, they are relatively large, costly, and ineffective at low frequencies. Mechanical vibration is another related type of noise that commonly creates problems in all areas of transportation and manufacturing, as well as with many household appliances. Fig.ure 1. Block diagram of FxLMS based feed forward ANC system. Active Noise Control (ANC) [3] [4] involves an electro acoustic or electromechanical system that cancels specifically, an anti-noise of equal amplitude and the primary (unwanted) noise based on the principle of superposition; opposite phase is generated and combined with the primary noise, thus resulting in the cancellation of both opposite phase is generated and combined with the primary noise, thus resulting in the cancellation of both noises. { he most popular adaptation algorithm used for ANC applications is the FxLMS algorithm, which is a modified version of the LMS algorithm [5]. he schematic diagram for a single-channel feed forward ANC system using the FxLMS algorithm is shown in Fig.1. Here, P (z) is primary acoustic path between the reference noise source and the error microphone and S (z) is the secondary path following the ANC (adaptive) filter W (z). he reference signal x (n) is filtered through S (z), and appears as anti- noise signal y (n) at the error microphone. his anti-noise signal combines with the primary noise signal d (n) to create a zone of silence in the vicinity of the error microphone. he error microphone measures the residual noise e (n), which is used by W (z) for its adaptation to minimize the sound pressure at error microphone. Ŝ(z) Here account for the model of the secondary path S (z) between the output of the controller and the output of the error microphone. he filtering of the reference signals x (n) Ŝ(z) through the secondary-path model is demanded by the fact that the output y (n) of the adaptive controller w (z) is filtered through the secondary path S (z). [7]. he main idea in this paper is to further increase the performance of FxLMS algorithm in terms of Signal to noise ratio. In modified FxLMS, secondary signal y (n) is soft threshold dynamically with respect to error signal by wavelet transform to improve the tracking performance. he step size is also varied dynamically with respect to the error signal. Since error at the beginning is large, the step size of the algorithm and the threshold are also large. his in turn increases convergence rate. As the iteration progresses, the 160 http://sites.google.com/site/ijcsis/

error will simultaneously decrease. Finally, the original step size and the threshold will be retained. he organization of this paper is as follows. Section II describes the Secondary path effects. Section III describes FxLMS algorithm. Section IV introduces Wavelet transform. Section V describes the proposed method. Section VI describes the simulation results and Section VII gives the conclusion. II. SECONDARY PAH EFFECS In ANC system, the primary noise is combined with the output of the adaptive filter. herefore, it is necessary to compensate S(z) for the secondary-path transfer from y(n) to e(n ), which includes the digital-to-analog (D/A) converter, reconstruction filter, power amplifier, loudspeaker, acoustic path from loudspeaker to error microphone, error microphone, preamplifier, anti-aliasing filter, and analog-to digital (A/D) converter. he schematic diagram for a simplified ANC system is shown in Figure2. From Fig. 2., the -transform of the error signal is E(z) [ P ( z) S( z) W( z)](x(z) (1) We shall make the simplifying assumption here that after convergence of the adaptive filter, the residual error is ideally zero [i.e., E (z) =0]. his requires W(z ) realizing the optimal transfer function. P(z) W o (z) (2) S(z) In other words, the adaptive filter has to simultaneously Model P(z) and inversely models(z). A key advantage of this approach is that with a proper model of the plant, the system can respond instantaneously to changes in the input signal caused by changes in the noise sources. However, the performance of an ANC system depends largely upon the transfer function of the secondary path. By introducing an equalizer, a more uniform secondary path frequency response is achieved. In this way, the amount of noise reduction can often be increased significantly [8]. In addition, a sufficiently high-order adaptive FIR filter is required to approximate a rational function 1 S(z) shown in (2). It is impossible to compensate for the inherent delay due to S(z) if the primary path P(z) does not contain a delay of at least equal length. III. FXLMS ALGORIHM he FxLMS algorithm can be applied to both feedback and feed forward structures. Block diagram of a feed forward FxLMS ANC system of Figure 1.Here P (z) accounts for primary acoustic path between reference noise source and error microphone. Ŝ(z) is obtained offline and kept fixed during the online operation of ANC. he expression for the residual error e (n) is given as e(n) d(n) y (n) (3) Where y (n) is the controller output y (n) filtered through the secondary path S (z). y (n) and y(n) computed as y (n) y(n) s w (n)y(n) (n) x(n) Where w (n) = [w0 (n) w 1 (n)..w L-1 (n)] is tap weight vector, x(n)= [x(n) x(n-1)..x(n-l+1) ] is the reference signal picked by the reference microphone and s(n) is impulse response of secondary path S(z). It is assumed that there is no acoustic feedback from secondary loudspeaker to reference microphone. he FxLMS update equation for the coefficients of W (z) is given as: w(n 1) w(n) μe(n)x (n) (6) Where x (n) is reference signal x (n) filtered through Ŝ (z) secondary path model x (n) (4) (5) s ˆ (n) x(n) (7) For a deep study on feed forward FxLMS algorithm the reader may refer to [7]. IV. WAVELE HRESHOLDING Figure. 2. Block diagram of simplified ANC system he principle under which the wavelet thresholding operates is similar to the subspace concept, which relies on the fact that for many real life signals, a limited number of wavelet coefficients in the lower bands are sufficient to reconstruct a good estimate of the original signal. Usually wavelet coefficients are relatively large compared to other coefficients or to any other signal (especially noise) that has its energy spread over a large number of coefficients. herefore, by shrinking coefficients smaller than a specific value, called 161 http://sites.google.com/site/ijcsis/

[[ (IJCSIS) International Journal of Computer Science and Information Security, threshold, we can nearly eliminate noise while preserving the important information of the original signal. he proposed denoising algorithm is summarized as follow: i) Compute the discrete wavelet transform for noisy signal. ii) Based on an algorithm, called thresholding algorithm and a threshold value, shrink some detail wavelet coefficients. iii) Compute the inverse discrete wavelet transform. Fig.4 shows the block diagram of the basic wavelet thresholding for signal denoising. Wave shrink, which is the basic method for denoising by wavelet thresholding, shrinks the detail coefficients because these coefficients represent the high frequency components of the signal and it supposes that the most important parts of signal information reside at low frequencies. herefore, the assumption is that in high frequencies the noise can have a bigger effect than the signal. Denoising by wavelet is performed by a thresholding algorithm, in which the wavelet coefficients smaller than a specific value, or threshold, will be shrunk or scaled [9] and [10]. he standard thresholding functions used in the wavelet based enhancement systems are hard and soft thresholding functions [11], which we review before introducing a new thresholding algorithm that offers improved performance for signal. In these algorithms, is the threshold value and δ is the thresholding algorithm. A. Hard thresholding algorithm Hard thresholding is similar to setting the components of the noise subspace to zero. he hard threshold algorithm is defined as 0 y δ H (8) y y In this hard thresholding algorithm, the wavelet coefficients less than the threshold will are replaced with zero which is represented in Fig. 3-(a). B. Soft thresholding algorithm In soft thresholding, the thresholding algorithm is defined as follow :( see Figure 3-(b)). 0 y δ S (9) sign(y)( y ) y Soft thresholding goes one step further and decreases the magnitude of the remaining coefficients by the threshold value. Hard thresholding maintains the scale of the signal but introduces ringing and artifacts after reconstruction due to a discontinuity in the wavelet coefficients. Soft thresholding eliminates this discontinuity resulting in smoother signals but slightly decreases the magnitude of the reconstructed signal. Noisy Signal Discrete Wavelet ransform hreshold Selection (a) Hard thresholding hresholding Algorithm Inverse Discrete Wavelet Denoised ransform Signal (b) Soft thresholding algorithm Denoised Signal Figure.3. hresholding algorithms (a) Hard. (b) Soft Figure 4. Denoising by wavelet thresholding block diagram 162 http://sites.google.com/site/ijcsis/

V. PROPOSED MEHOD A. Variable thresholding algorithm y (n) In the proposed method, the secondary signal of FxLMS is denoised by wavelet. his is performed by a thresholding algorithm, in which the wavelet coefficients smaller than a specific value or threshold, will be shrunk or scaled. he signal y (n) can be soft thresholded because this eliminates the discontinuity and results in smoother signal, such that is the threshold value and δ is the thresholding algorithm in order to improving the tracking performance of FxLMS algorithm. he wavelet transform using fixed thresholding algorithm for signal y (n) is defined as follow: S sign(s 0 y)( s y ) s s y y (10) he wavelet transform using fixed soft thresholding will improve the tracking property when compared with traditional FxLMS algorithm based on active noise control systems. he threshold value used in fixed soft thresholding algorithm is 0.45, since the amplitude of the noise signal is small. he performance of the system can be further increased by using variable threshold function rather than the fixed threshold function based on the error signal e (n), which is 1 abs(e(n)) (11) It has been noted that initially the error of the system is large allowing large threshold value.as the number of iteration continues, the error of system will decrease. Finally, it retains the original threshold value. he soft thresholding algorithm using variable threshold value is given by below: S Where y s sign(y 0 )( y' - ) y y (12) y is the secondary path signal given in (4) B. Variable Step Size algorithm he step size of the FxLMS algorithm is varied dynamically with respect to the error signal. Since error at the beginning is large, the step size of the algorithm is also large. his in turn increases convergence rate. As the iteration progress, the error will simultaneously decrease. Finally, the original step size will be retained. Figure5. Block diagram for proposed method Fig.5 shows the block diagram for proposed method. hus the convergence rate of the FxLMS algorithm is improved by varying the step-size as well as wavelet threshold value with respect to error signal. From the Fig. 5, the expression for the residual error e(n) is given as e(n) d(n) s y (13) Initially the error in the system is very high. So very large step size is selected. Hence the convergence rate is also very high.hen the step size is varied for the instant and the previous value of the error signal e (n). Finally the error is reduced greatly by the implementation of the dynamic step size algorithm. his idea of dynamic step size and dynamic threshold calculation is represented in (11) and (15). Where, w(n 1) w(n) μ(n)e(n)x (n) (14) ( n) ( n ) (15) 1 abs( e( n)) hus the (11 ) and (15) is called as modified FxLMS algorithm for improving the performance of existing algorithm. VI. SIMULAION RESULS In this section the performance of the proposed modified FxLMS algorithm with wavelet thresholding is demonstrated using computer simulation. he performance of the variable wavelet thresholding algorithm is compared with fixed wavelet thresholding algorithm on the basis of noise reduction R (db) and convergence rate is given in (16) and (17). R (db) = -10 log Convergence Rate e d 2 2 ( n) ( n) (16) 20log10{ab s(g)} (17) 163 http://sites.google.com/site/ijcsis/

he large positive value of R indicates that more noise reduction is achieved at the error microphone. he computer simulation for modified FxLMS algorithm performance is illustrated in Fig.6. and Fig.7. Fig.6 shows the characteristics of Noise reduction versus number of iteration times. It has been seen that the modified FxLMS with variable soft thresholding and dynamic step-size produce better noise reduction compared with modified FxLMS with fixed soft thresholding. Fig.7. shows the characteristics of convergence rate in db with respect to number of iterations. It has been seen that the convergence rate of modified FxLMS with variable soft thresholding and dynamic step-size increases by reducing the number of iterations compared with modified FxLMS with fixed soft thresholding. Fig.8. shows the characteristics of residual error with respect to number of iterations. It has been seen that the residual error of modified FxLMS with variable soft thresholding and dynamic step-size increases by reducing the number of iterations compared with modified FxLMS with fixed soft thesholding. Fig.9. shows the characteristics of signal value with respect to number of iterations. Fig.10. shows that the characteristics of signal value with respect to number of iterations. It has been seen that the signal value of modified FxLMS with variable soft thresholding and dynamic step size increases by reducing the number of iterations compared with modified FxLMS with fixed soft threshodling Figure 8. Residual error versus iteration time (n) Figure 9. Signal value versus iteration time (n) Figure 6. Noise reduction versus iteration time (n) Figure 10. Signal value versus iteration time (n) VII. CONCLUSIONS Figure 7. Characteristics of convergence rate Here we propose a modified FxLMS structure for ANC system. his structure combines the concept of wavelet dynamic soft thresholding with the dynamic variable step size. It shows better tracking performance and convergence rate than the conventional FxLMS algorithm and FxLMS wavelet soft threshold algorithm. he main feature of this method is that it can achieve improved performance than the existing methods. 164 http://sites.google.com/site/ijcsis/

ACKNOWLEDGMENS he authors would like to thank the reviewers for their many insightful comments and useful suggestions. he authors also would like to express their gratitude to our beloved chairman Lion Dr.K.S.Rangasamy and our principal Dr.K.hyagarajah for supporting this research. REFERENCES [1] M. Harris, Handbook of Acoustical Measurements and Noise Control, 3rd ed. New York: McGraw-Hill, 1991. [2] L. L. Beranek and I. L. Ver, Noise and Vibration Control Engineering: Principles and Applications. New York: Wiley, 1992. [3] P. A. Nelson and S. J. Elliott, Active Control of Sound. San Diego, CA: Academic, 1992. [4] C.H. Hansen and S. D. Snyder, Active Control of Noise and Vibration. London, U.K.: E&FN Spon, 1997. [5] S.M. Kuo, and D.R. Morgan, Active Noise control systems, algorithms and DSP implementation functions, New York, Wiley 1996 [6] S. M. Kuo and D. R. Morgan, Active noise control: a tutorial review, Proc. IEEE, vol. 8, no. 6, pp. 943 973, Jun. 1999. [16] A.Q. Hu, X. Hu, S. Cheng, A robust secondary path modeling technique for narrowband active noise control systems, in: Proc. IEEE Conf. on Neural Networks and Signal Processing, vol. 1, December 2003, pp 818 821. [17] P.Babu, A. Krishnan, Modified FxAFA algorithm using dynamic step size for Active Noise Control Systems, International Journal of Recent rends in Engineering, Academy publisher Vol 2, No. 1-6, page 37-39, Dec 2009. AUHORS PROFILE Babu Palanisamy received the B.E degree from Madras University, Chennai, India in 1998, and M.E. degree from Madurai Kamaraj University, Madurai, India in 2002. From 2002 to 2007, he worked as a faculty in K.S.Rangasamy College of echnology, amilnadu, India. He is currently a Ph.D. candidate in Anna University, Chennai, India. He is a member of IEE and ISE. His research interests include Signal Processing and Communication Systems. A.Krishnan received the Ph. D. degree from Indian Institute of echnology Kanpur, Kanpur, India. He is currently a professor with K. S. Rangasamy College of echnology, iruchengode, and amilnadu, India. He is a member of IEEE, IEE, and ISE. His research interests include quality of service of high speed networks and signal processing. [7] PooyaDavari and HamidHassanpour, Designing a new robust online secondary path modeling technique for feed forward active noise control systems, Elsevier Journal of signal Processing, 2009 [8] S. M. Kuo and J. sai, Acoustical mechanisms and Performance of various active duct noise control systems, Appl. Acoust., vol. 41, no. 1, pp. 81 91, 1994. [9] D.L. Donoho, "Denoising by Soft thresholding," IEEE rans. on Information heory, vol. 41, no. 3, pp. 613-627, 1995. [10] M. Jansen, Noise Reduction by Wavelet hresholding, Springer- Verlag, New York, 2001. [11] Y. Ghanbari, and M. R. Karami, A new approach for Speech enhancement based on the adaptive thresholding of the wavelet packets ", Speech Communication, 2006. [12] Widrow and S.D. Stearns, Adaptive Signal processing, Prentice Hall, New Jersey 1985. [13] Sen M. Kuo and Dipa Vijayan A Secondary path Modeling technique for Active Noise Control Systems IEEE ransactions On Speech And Audio Processing,, July 1997. [14] M.. Akhtar, M. Abe, M. Kawamata, Modified-filtered-xLMS algorithm based active noise control system with improved online secondary path modeling, in: Proc. IEEE 2004 Int. Mid. Symp. Circuits Systems (MWSCAS 2004), Hiroshima, Japan, 2004, pp. I-13 I-16. [15] M.. Akhtar, M. Abe, M. Kawamata, A method for online secondary path modeling in active noise control systems, in: Proc. IEEE 2005 Int. Symp. Circuits Systems (ISCAS 2005), May 23 26, 2005, pp. I-264 I-267. 165 http://sites.google.com/site/ijcsis/