Title : ( Active Noise Control Based on Reinforcement Learn-ing )
Authors: Seyed Amir Hoseini Sabzevari , Majid Moavenian , Mohammad Bagher Naghibi Sistani ,Access to full-text not allowed by authors
Abstract
Active Noise Control (ANC) systems are used in order to reduce the sound noise level by generat-ing anti-noise signals. M-Estimators are widely used in ANC systems in purpose of updating the adaptive FIR filter taps used as systems controller. Up to now evaluation of M-Estimators capabili-ties show that there exists a need for further improvements. In this paper, Reinforcement Learning (RL) methods are used to generate the controller output. The sensitivity of the constant parameter in RL method is checked. The effectiveness of proposed method is proven by comparing the re-sults with the previous studies. Simulations show the fast initial convergence of the proposed algo-rithm.
Keywords
, Active noise control; M, Estimator; Reinforcement Learning.@inproceedings{paperid:1042437,
author = {Hoseini Sabzevari, Seyed Amir and Moavenian, Majid and Naghibi Sistani, Mohammad Bagher},
title = {Active Noise Control Based on Reinforcement Learn-ing},
booktitle = {3rd International Conference on Acoustics & Vibration-ISAV2013},
year = {2013},
location = {تهران, IRAN},
keywords = {Active noise control; M-Estimator; Reinforcement Learning.},
}
%0 Conference Proceedings
%T Active Noise Control Based on Reinforcement Learn-ing
%A Hoseini Sabzevari, Seyed Amir
%A Moavenian, Majid
%A Naghibi Sistani, Mohammad Bagher
%J 3rd International Conference on Acoustics & Vibration-ISAV2013
%D 2013