Please use this identifier to cite or link to this item: http://hdl.handle.net/10603/423167
Title: Enhanced Adaptive System For Noise Control
Researcher: Walia, Ranjan
Guide(s): Ghosh, Smarajit
Keywords: Engineering
Engineering and Technology
Engineering Mechanical
Neuroadaptive systems (Bioengineering)
University: Thapar Institute of Engineering and Technology
Completed Date: 2021
Abstract: The source of noise is becoming the important criteria as the environment is affected due to the high reflection of the sound waves. A few algorithms are introduced in this thesis, which can be used to cancel the noise from the environment. The new ANC system is built with a modified FsLMS (MFsLMS) algorithm and along with a PSO-FF hybrid algorithm has been compared with a FLANN-FIR hybrid filter along with FF algorithm and FsLMS algorithm. Nonlinear noise cancellation has been depicted in this dissertation. The developed ANC systems are studied in the presence of different noise signals like Gaussian and Chaotic noise. Simulation results are provided and the performance of each technique under various circumstances are compared with the existing techniques. A modified FsLMS (MFsLMS) algorithm is proposed with a hybrid PSO-FF optimization technique. The hybrid optimization is used to find the stability factor of the system. The proposed method can upgrade the stability of the ANC system. The modification of the existing algorithm is done with Maclaurin series. With this modified method, computing time and complexity can be reduced by comparison with existing methods. Existing methods are used to compare simulation results. The comparison shows that the proposed method has a lower computing complexity compared to the other existing methods. The analysis of the proposed method is performed with two noise signals. Chaotic noise and Gaussian noise signals are chosen. A hybrid combination of functional link artificial neural network and finite impulse response (FLANN-FIR) filter is used with ANC system. In the proposed method, filter coefficients are evaluated through the firefly optimization algorithm. Normalized mean square error (NMSE) value is evaluated through the FsLMS algorithm. The convergence of the system has been enhanced through specific methods. The error value is inversely proportional to the convergence of the system. When the value of the error is reduced, the convergence value has been increased.
Pagination: viii, 131p.
URI: http://hdl.handle.net/10603/423167
Appears in Departments:Department of Electrical and Instrumentation Engineering

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