Noise Detection and Elimination by Using Analytical Approach
Abstract
The existence of noise periodically decreases the total contains required to transmit over the GSM channel. Also, due to increased challenges in the upcoming communication system for noise cancellations in the voice as well as in data transmitted. The existing filters were not able to perform the effective noise cancellation, thus this paper introduces analytical approach to detect both the GSM transient signals of superior or inferior form and then to cancel its noise level. The proposed approach considers the probability theory to perform the modeling of the system and allocate the power of the transitive device along with noise level. The result analysis of the proposed system gives that it offers the detection of the different noise forms and also can significantly determines the both the superior as well as inferior signal quality. These outcomes suggest that the design of accurate filter can be efficient for noise cancellation in GSM signal.
Keywords
Analytical approach Power allocation Noise cancellation Noise level GSM signalReferences
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