Neural Network with Momentum for Dynamic Source Separation and its Convergence Analysis.

JNW(2011)

Cited 11|Views12
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Abstract
This paper addresses the problem of blind source separation (BSS) of n independent sources from their m linear mixtures in the over-determined cases (m n >) with unknown and dynamically changing number of sources. The system architecture including an on-line source number estimator and an auto-adjust separation mechanism is considered based on the feed-forward neural network (FNN). To speed up and stabilize the iteration procedure, we propose to modify the FNN by adding a momentum term, and convergence analysis for the new algorithm is also presented, provided that the learning rate is set as a constant and the momentum factor an adaptive variable. Computer simulation results confirm that our approach is feasible for dynamic BSS cases and has satisfied convergence speed and steady-state error performance. Moreover, the proposed algorithm can ensure the separation of weak or badly scaled signals. © 2011 ACADEMY PUBLISHER.
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Key words
blind source separation (bss),convergence,dynamic source number,feed-forward neural network (fnn),momentum
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